程序代写代做代考 flex Excel Java finance chain c/c++ scheme computational biology algorithm compiler Fortran matlab c++ About the Tutorial

About the Tutorial
MATLAB is a programming language developed by MathWorks. It started out as a matrix programming language where linear algebra programming was simple. It can be run both under interactive sessions and as a batch job.
This tutorial gives you aggressively a gentle introduction of MATLAB programming language. It is designed to give students fluency in MATLAB programming language. Problem-based MATLAB examples have been given in simple and easy way to make your learning fast and effective.
Audience
This tutorial has been prepared for the beginners to help them understand basic to advanced functionality of MATLAB. After completing this tutorial you will find yourself at a moderate level of expertise in using MATLAB from where you can take yourself to next levels.
Prerequisites
We assume you have a little knowledge of any computer programming and understand concepts like variables, constants, expressions, statements, etc. If you have done programming in any other high-level language like C, C++ or Java, then it will be very much beneficial and learning MATLAB will be like a fun for you.
Copyright & Disclaimer Notice
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Table of Contents
About the Tutorial····································································································································i Audience ··················································································································································i Prerequisites ············································································································································i Copyright & Disclaimer Notice ·················································································································i Table of Contents ····································································································································ii
1. OVERVIEW···························································································································1
MATLAB’s Power of Computational Mathematics···················································································1 Features of MATLAB································································································································1 Uses of MATLAB ······································································································································2
2. ENVIRONMENT···················································································································· 3
Local Environment Setup·························································································································3 Understanding the MATLAB Environment·······························································································4
3. BASIC SYNTAX······················································································································7
Hands on Practice····································································································································7 Use of Semicolon (;) in MATLAB ··············································································································8 Adding Comments···································································································································8 Commonly used Operators and Special Characters ·················································································9 Special Variables and Constants············································································································10 Naming Variables ··································································································································11 Saving Your Work··································································································································11
4. VARIABLES ························································································································· 12
Multiple Assignments····························································································································13
I have forgotten the Variables!··············································································································13
Long Assignments ·································································································································14
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The format Command ···························································································································15 Creating Vectors····································································································································17 Creating Matrices··································································································································18
5. COMMANDS ······················································································································ 20
Commands for Managing a Session·······································································································20 Commands for Working with the System ······························································································20 Input and Output Commands················································································································22 Vector, Matrix, and Array Commands ···································································································23 Plotting Commands·······························································································································25
6. M-FILES ····························································································································· 27
The M Files············································································································································27 Creating and Running Script File············································································································27
7. DATA TYPES ······················································································································· 30
Data Types Available in MATLAB···········································································································30 Data Type Conversion ···························································································································32 Determination of Data Types ················································································································34
8. OPERATORS ······················································································································· 39
Arithmetic Operators ····························································································································39 Functions for Arithmetic Operations ·····································································································42 Relational Operators ·····························································································································46 Logical Operators ··································································································································49 Functions for Logical Operations ···········································································································50 Bitwise Operations································································································································55 Set Operations ······································································································································57
9. DECISION MAKING············································································································· 60
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if… end Statement ································································································································61 if…else…end Statement························································································································63 if…elseif…elseif…else…end Statements································································································64 The Nested if Statements ······················································································································66 The switch Statement ···························································································································67 The Nested Switch Statements··············································································································69
10. LOOP TYPES ······················································································································· 71
The while Loop······································································································································72 The for Loop··········································································································································73 The Nested Loops··································································································································76 Loop Control Statements·······················································································································78 The break Statement·····························································································································79 The continue Statement························································································································80
11. VECTORS ··························································································································· 83
Row Vectors··········································································································································83 Column Vectors·····································································································································83 Referencing the Elements of a Vector ···································································································84 Vector Operations·································································································································85 Addition and Subtraction of Vectors ·····································································································85 Scalar Multiplication of Vectors ············································································································86 Transpose of a Vector ···························································································································86 Appending Vectors································································································································87 Magnitude of a Vector ··························································································································89 Vector Dot Product ·······························································································································90 Vectors with Uniformly Spaced Elements······························································································90
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12. MATRIX······························································································································92
Referencing the Elements of a Matrix ···································································································92 Deleting a Row or a Column in a Matrix ································································································94 Matrix Operations·································································································································96 Addition and Subtraction of Matrices ···································································································96 Division (Left, Right) of Matrix ··············································································································97 Scalar Operations of Matrices ···············································································································98 Transpose of a Matrix ···························································································································99 Concatenating Matrices ························································································································99 Matrix Multiplication ··························································································································101 Determinant of a Matrix ·····················································································································102 Inverse of a Matrix ······························································································································ 102
13. ARRAYS····························································································································104
Special Arrays in MATLAB ···················································································································104 A Magic Square ···································································································································106 Multidimensional Arrays·····················································································································106 Array Functions···································································································································109 Sorting Arrays ·····································································································································112 Cell Array ············································································································································113 Accessing Data in Cell Arrays···············································································································114
14. COLON NOTATION··········································································································· 116
15. NUMBERS························································································································119
Conversion to Various Numeric Data Types·························································································119 Smallest and Largest Integers··············································································································121 Smallest and Largest Floating Point Numbers ·····················································································123
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16. STRINGS···························································································································125
Rectangular Character Array ···············································································································126 Combining Strings into a Cell Array ·····································································································128 String Functions in MATLAB ················································································································129
17. FUNCTIONS ····················································································································· 134
Anonymous Functions·························································································································135 Nested Functions ································································································································138 Private Functions ································································································································139 Global Variables··································································································································140
18. DATA IMPORT·················································································································· 142
Low-Level File I/O································································································································146 Import Text Data Files with Low-Level I/O ··························································································147
19. DATAOUTPUT·················································································································152
Writing to Diary Files···························································································································154 Exporting Data to Text Data Files with Low-Level I/O··········································································154
20. PLOTTING························································································································156
Adding Title, Labels, Grid Lines, and Scaling on the Graph···································································158 Drawing Multiple Functions on the Same Graph ·················································································159 Setting Colors on Graph ······················································································································160 Setting Axis Scales·······························································································································161 Generating Sub-Plots ··························································································································162
21. GRAPHICS························································································································164
Drawing Bar Charts ·····························································································································164
Drawing Contours ·······························································································································165
Three-Dimensional Plots ·····················································································································167
vi

22. ALGEBRA ························································································································· 169
Solving Basic Algebraic Equations in MATLAB ·····················································································169 Solving Quadratic Equations in MATLAB ·····························································································171 Expanding and Collecting Equations in MATLAB··················································································176 Expanding and Collecting Equations in Octave ····················································································177 Factorization and Simplification of Algebraic Expressions ···································································179
23. CALCULUS························································································································181
Calculating Limits ································································································································181 Verification of Basic Properties of Limits using Octave········································································184 Left and Right Sided Limits ··················································································································185
24. DIFFERENTIAL··················································································································188
Verification of Elementary Rules of Differentiation·············································································189 Derivatives of Exponential, Logarithmic, and Trigonometric Functions ···············································193 Computing Higher Order Derivatives···································································································198 Finding the Maxima and Minima of a Curve························································································200 Solving Differential Equations ·············································································································204
25. INTEGRATION··················································································································206
Finding Indefinite Integral Using MATLAB ···························································································206 Finding Definite Integral Using MATLAB······························································································210
26. POLYNOMIALS·················································································································216
Evaluating Polynomials ·······················································································································216 Polynomial Curve Fitting ·····················································································································217
27. TRANSFORMS··················································································································219
The Laplace Transform ························································································································219
The Inverse Laplace Transform············································································································220
vii

The Fourier Transforms·······················································································································222 Inverse Fourier Transforms ·················································································································224
28. GNUOCTAVETUTORIAL··································································································225
MATLAB vs Octave ······························································································································225
29. SIMULINK ························································································································229
Using Simulink·····································································································································230
viii

1. OVERVIEW
MATLAB (matrix laboratory) is a fourth-generation high-level programming language and interactive environment for numerical computation, visualization and programming.
MATLAB is developed by MathWorks.
It allows matrix manipulations; plotting of functions and data; implementation of algorithms; creation of user interfaces; interfacing with programs written in other languages, including C, C++, Java, and FORTRAN; analyze data; develop algorithms; and create models and applications.
It has numerous built-in commands and math functions that help you in mathematical calculations, generating plots, and performing numerical methods.
MATLAB’s Power of Computational Mathematics
MATLAB is used in every facet of computational mathematics. Following are some commonly used mathematical calculations where it is used most commonly:
 Dealing with Matrices and Arrays
 2-D and 3-D Plotting and graphics
 Linear Algebra
 Algebraic Equations
 Non-linear Functions
 Statistics
 Data Analysis
 Calculus and Differential Equations
 Numerical Calculations
 Integration
 Transforms
 Curve Fitting
 Various other special functions
Features of MATLAB
Following are the basic features of MATLAB:
1

 It is a high-level language for numerical computation, visualization and application development.
 It also provides an interactive environment for iterative exploration, design and problem solving.
 It provides vast library of mathematical functions for linear algebra, statistics, Fourier analysis, filtering, optimization, numerical integration and solving ordinary differential equations.
 It provides built-in graphics for visualizing data and tools for creating custom plots.
 MATLAB’s programming interface gives development tools for improving code quality, maintainability, and maximizing performance.
 It provides tools for building applications with custom graphical interfaces.
 It provides functions for integrating MATLAB based algorithms with external
applications and languages such as C, Java, .NET and Microsoft Excel.
Uses of MATLAB
MATLAB is widely used as a computational tool in science and engineering encompassing the fields of physics, chemistry, math and all engineering streams. It is used in a range of applications including:
 signal processing and Communications
 image and video Processing
 control systems
 test and measurement
 computational finance
 computational biology
2

2. ENVIRONMENT
Local Environment Setup
Setting up MATLAB environment is a matter of few clicks. The installer can be downloaded from http://in.mathworks.com/downloads/web_downloads:
MathWorks provides the licensed product, a trial version and a student version as well. You need to log into the site and wait a little for their approval.
After downloading the installer the software can be installed through few clicks.
3

Understanding the MATLAB Environment
MATLAB development IDE can be launched from the icon created on the desktop. The main working window in MATLAB is called the desktop. When MATLAB is started, the desktop appears in its default layout:
The desktop has the following panels:
Current Folder – This panel allows you to access the project folders and files.
4

Command Window – This is the main area where commands can be entered at the command line. It is indicated by the command prompt (>>).
Workspace – The workspace shows all the variables created and/or imported from files.
5

Command History – This panel shows or rerun commands that are entered at the command line.
Set up GNU Octave
If you are willing to use Octave on your machine (Linux, BSD, OS X or Windows), then kindly download latest version from http://www.gnu.org/software/octave/download.html. You can check the given installation instructions for your machine
6

3. BASIC SYNTAX
MATLAB environment behaves like a super-complex calculator. You can enter commands at the >> command prompt.
MATLAB is an interpreted environment. In other words, you give a command and MATLAB executes it right away.
Hands on Practice
Type a valid expression, for example,
And press ENTER
When you click the Execute button, or type Ctrl+E, MATLAB executes it immediately and the result returned is:
Let us take up few more examples:
When you click the Execute button, or type Ctrl+E, MATLAB executes it immediately and the result returned is:
Another example,
When you click the Execute button, or type Ctrl+E, MATLAB executes it immediately and the result returned is:
7
5+5
ans = 10
3 ^ 2 % 3 raised to the power of 2
ans = 9
sin(pi /2) % sine of angle 90o
ans = 1

Another example,
7/0 % Divide by zero
When you click the Execute button, or type Ctrl+E, MATLAB executes it immediately and the result returned is:
Another example,
When you click the Execute button, or type Ctrl+E, MATLAB executes it immediately and the result returned is:
MATLAB provides some special expressions for some mathematical symbols, like pi for π, Inf for ∞, i (and j) for √-1 etc. Nan stands for ‘not a number’.
Use of Semicolon (;) in MATLAB
Semicolon (;) indicates end of statement. However, if you want to suppress and hide the MATLAB output for an expression, add a semicolon after the expression.
For example,
When you click the Execute button, or type Ctrl+E, MATLAB executes it immediately and the result returned is:
Adding Comments
The percent symbol (%) is used for indicating a comment line. For example,
8
ans = Inf
warning: division by zero
732 * 20.3
ans = 1.4860e+04
x = 3; y=x+5
y=8

x=9 %assignthevalue9tox
You can also write a block of comments using the block comment operators % { and % }.
The MATLAB editor includes tools and context menu items to help you add, remove, or change the format of comments.
Commonly used Operators and Special Characters
MATLAB supports the following commonly used operators and special characters:
Operator
Purpose
+
Plus; addition operator.

Minus; subtraction operator.
*
Scalar and matrix multiplication operator.
.*
Array multiplication operator.
^
Scalar and matrix exponentiation operator.
.^
Array exponentiation operator.
\
Left-division operator.
/
Right-division operator.
.\
Array left-division operator.
./
Array right-division operator.
:
Colon; generates regularly spaced elements and represents an entire row or column.
9

()
Parentheses; encloses function arguments and array indices; overrides precedence.
[]
Brackets; enclosures array elements.
.
Decimal point.

Ellipsis; line-continuation operator
,
Comma; separates statements and elements in a row
;
Semicolon; separates columns and suppresses display.
%
Percent sign; designates a comment and specifies formatting.
_
Quote sign and transpose operator.
._
Non-conjugated transpose operator.
=
Assignment operator.
Special Variables and Constants
MATLAB supports the following special variables and constants:
Name
Meaning
ans
Most recent answer.
eps
Accuracy of floating-point precision.
i,j
The imaginary unit √-1.
Inf
Infinity.
10

NaN
Undefined numerical result (not a number).
pi
The number π
Naming Variables
Variable names consist of a letter followed by any number of letters, digits or underscore.
MATLAB is case-sensitive.
Variable names can be of any length, however, MATLAB uses only first N
characters, where N is given by the function namelengthmax. Saving Your Work
The save command is used for saving all the variables in the workspace, as a file with .mat extension, in the current directory.
For example,
You can reload the file anytime later using the load command.
save myfile
load myfile
11

4. VARIABLES
In MATLAB environment, every variable is an array or matrix. You can assign variables in a simple way. For example,
MATLAB will execute the above statement and return the following result:
It creates a 1-by-1 matrix named x and stores the value 3 in its element. Let us check another example,
MATLAB will execute the above statement and return the following result:
Please note that:
Once a variable is entered into the system, you can refer to it later. Variables must have values before they are used.
When an expression returns a result that is not assigned to any variable, the system assigns it to a variable named ans, which can be used later.
For example,
MATLAB will execute the above statement and return the following result:
12
x = 3 % defining x and initializing it with a value
x=
3
x = sqrt(16) % defining x and initializing it with an expression
x=
4
sqrt(78)
ans = 8.8318

You can use this variable ans:
9876/ans
MATLAB will execute the above statement and return the following result:
Let’s look at another example:
MATLAB will execute the above statement and return the following result:
Multiple Assignments
You can have multiple assignments on the same line. For example,
MATLAB will execute the above statement and return the following result:
I have forgotten the Variables!
The who command displays all the variable names you have used.
MATLAB will execute the above statement and return the following result:
13
ans = 1.1182e+03
x = 7 * 8; y = x * 7.89
y= 441.8400
a = 2; b = 7; c = a * b;
c= 14
who

Your variables are:
a ans b c x y
The whos command displays little more about the variables:
Variables currently in memory
Type of each variables
Memory allocated to each variable Whether they are complex variables or not
MATLAB will execute the above statement and return the following result:
whos
Name Size
a 1×1 ans 1×1
b 1×1
c 1×1
x 1×1
y 1×1
Bytes Class
8 double
8 double
8 double
8 double
8 double
8 double
Attributes
The clear command deletes all (or the specified) variable(s) from the memory.
Long Assignments
Long assignments can be extended to another line by using an ellipses (…). For example,
14
clear x % it will delete x, won’t display anything clear % it will delete all variables in the workspace
% peacefully and unobtrusively
initial_velocity = 0;
acceleration = 9.8;

time = 20;
final_velocity = initial_velocity …
+ acceleration * time
MATLAB will execute the above statement and return the following result:
The format Command
By default, MATLAB displays numbers with four decimal place values. This is known as short format.
However, if you want more precision, you need to use the format command. The format long command displays 16 digits after decimal.
For example:
MATLAB will execute the above statement and return the following result:
Another example,
MATLAB will execute the above statement and return the following result:
The format bank command rounds numbers to two decimal places. For example, 15
final_velocity =
196
format long
x = 7 + 10/3 + 5 ^ 1.2
x= 17.231981640639408
format short
x = 7 + 10/3 + 5 ^ 1.2
x= 17.2320

format bank
daily_wage = 177.45;
weekly_wage = daily_wage * 6
MATLAB will execute the above statement and return the following result:
MATLAB displays large numbers using exponential notation.
The format short e command allows displaying in exponential form with four decimal places plus the exponent.
For example,
MATLAB will execute the above statement and return the following result:
The format long e command allows displaying in exponential form with four decimal places plus the exponent. For example,
MATLAB will execute the above statement and return the following result:
The format rat command gives the closest rational expression resulting from a calculation. For example,
weekly_wage = 1064.70
format short e 4.678 * 4.9
ans = 2.2922e+01
format long e x = pi
x=
3.141592653589793e+00
format rat
16

4.678 * 4.9
MATLAB will execute the above statement and return the following result:
Creating Vectors
A vector is a one-dimensional array of numbers. MATLAB allows creating two types of vectors:
Row vectors Column vectors
Row vectors are created by enclosing the set of elements in square brackets, using space or comma to delimit the elements.
For example,
MATLAB will execute the above statement and return the following result:
ans = 2063/90
r = [7 8 9 10 11]
r=
Columns 1 through 4
7 8 9 10 Column 5
11
Another example,
MATLAB will execute the above statement and return the following result:
17
r = [7 8 9 10 11];
t = [2, 3, 4, 5, 6]; res = r + t

res =
Columns 1 through 4
9 11 13 15 Column 5
17
Column vectors are created by enclosing the set of elements in square brackets, using semicolon (;) to delimit the elements.
MATLAB will execute the above statement and return the following result:
c=[7; 8; 9; 10;11]
c=
7
8
9 10 11
Creating Matrices
A matrix is a two-dimensional array of numbers.
In MATLAB, a matrix is created by entering each row as a sequence of space or comma separated elements, and end of a row is demarcated by a semicolon. For example, let us create a 3-by-3 matrix as:
MATLAB will execute the above statement and return the following result:
18
m = [1 2 3; 4 5 6; 7 8 9]
m=
123 456

789
19

5. COMMANDS
MATLAB is an interactive program for numerical computation and data visualization. You can enter a command by typing it at the MATLAB prompt ‘>>’ on the Command Window.
In this section, we will provide lists of commonly used general MATLAB commands.
Commands for Managing a Session
MATLAB provides various commands for managing a session. The following table provides all such commands:
Command
Purpose
clc
Clears command window.
clear
Removes variables from memory.
exist
Checks for existence of file or variable.
global
Declares variables to be global.
help
Searches for a help topic.
lookfor
Searches help entries for a keyword.
quit
Stops MATLAB.
who
Lists current variables.
whos
Lists current variables (long display).
Commands for Working with the System
MATLAB provides various useful commands for working with the system, like saving the current work in the workspace as a file and loading the file later.
20

It also provides various commands for other system-related activities like, displaying date, listing files in the directory, displaying current directory, etc.
The following table displays some commonly used system-related commands:
Command
Purpose
cd
Changes current directory.
date
Displays current date.
delete
Deletes a file.
diary
Switches on/off diary file recording.
dir
Lists all files in current directory.
load
Loads workspace variables from a file.
path
Displays search path.
pwd
Displays current directory.
save
Saves workspace variables in a file.
type
Displays contents of a file.
what
Lists all MATLAB files in the current directory.
wklread
Reads .wk1 spreadsheet file.
21

Input and Output Commands
MATLAB provides the following input and output related commands:
Command
Purpose
disp
Displays contents of an array or string.
fscanf
Read formatted data from a file.
format
Controls screen-display format.
fprintf
Performs formatted writes to screen or file.
input
Displays prompts and waits for input.
;
Suppresses screen printing.
The fscanf and fprintf commands behave like C scanf and printf functions. They support the following format codes:
Format Code
Purpose
%s
Format as a string.
%d
Format as an integer.
%f
Format as a floating point value.
%e
Format as a floating point value in scientific notation.
%g
Format in the most compact form: %f or %e.
\n
Insert a new line in the output string.
\t
Insert a tab in the output string.
22

The format function has the following forms used for numeric display:
Format Function
Display up to
format short
Four decimal digits (default).
format long
16 decimal digits.
format short e
Five digits plus exponent.
format long e
16 digits plus exponents.
format bank
Two decimal digits.
format +
Positive, negative, or zero.
format rat
Rational approximation.
format compact
Suppresses some line feeds.
format loose
Resets to less compact display mode.
Vector, Matrix, and Array Commands
The following table shows various commands used for working with arrays, matrices and vectors:
Command
Purpose
cat
Concatenates arrays.
find
Finds indices of nonzero elements.
length
Computes number of elements.
linspace
Creates regularly spaced vector.
23

logspace
Creates logarithmically spaced vector.
max
Returns largest element.
min
Returns smallest element.
prod
Product of each column.
reshape
Changes size.
size
Computes array size.
sort
Sorts each column.
sum
Sums each column.
eye
Creates an identity matrix.
ones
Creates an array of ones.
zeros
Creates an array of zeros.
cross
Computes matrix cross products.
dot
Computes matrix dot products.
det
Computes determinant of an array.
inv
Computes inverse of a matrix.
pinv
Computes pseudoinverse of a matrix.
rank
Computes rank of a matrix.
rref
Computes reduced row echelon form.
24

cell
Creates cell array.
celldisp
Displays cell array.
cellplot
Displays graphical representation of cell array.
num2cell
Converts numeric array to cell array.
deal
Matches input and output lists.
iscell
Identifies cell array.
Plotting Commands
MATLAB provides numerous commands for plotting graphs. The following table shows some of the commonly used commands for plotting:
Command
Purpose
axis
Sets axis limits.
fplot
Intelligent plotting of functions.
grid
Displays gridlines.
plot
Generates xy plot.
print
Prints plot or saves plot to a file.
title
Puts text at top of plot.
xlabel
Adds text label to x-axis.
ylabel
Adds text label to y-axis.
axes
Creates axes objects.
25

close
Closes the current plot.
close all
Closes all plots.
figure
Opens a new figure window.
gtext
Enables label placement by mouse.
hold
Freezes current plot.
legend
Legend placement by mouse.
refresh
Redraws current figure window.
set
Specifies properties of objects such as axes.
subplot
Creates plots in sub windows.
text
Places string in figure.
bar
Creates bar chart.
loglog
Creates log-log plot.
polar
Creates polar plot.
semilogx
Creates semi log plot. (logarithmic abscissa).
semilogy
Creates semi log plot. (logarithmic ordinate).
stairs
Creates stairs plot.
stem
Creates stem plot.
26

6. M-FILES
So far, we have used MATLAB environment as a calculator. However, MATLAB is also a powerful programming language, as well as an interactive computational environment.
In previous chapters, you have learned how to enter commands from the MATLAB command prompt. MATLAB also allows you to write series of commands into a file and execute the file as complete unit, like writing a function and calling it.
The M Files
MATLAB allows writing two kinds of program files:
Scripts – script files are program files with .m extension. In these files, you write series of commands, which you want to execute together. Scripts do not accept inputs and do not return any outputs. They operate on data in the workspace.
Functions – functions files are also program files with .m extension. Functions can accept inputs and return outputs. Internal variables are local to the function.
You can use the MATLAB editor or any other text editor to create your .m files. In this section, we will discuss the script files. A script file contains multiple sequential lines of MATLAB commands and function calls. You can run a script by typing its name at the command line.
Creating and Running Script File
To create scripts files, you need to use a text editor. You can open the MATLAB editor in two ways:
Using the command prompt
Using the IDE
If you are using the command prompt, type edit in the command prompt. This will open the editor. You can directly type edit and then the filename (with .m extension)
27
edit
Or
edit

The above command will create the file in default MATLAB directory. If you want to store all program files in a specific folder, then you will have to provide the entire path.
Let us create a folder named progs. Type the following commands at the command prompt(>>):
If you are creating the file for first time, MATLAB prompts you to confirm it. Click Yes.
Alternatively, if you are using the IDE, choose NEW -> Script. This also opens the editor and creates a file named Untitled. You can name and save the file after typing the code.
mkdir progs % create directory progs under default directory chdir progs % changing the current directory to progs
edit prog1.m % creating an m file named prog1.m
Type the following code in the editor:
NoOfStudents = 6000;
TeachingStaff = 150;
NonTeachingStaff = 20;
Total = NoOfStudents + TeachingStaff …
+ NonTeachingStaff;
28

disp(Total);
After creating and saving the file, you can run it in two ways:
Clicking the Run button on the editor window or
Just typing the filename (without extension) in the command prompt: >> prog1 The command window prompt displays the result:
Example
Create a script file, and type the following code:
6170
a = 5; b = 7; c=a+b
d = c + sin(b) e=5*d
f = exp(-d)
When the above code is compiled and executed, it produces the following result:
c= 12
d= 12.6570
e= 63.2849
f= 3.1852e-06
29

7. DATATYPES
MATLAB does not require any type declaration or dimension statements. Whenever MATLAB encounters a new variable name, it creates the variable and allocates appropriate memory space.
If the variable already exists, then MATLAB replaces the original content with new content and allocates new storage space, where necessary.
For example,
The above statement creates a 1-by-1 matrix named ‘Total’ and stores the value 42 in it.
Data Types Available in MATLAB
MATLAB provides 15 fundamental data types. Every data type stores data that is in the form of a matrix or array. The size of this matrix or array is a minimum of 0-by-0 and this can grow up to a matrix or array of any size.
The following table shows the most commonly used data types in MATLAB:
Total = 42
Data Type
Description
int8
8-bit signed integer
uint8
8-bit unsigned integer
int16
16-bit signed integer
uint16
16-bit unsigned integer
int32
32-bit signed integer
uint32
32-bit unsigned integer
int64
64-bit signed integer
30

uint64
64-bit unsigned integer
single
single precision numerical data
double
double precision numerical data
logical
logical values of 1 or 0, represent true and false respectively
char
character data (strings are stored as vector of characters)
cell array
array of indexed cells, each capable of storing an array of a different dimension and data type
structure
C-like structures, each structure having named fields capable of storing an array of a different dimension and data type
function handle
pointer to a function
user classes
objects constructed from a user-defined class
java classes
objects constructed from a Java class
Example
Create a script file with the following code:
str = ‘Hello World!’ n = 2345
d = double(n)
un = uint32(789.50) rn = 5678.92347
c = int32(rn)
31

When the above code is compiled and executed, it produces the following result:
str =
Hello World! n=
2345 d=
2345 un =
790 rn =
5.6789e+03 c=
5679
Data Type Conversion
MATLAB provides various functions for converting a value from one data type to another. The following table shows the data type conversion functions:
Function
Purpose
Char
Convert to character array (string)
int2str
Convert integer data to string
mat2str
Convert matrix to string
num2str
Convert number to string
str2double
Convert string to double-precision value
32

str2num
Convert string to number
native2unicode
Convert numeric bytes to Unicode characters
unicode2native
Convert Unicode characters to numeric bytes
base2dec
Convert base N number string to decimal number
bin2dec
Convert binary number string to decimal number
dec2base
Convert decimal to base N number in string
dec2bin
Convert decimal to binary number in string
dec2hex
Convert decimal to hexadecimal number in string
hex2dec
Convert hexadecimal number string to decimal number
hex2num
Convert hexadecimal number string to double-precision number
num2hex
Convert singles and doubles to IEEE hexadecimal strings
cell2mat
Convert cell array to numeric array
cell2struct
Convert cell array to structure array
cellstr
Create cell array of strings from character array
mat2cell
Convert array to cell array with potentially different sized cells
num2cell
Convert array to cell array with consistently sized cells
struct2cell
Convert structure to cell array
33

Determination of Data Types
MATLAB provides various functions for identifying data type of a variable. Following table provides the functions for determining the data type of a variable:
Function
Purpose
is
Detect state
isa
Determine if input is object of specified class
iscell
Determine whether input is cell array
iscellstr
Determine whether input is cell array of strings
ischar
Determine whether item is character array
isfield
Determine whether input is structure array field
isfloat
Determine if input is floating-point array
ishghandle
True for Handle Graphics object handles
isinteger
Determine if input is integer array
isjava
Determine if input is Java object
islogical
Determine if input is logical array
isnumeric
Determine if input is numeric array
isobject
Determine if input is MATLAB object
isreal
Check if input is real array
isscalar
Determine whether input is scalar
34

isstr
Determine whether input is character array
isstruct
Determine whether input is structure array
isvector
Determine whether input is vector
class
Determine class of object
validateattributes
Check validity of array
whos
List variables in workspace, with sizes and types
Example
Create a script file with the following code:
x=3 isinteger(x) isfloat(x) isvector(x) isscalar(x) isnumeric(x)
x = 23.54 isinteger(x) isfloat(x) isvector(x) isscalar(x) isnumeric(x)
x = [1 2 3]
35

isinteger(x) isfloat(x) isvector(x) isscalar(x)
x = ‘Hello’ isinteger(x) isfloat(x) isvector(x) isscalar(x) isnumeric(x)
When you run the file, it produces the following result:
x=
3
ans = 0
ans = 1
ans = 1
ans = 1
ans = 1
x= 23.5400
36

ans = 0
ans = 1
ans = 1
ans = 1
ans = 1
x=
123
ans = 0
ans = 1
ans = 1
ans = 0
x= Hello ans =
0 ans =
0
37

ans = 1
ans = 0
ans = 0
38

8. OPERATORS
An operator is a symbol that tells the compiler to perform specific mathematical or logical manipulations. MATLAB is designed to operate primarily on whole matrices and arrays. Therefore, operators in MATLAB work both on scalar and non- scalar data. MATLAB allows the following types of elementary operations:
Arithmetic Operators Relational Operators Logical Operators Bitwise Operations Set Operations
Arithmetic Operators
MATLAB allows two different types of arithmetic operations:
Matrix arithmetic operations Array arithmetic operations
Matrix arithmetic operations are same as defined in linear algebra. Array operations are executed element by element, both on one-dimensional and multidimensional array.
The matrix operators and array operators are differentiated by the period (.) symbol. However, as the addition and subtraction operation is same for matrices and arrays, the operator is same for both cases. The following table gives brief description of the operators:
Operator
Description
+
Addition or unary plus. A+B adds the values stored in variables A and B. A and B must have the same size, unless one is a scalar. A scalar can be added to a matrix of any size.

Subtraction or unary minus. A-B subtracts the value of B from A. A and B must have the same size, unless one is a scalar. A scalar can be subtracted from a matrix of any size.
39

*
Matrix multiplication. C = A*B is the linear algebraic product of the matrices A and B. More precisely,
For non-scalar A and B, the number of columns of A must be equal to the number of rows of B. A scalar can multiply a matrix of any size.
.*
Array multiplication. A.*B is the element-by-element product of the arrays A and B. A and B must have the same size, unless one of them is a scalar.
/
Slash or matrix right division. B/A is roughly the same as B*inv(A). More precisely, B/A = (A’\B’)’.
./
Array right division. A./B is the matrix with elements A(i,j)/B(i,j). A and B must have the same size, unless one of them is a scalar.
\
Backslash or matrix left division. If A is a square matrix, A\B is roughly the same as inv(A)*B, except it is computed in a different way. If A is an n-by-n matrix and B is a column vector with n components, or a matrix with several such columns, then X = A\B is the solution to the equation AX = B. A warning message is displayed if A is badly scaled or nearly singular.
.\
Array left division. A.\B is the matrix with elements B(i,j)/A(i,j). A and B must have the same size, unless one of them is a scalar.
^
Matrix power. X^p is X to the power p, if p is a scalar. If p is an integer, the power is computed by repeated squaring. If the integer is negative, X is inverted first. For other values of p, the calculation involves eigenvalues and eigenvectors, such that if [V,D] = eig(X), then X^p = V*D.^p/V.
.^
Array power. A.^B is the matrix with elements A(i,j) to the B(i,j) power. A and B must have the same size, unless one of them is a scalar.
40


Matrix transpose. A’ is the linear algebraic transpose of A. For complex matrices, this is the complex conjugate transpose.
.’
Array transpose. A.’ is the array transpose of A. For complex matrices, this does not involve conjugation.
Example
The following examples show the use of arithmetic operators on scalar data. Create a script file with the following code:
a = 10; b = 20; c=a+b d=a-b e=a*b f=a/b g=a\b x = 7;
y = 3; z=x^y
When you run the file, it produces the following result:
c= 30
d= -10
e= 200
f= 0.5000
41

g=
2
z= 343
Functions for Arithmetic Operations
Apart from the above-mentioned arithmetic operators, MATLAB provides the following commands/functions used for similar purpose:
Function
Description
uplus(a)
Unary plus; increments by the amount a
plus (a,b)
Plus; returns a + b
uminus(a)
Unary minus; decrements by the amount a
minus(a, b)
Minus; returns a – b
times(a, b)
Array multiply; returns a.*b
mtimes(a, b)
Matrix multiplication; returns a* b
rdivide(a, b)
Right array division; returns a ./ b
ldivide(a, b)
Left array division; returns a.\ b
mrdivide(A, B)
Solve systems of linear equations xA = B for x
mldivide(A, B)
Solve systems of linear equations Ax = B for x
power(a, b)
Array power; returns a.^b
mpower(a, b)
Matrix power; returns a ^ b
42

cumprod(A)
Cumulative product; returns an array of the same size as the array A containing the cumulative product.
If A is a vector, then cumprod(A) returns a vector containing the cumulative product of the elements of A.
If A is a matrix, then cumprod(A) returns a matrix containing the cumulative products for each column of A.
If A is a multidimensional array, then cumprod(A) acts along the first non-singleton dimension.
cumprod(A, dim)
Returns the cumulative product along dimension dim.
cumsum(A)
Cumulative sum; returns an array A containing the cumulative sum.
If A is a vector, then cumsum(A) returns a vector containing the cumulative sum of the elements of A.
If A is a matrix, then cumsum(A) returns a matrix containing the cumulative sums for each column of A.
If A is a multidimensional array, then cumsum(A) acts along the first non-singleton dimension.
cumsum(A, dim)
Returns the cumulative sum of the elements along dimension dim.
diff(X)
Differences and approximate derivatives; calculates differences between adjacent elements of X.
If X is a vector, then diff(X) returns a vector, one element shorter than X, of differences between adjacent elements: [X(2)-X(1) X(3)-X(2) … X(n)- X(n-1)]
If X is a matrix, then diff(X) returns a matrix of row differences: [X(2:m,:)-X(1:m-1,:)]
diff(X,n)
Applies diff recursively n times, resulting in the nth difference.
43

diff(X,n,dim)
It is the nth difference function calculated along the dimension specified by scalar dim. If order n equals or exceeds the length of dimension dim, diff returns an empty array.
prod(A)
Product of array elements; returns the product of the array elements of A.
If A is a vector, then prod(A) returns the product of the elements.
If A is a nonempty matrix, then prod(A) treats the columns of A as vectors and returns a row vector of the products of each column.
If A is an empty 0-by-0 matrix, prod(A) returns 1.
If A is a multidimensional array, then prod(A) acts along the first non-singleton dimension and returns an array of products. The size of this dimension reduces to 1 while the sizes of all other dimensions remain the same.
The prod function computes and returns B as single if the input, A, is single. For all other numeric and logical data types, prod computes and returns B as double
prod(A,dim)
Returns the products along dimension dim. For example, if A is a matrix, prod(A,2) is a column vector containing the products of each row.
prod(___,datatype)
Multiplies in and returns an array in the class specified by datatype.
sum(A)
Sum of array elements; returns sums along different dimensions of an array. If A is floating point, that is double or single, B is accumulated natively, that is in the same class as A, and B has the same class as A. If A is not floating point, B is accumulated in double and B has class double.
If A is a vector, sum(A) returns the sum of the elements.
44

If A is a matrix, sum(A) treats the columns of A as vectors, returning a row vector of the sums of each column.
If A is a multidimensional array, sum(A) treats the values along the first non-singleton dimension as vectors, returning an array of row vectors.
sum(A,dim)
Sums along the dimension of A specified by scalar dim.
sum(…, ‘double’) sum(…, dim,’double’)
Perform additions in double-precision and return an answer of type double, even if A has data type single or an integer data type. This is the default for integer data types.
sum(…, ‘native’) sum(…, dim,’native’)
Perform additions in the native data type of A and return an answer of the same data type. This is the default for single and double.
ceil(A)
Round toward positive infinity; rounds the elements of A to the nearest integers greater than or equal to A.
fix(A)
Round toward zero
floor(A)
Round toward negative infinity; rounds the elements of A to the nearest integers less than or equal to A.
idivide(a, b) idivide(a, b,’fix’)
Integer division with rounding option; is the same as a./b except that fractional quotients are rounded toward zero to the nearest integers.
idivide(a, b, ’round’)
Fractional quotients are rounded to the nearest integers.
idivide(A, B, ‘floor’)
Fractional quotients are rounded toward negative infinity to the nearest integers.
45

idivide(A, B, ‘ceil’)
Fractional quotients are rounded toward infinity to the nearest integers.
mod (X,Y)
Modulus after division; returns X – n.*Y where n = floor(X./Y). If Y is not an integer and the quotient X./Y is within round off error of an integer, then n is that integer. The inputs X and Y must be real arrays of the same size, or real scalars (provided Y ~=0).
Please note: mod(X,0) is X mod(X,X) is 0
mod(X,Y) for X~=Y and Y~=0 has the same sign as Y
rem (X,Y)
Remainder after division; returns X – n.*Y where n = fix(X./Y). If Y is not an integer and the quotient X./Y is within round off error of an integer, then n is that integer. The inputs X and Y must be real arrays of the same size, or real scalars (provided Y ~=0).
Please note that: rem(X,0) is NaN rem(X,X) for X~=0 is 0
rem(X,Y) for X~=Y and Y~=0 has the same sign as X.
round(X)
Round to nearest integer; rounds the elements of X to the nearest integers. Positive elements with a fractional part of 0.5 round up to the nearest positive integer. Negative elements with a fractional part of – 0.5 round down to the nearest negative integer.
Relational Operators
Relational operators can also work on both scalar and non-scalar data. Relational operators for arrays perform element-by-element comparisons between two arrays and return a logical array of the same size, with elements set to logical 1 (true) where the relation is true and elements set to logical 0 (false) where it is not.
46

The following table shows the relational operators available in MATLAB:
Operator
Description
< Less than <= Less than or equal to >
Greater than
>=
Greater than or equal to
==
Equal to
~=
Not equal to
Example
Create a script file and type the following code:
a = 100;
b = 200; if (a >= b) max = a else
max = b
end
When you run the file, it produces following result:
Apart from the above-mentioned relational operators, MATLAB provides the following commands/functions used for the same purpose:
47
max = 200

Function
Description
eq(a, b)
Tests whether a is equal to b
ge(a, b)
Tests whether a is greater than or equal to b
gt(a, b)
Tests whether a is greater than b
le(a, b)
Tests whether a is less than or equal to b
lt(a, b)
Tests whether a is less than b
ne(a, b)
Tests whether a is not equal to b
isequal
Tests arrays for equality
isequaln
Tests arrays for equality, treating NaN values as equal
Example
Create a script file and type the following code:
% comparing two values a = 100;
b = 200;
if (ge(a,b))
max = a else max = b end
% comparing two different values a = 340;
b = 520;
48

if (le(a, b))
disp(‘ a is either less than or equal to b’) else
disp(‘ a is greater than b’)
end
When you run the file, it produces the following result:
Logical Operators
MATLAB offers two types of logical operators and functions:
Element-wise – These operators operate on corresponding elements of logical arrays.
Short-circuit – These operators operate on scalar and logical expressions. Element-wise logical operators operate element-by-element on logical arrays. The
symbols &, |, and ~ are the logical array operators AND, OR, and NOT.
Short-circuit logical operators allow short-circuiting on logical operations. The symbols && and || are the logical short-circuit operators AND and OR.
max = 200
a is either less than or equal to b
Example
Create a script file and type the following code:
a = 5; b = 20;
if ( a && b )
disp(‘Line 1 – Condition is true’);
end
if ( a || b )
disp(‘Line 2 – Condition is true’);
49

end
% lets change the value of a and b a = 0;
b = 10;
if ( a && b )
disp(‘Line 3 – Condition is true’); else
disp(‘Line 3 – Condition is not true’); end
if (~(a && b))
disp(‘Line 4 – Condition is true’); end
When you run the file, it produces following result:
Line 1 – Condition is true Line 2 – Condition is true Line 3 – Condition is not true Line 4 – Condition is true
Functions for Logical Operations
Apart from the above-mentioned logical operators, MATLAB provides the following commands or functions used for the same purpose:
50
Function
Description
and(A, B)
Finds logical AND of array or scalar inputs; performs a logical AND of all input arrays A, B, etc. and returns an array containing elements set to either logical 1 (true) or logical 0 (false). An

element of the output array is set to 1 if all input arrays contain a nonzero element at that same array location. Otherwise, that element is set to 0.
not(A)
Finds logical NOT of array or scalar input; performs a logical NOT of input array A and returns an array containing elements set to either logical 1 (true) or logical 0 (false). An element of the output array is set to 1 if the input array contains a zero value element at that same array location. Otherwise, that element is set to 0.
or(A, B)
Finds logical OR of array or scalar inputs; performs a logical OR of all input arrays A, B, etc. and returns an array containing elements set to either logical 1 (true) or logical 0 (false). An element of the output array is set to 1 if any input arrays contain a nonzero element at that same array location. Otherwise, that element is set to 0.
xor(A, B)
Logical exclusive-OR; performs an exclusive OR operation on the corresponding elements of arrays A and B. The resulting element C(i,j,…) is logical true (1) if A(i,j,…) or B(i,j,…), but not both, is nonzero.
all(A)
Determine if all array elements of array A are nonzero or true.
If A is a vector, all(A) returns logical 1 (true) if all the elements are nonzero and returns logical 0 (false) if one or more elements are zero.
If A is a nonempty matrix, all(A) treats the columns of A as vectors, returning a row vector of logical 1’s and 0’s.
If A is an empty 0-by-0 matrix, all(A) returns logical 1 (true).
If A is a multidimensional array, all(A) acts along the first non-singleton dimension and returns an array of logical values. The size of this dimension
51

reduces to 1 while the sizes of all other dimensions remain the same.
all(A, dim)
Tests along the dimension of A specified by scalar dim.
any(A)
Determine if any array elements are nonzero; tests whether any of the elements along various dimensions of an array is a nonzero number or is logical 1 (true). The any function ignores entries that are NaN (Not a Number).
If A is a vector, any(A) returns logical 1 (true) if any of the elements of A is a nonzero number or is logical 1 (true), and returns logical 0 (false) if all the elements are zero.
If A is a nonempty matrix, any(A) treats the columns of A as vectors, returning a row vector of logical 1’s and 0’s.
If A is an empty 0-by-0 matrix, any(A) returns logical 0 (false).
If A is a multidimensional array, any(A) acts along the first non-singleton dimension and returns an array of logical values. The size of this dimension reduces to 1 while the sizes of all other dimensions remain the same.
any(A,dim)
Tests along the dimension of A specified by scalar dim.
False
Logical 0 (false)
false(n)
is an n-by-n matrix of logical zeros
false(m, n)
is an m-by-n matrix of logical zeros.
false(m, n, p, …)
is an m-by-n-by-p-by-… array of logical zeros.
52

false(size(A))
is an array of logical zeros that is the same size as array A.
false(…,’like’,p)
is an array of logical zeros of the same data type and sparsity as the logical array p.
ind = find(X)
Find indices and values of nonzero elements; locates all nonzero elements of array X, and returns the linear indices of those elements in a vector. If X is a row vector, then the returned vector is a row vector; otherwise, it returns a column vector. If X contains no nonzero elements or is an empty array, then an empty array is returned.
ind = find(X, k)
ind = find(X, k, ‘first’)
Returns at most the first k indices corresponding to the nonzero entries of X. k must be a positive integer, but it can be of any numeric data type.
ind = find(X, k, ‘last’)
returns at most the last k indices corresponding to the nonzero entries of X.
[row,col] = find(X, …)
Returns the row and column indices of the nonzero entries in the matrix X. This syntax is especially useful when working with sparse matrices. If X is an N-dimensional array with N > 2, col contains linear indices for the columns.
[row,col,v] = find(X, …)
Returns a column or row vector v of the nonzero entries in X, as well as row and column indices. If X is a logical expression, then v is a logical array. Output v contains the non-zero elements of the logical array obtained by evaluating the expression X.
islogical(A)
Determine if input is logical array; returns true if A is a logical array and false otherwise. It also returns true if A is an instance of a class that is derived from the logical class.
53

logical(A)
Convert numeric values to logical; returns an array that can be used for logical indexing or logical tests.
True
Logical 1 (true)
true(n)
is an n-by-n matrix of logical ones.
true(m, n)
is an m-by-n matrix of logical ones.
true(m, n, p, …)
is an m-by-n-by-p-by-… array of logical ones.
true(size(A))
is an array of logical ones that is the same size as array A.
true(…,’like’, p)
is an array of logical ones of the same data type and sparsity as the logical array p.
Example
Create a script file and type the following code:
a = 60; % 60 = 0011 1100 b = 13; % 13 = 0000 1101
c = bitand(a, b)
c = bitor(a, b)
c = bitxor(a, b)
c = bitshift(a, 2) c = bitshift(a,-2)
% 12 = 0000 1100 % 61 = 0011 1101 % 49 = 0011 0001
% 240 = 1111 0000 */ % 15 = 0000 1111 */
When you run the file, it displays the following result:
c= 12
c=
54

61 c=
49 c=
240 c=
15
Bitwise Operations
Bitwise operators work on bits and perform bit-by-bit operation. The truth tables for &, |, and ^ are as follows:
p
q
p&q
p|q
p^ q
0
0
0
0
0
0
1
0
1
1
1
1
1
1
0
1
0
0
1
1
Assume if A = 60; and B = 13; Now in binary format they will be as follows: A = 0011 1100
B = 0000 1101
—————–
A&B = 0000 1100 A|B = 0011 1101 A^B = 0011 0001 ~A = 1100 0011
MATLAB provides various functions for bit-wise operations like ‘bitwise and’, ‘bitwise or’ and ‘bitwise not’ operations, shift operation, etc.
55

The following table shows the commonly used bitwise operations:
Function
Purpose
bitand(a, b)
Bit-wise AND of integers a and b
bitcmp(a)
Bit-wise complement of a
bitget(a,pos)
Get bit at specified position pos, in the integer array a
bitor(a, b)
Bit-wise OR of integers a and b
bitset(a, pos)
Set bit at specific location pos of a
bitshift(a, k)
Returns a shifted to the left by k bits, equivalent to multiplying by 2k. Negative values of k correspond to shifting bits right or dividing by 2|k| and rounding to the nearest integer towards negative infinite. Any overflow bits are truncated.
bitxor(a, b)
Bit-wise XOR of integers a and b
swapbytes
Swap byte ordering
Example
Create a script file and type the following code:
a = 60; % 60 = 0011 1100 b = 13; % 13 = 0000 1101
c = bitand(a, b)
c = bitor(a, b)
c = bitxor(a, b)
c = bitshift(a, 2) c = bitshift(a,-2)
% 12 = 0000 1100 % 61 = 0011 1101 % 49 = 0011 0001
% 240 = 1111 0000 */ % 15 = 0000 1111 */
56

When you run the file, it displays the following result:
c= 12
c= 61
c= 49
c= 240
c= 15
Set Operations
MATLAB provides various functions for set operations, like union, intersection and testing for set membership, etc.
The following table shows some commonly used set operations:
Function
Description
intersect(A,B)
Set intersection of two arrays; returns the values common to both A and B. The values returned are in sorted order.
intersect(A,B,’rows’)
Treats each row of A and each row of B as single entities and returns the rows common to both A and B. The rows of the returned matrix are in sorted order.
ismember(A,B)
Returns an array the same size as A, containing 1 (true) where the elements of A are found in B. Elsewhere, it returns 0 (false).
57

ismember(A,B,’rows’)
Treats each row of A and each row of B as single entities and returns a vector containing 1 (true) where the rows of matrix A are also rows of B. Elsewhere, it returns 0 (false).
issorted(A)
Returns logical 1 (true) if the elements of A are in sorted order and logical 0 (false) otherwise. Input A can be a vector or an N-by-1 or 1-by-N cell array of strings. A is considered to be sorted if A and the output of sort(A) are equal.
issorted(A, ‘rows’)
Returns logical 1 (true) if the rows of two-dimensional matrix A are in sorted order, and logical 0 (false) otherwise. Matrix A is considered to be sorted if A and the output of sortrows(A) are equal.
setdiff(A,B)
Sets difference of two arrays; returns the values in A that are not in B. The values in the returned array are in sorted order.
setdiff(A,B,’rows’)
Treats each row of A and each row of B as single entities and returns the rows from A that are not in B. The rows of the returned matrix are in sorted order.
The ‘rows’ option does not support cell arrays.
setxor
Sets exclusive OR of two arrays
union
Sets union of two arrays
unique
Unique values in array
Example
Create a script file and type the following code:
a = [7 23 14 15 9 12 8 24 35] b = [ 2 5 7 8 14 16 25 35 27] u = union(a, b)
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i = intersect(a, b) s = setdiff(a, b)
When you run the file, it produces the following result:
a=
7231415 912 82435
b=
2 5 7 81416253527
u=
Columns 1 through 11
2 5 7 8 9121415162324 Columns 12 through 14
25 27 35 i=
7 8 14 35 s=
9 12 15 23 24
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9. DECISION MAKING
Decision making structures require that the programmer should specify one or more conditions to be evaluated or tested by the program, along with a statement or statements to be executed if the condition is determined to be true, and optionally, other statements to be executed if the condition is determined to be false.
Following is the general form of a typical decision making structure found in most of the programming languages:
MATLAB provides following types of decision making statements. Click the following links to check their detail:
Statement
Description
if … end statement
An if … end statement consists of a boolean expression followed by one or more statements.
if…else…end statement
An if statement can be followed by an optional else statement, which executes when the boolean expression is false.
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If… elseif…elseif…else…end statements
An if statement can be followed by one (or more) optional elseif… and an else statement, which is very useful to test various conditions.
nested if statements
You can use one if or elseif statement inside another if or elseif statement(s).
switch statement
A switch statement allows a variable to be tested for equality against a list of values.
nested switch statements
You can use one switch statement inside another switch statement(s).
if… end Statement
An if … end statement consists of an if statement and a boolean expression followed by one or more statements. It is delimited by the end statement.
Syntax
The syntax of an if statement in MATLAB is:
if
% statement(s) will execute if the boolean expression is true
end
If the expression evaluates to true, then the block of code inside the if statement will be executed. If the expression evaluates to false, then the first set of code after the end statement will be executed.
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Flow Diagram
Example
Create a script file and type the following code:
a = 10;
% check the condition using if statement
if a < 20 % if condition is true then print the following fprintf('a is less than 20\n' ); end fprintf('value of a is : %d\n', a); When you run the file, it displays the following result: a is less than 20 value of a is : 10 62 if...else...end Statement An if statement can be followed by an optional else statement, which executes when the expression is false. Syntax The syntax of an if...else statement in MATLAB is: if
% statement(s) will execute if the boolean expression is true
else

% statement(s) will execute if the boolean expression is false end
If the boolean expression evaluates to true, then the if block of code will be executed, otherwise else block of code will be executed.
Flow Diagram
Example
Create a script file and type the following code:
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a = 100;
% check the boolean condition
if a < 20 % if condition is true then print the following fprintf('a is less than 20\n' ); else % if condition is false then print the following fprintf('a is not less than 20\n' ); end fprintf('value of a is : %d\n', a); When the above code is compiled and executed, it produces the following result: if...elseif...elseif...else...end Statements An if statement can be followed by one (or more) optional elseif... and an else statement, which is very useful to test various conditions. When using if... elseif...else statements, there are few points to keep in mind: An if can have zero or one else's and it must come after any elseif's. An if can have zero to many elseif's and they must come before the else. Once an else if succeeds, none of the remaining elseif's or else's will be tested. a is not less than 20 value of a is : 100 Syntax if
% Executes when the expression 1 is true
elseif
% Executes when the boolean expression 2 is true
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Elseif
% Executes when the boolean expression 3 is true
else
% executes when the none of the above condition is true
end
Example
Create a script file and type the following code in it:
a = 100;
%check the boolean condition
if a == 10
% if condition is true then print the following
fprintf(‘Value of a is 10\n’ ); elseif( a == 20 )
% if else if condition is true
fprintf(‘Value of a is 20\n’ ); elseif a == 30
% if else if condition is true fprintf(‘Value of a is 30\n’ );
else
% if none of the conditions is true ‘
fprintf(‘None of the values are matching\n’); fprintf(‘Exact value of a is: %d\n’, a );
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end
When the above code is compiled and executed, it produces the following result:
The Nested if Statements
It is always legal in MATLAB to nest if-else statements which means you can use one if or elseif statement inside another if or elseif statement(s).
Syntax
The syntax for a nested if statement is as follows:
None of the values are matching Exact value of a is: 100
if
% Executes when the boolean expression 1 is true
if
% Executes when the boolean expression 2 is true
end end
You can nest elseif…else in the similar way as you have nested if statement.
Example
Create a script file and type the following code in it:
a = 100; b = 200;
% check the boolean condition if( a == 100 )
% if condition is true then check the following if( b == 200 )
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% if condition is true then print the following
fprintf(‘Value of a is 100 and b is 200\n’ ); end
end
fprintf(‘Exact value of a is : %d\n’, a ); fprintf(‘Exact value of b is : %d\n’, b );
When you run the file, it displays:
The switch Statement
A switch block conditionally executes one set of statements from several choices. Each choice is covered by a case statement.
An evaluated switch_expression is a scalar or string.
An evaluated case_expression is a scalar, a string or a cell array of scalars or strings.
The switch block tests each case until one of the cases is true. A case is true when:
For numbers, eq(case_expression,switch_expression).
For strings, strcmp(case_expression,switch_expression).
For objects that support the eq function,eq(case_expression,switch_expression).
For a cell array case_expression, at least one of the elements of the cell array matches switch_expression, as defined above for numbers, strings and objects.
When a case is true, MATLAB executes the corresponding statements and then exits the switch block.
Value of a is 100 and b is 200 Exact value of a is : 100 Exact value of b is : 200
The otherwise block is optional and executes only when no case is true. Syntax
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The syntax of switch statement in MATLAB is:
switch case

case



otherwise
end
Example
Create a script file and type the following code in it:
grade = ‘B’; switch(grade) case ‘A’
fprintf(‘Excellent!\n’ ); case ‘B’
fprintf(‘Well done\n’ ); case ‘C’
fprintf(‘Well done\n’ ); case ‘D’
fprintf(‘You passed\n’ );
case ‘F’
fprintf(‘Better try again\n’ );
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otherwise
fprintf(‘Invalid grade\n’ );
end
When you run the file, it displays:
The Nested Switch Statements
It is possible to have a switch as part of the statement sequence of an outer switch. Even if the case constants of the inner and outer switch contain common values, no conflicts will arise.
Well done
Your grade is B
Syntax
The syntax for a nested switch statement is as follows:
switch(ch1) case ‘A’
fprintf(‘This A is part of outer switch’); switch(ch2)
case ‘A’
fprintf(‘This A is part of inner switch’ );
case ‘B’
fprintf(‘This B is part of inner switch’ ); end
case ‘B’
fprintf(‘This B is part of outer switch’ ); end
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Example
Create a script file and type the following code in it:
a = 100; b = 200; switch(a)
case 100
fprintf(‘This is part of outer switch %d\n’, a ); switch(b)
case 200
fprintf(‘This is part of inner switch %d\n’, a );
end end
fprintf(‘Exact value of a is : %d\n’, a ); fprintf(‘Exact value of b is : %d\n’, b );
When you run the file, it displays:
This is part of outer switch 100 This is part of inner switch 100 Exact value of a is : 100
Exact value of b is : 200
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10. LOOP TYPES
There may be a situation when you need to execute a block of code several number of times. In general, statements are executed sequentially. The first statement in a function is executed first, followed by the second, and so on.
Programming languages provide various control structures that allow for more complicated execution paths.
A loop statement allows us to execute a statement or group of statements multiple times and following is the general form of a loop statement in most of the programming languages:
MATLAB provides following types of loops to handle looping requirements. Click the following links to check their detail:
Loop Type
Description
while loop
Repeats a statement or group of statements while a given condition is true. It tests the condition before executing the loop body.
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for loop
Executes a sequence of statements multiple times and abbreviates the code that manages the loop variable.
nested loops
You can use one or more loops inside any another loop.
The while Loop
The while loop repeatedly executes statements while condition is true.
Syntax
The syntax of a while loop in MATLAB is:
The while loop repeatedly executes program statement(s) as long as the expression remains true.
An expression is true when the result is nonempty and contains all nonzero elements (logical or real numeric). Otherwise, the expression is false.
while
end
Example
Create a script file and type the following code:
a = 10;
% while loop execution while( a < 20 ) fprintf('value of a: %d\n', a); a = a + 1; end When you run the file, it displays the following result: value of a: 10 value of a: 11 72 value of a: 12 value of a: 13 value of a: 14 value of a: 15 value of a: 16 value of a: 17 value of a: 18 value of a: 19 The for Loop A for loop is a repetition control structure that allows you to efficiently write a loop that needs to execute a specific number of times. Syntax The syntax of a for loop in MATLAB is: for index = values … end
values has one of the following forms:
Format
Description
initval:endval
increments the index variable from initval to endval by 1, and repeats execution of program statements until index is greater than endval.
initval:step:endval
increments index by the value step on each iteration, or decrements when step is negative.
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valArray
creates a column vector index from subsequent columns of arrayvalArray on each iteration. For example, on the first iteration, index = valArray(:,1). The loop executes for a maximum of n times, where n is the number of columns of valArray, given by numel(valArray, 1, :). The input valArray can be of any MATLAB data type, including a string, cell array, or struct.
Example 1
Create a script file and type the following code:
When you run the file, it displays the following result:
for a = 10:20
fprintf(‘value of a: %d\n’, a);
end
value of a: 10 value of a: 11 value of a: 12 value of a: 13 value of a: 14 value of a: 15 value of a: 16 value of a: 17 value of a: 18 value of a: 19 value of a: 20
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Example 2
Create a script file and type the following code:
When you run the file, it displays the following result:
for a = 1.0: -0.1: 0.0 disp(a)
end
1
0.9000
0.8000
0.7000
0.6000
0.5000
0.4000
0.3000
0.2000
0.1000
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0
Example 3
Create a script file and type the following code:
When you run the file, it displays the following result:
for a = [24,18,17,23,28] disp(a)
end
24
18
17
23
28
The Nested Loops
MATLAB allows to use one loop inside another loop. Following section shows few examples to illustrate the concept.
Syntax
The syntax for a nested for loop statement in MATLAB is as follows:
for m = 1:j for n = 1:k
;
end
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end
The syntax for a nested while loop statement in MATLAB is as follows:
while while

end
end
Example
Let us use a nested for loop to display all the prime numbers from 1 to 100. Create a script file and type the following code:
for i=2:100
for j=2:100
if(~mod(i,j))
break; % if factor found, not prime
end end
if(j > (i/j))
fprintf(‘%d is prime\n’, i);
end end
When you run the file, it displays the following result:
2 is prime 3 is prime 5 is prime 7 is prime
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11 is prime 13 is prime 17 is prime 19 is prime 23 is prime 29 is prime 31 is prime 37 is prime 41 is prime 43 is prime 47 is prime 53 is prime 59 is prime 61 is prime 67 is prime 71 is prime 73 is prime 79 is prime 83 is prime 89 is prime 97 is prime
Loop Control Statements
Loop control statements change execution from its normal sequence. When execution leaves a scope, all automatic objects that were created in that scope are destroyed.
MATLAB supports the following control statements. Click the following links to check their detail.
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Control Statement
Description
break statement
Terminates the loop statement and transfers execution to the statement immediately following the loop.
continue statement
Causes the loop to skip the remainder of its body and immediately retest its condition prior to reiterating.
The break Statement
The break statement terminates execution of for or while loop. Statements in the loop that appear after the break statement are not executed.
In nested loops, break exits only from the loop in which it occurs. Control passes to the statement following the end of that loop.
Flow Diagram
Example
Create a script file and type the following code:
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a = 10;
% while loop execution
while (a < 20 ) fprintf('value of a: %d\n', a); a = a+1; if( a > 15)
% terminate the loop using break statement break;
end end
When you run the file, it displays the following result:
value of a: 10 value of a: 11 value of a: 12 value of a: 13 value of a: 14 value of a: 15
The continue Statement
The continue statement is used for passing control to next iteration of for or while loop.
The continue statement in MATLAB works somewhat like the break statement. Instead of forcing termination, however, ‘continue’ forces the next iteration of the loop to take place, skipping any code in between.
Flow Diagram
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Example
Create a script file and type the following code:
a = 10;
%while loop execution while a < 20 if a == 15 % skip the iteration a = a + 1; continue; end fprintf('value of a: %d\n', a); a = a + 1; end 81 When you run the file, it displays the following result: value of a: 10 value of a: 11 value of a: 12 value of a: 13 value of a: 14 value of a: 16 value of a: 17 value of a: 18 value of a: 19 82 11. VECTORS A vector is a one-dimensional array of numbers. MATLAB allows creating two types of vectors: Row vectors Column vectors Row Vectors Row vectors are created by enclosing the set of elements in square brackets, using space or comma to delimit the elements. MATLAB will execute the above statement and return the following result: r = [7 8 9 10 11] r= Columns 1 through 4 7 8 9 10 Column 5 11 Column Vectors Column vectors are created by enclosing the set of elements in square brackets, using semicolon to delimit the elements. MATLAB will execute the above statement and return the following result: 83 c=[7; 8; 9; 10;11] c= 7 8 9 10 11 Referencing the Elements of a Vector You can reference one or more of the elements of a vector in several ways. The ithcomponent of a vector v is referred as v(i). For example: MATLAB will execute the above statement and return the following result: When you reference a vector with a colon, such as v(:), all the components of the vector are listed. MATLAB will execute the above statement and return the following result: v = [ 1; 2; 3; 4; 5; 6]; % creating a column vector of 6 elements v(3) ans = 3 v = [ 1; 2; 3; 4; 5; 6]; % creating a column vector of 6 elements v(:) ans = 1 2 3 4 5 6 84 MATLAB allows you to select a range of elements from a vector. For example, let us create a row vector rv of 9 elements, then we will reference the elements 3 to 7 by writing rv(3:7) and create a new vector named sub_rv. MATLAB will execute the above statement and return the following result: Vector Operations In this section, let us discuss the following vector operations: Addition and Subtraction of Vectors Scalar Multiplication of Vectors Transpose of a Vector Appending Vectors Magnitude of a Vector Vector Dot Product Vectors with Uniformly Spaced Elements Addition and Subtraction of Vectors You can add or subtract two vectors. Both the operand vectors must be of same type and have same number of elements. rv = [1 2 3 4 5 6 7 8 9]; sub_rv = rv(3:7) sub_rv = 34567 Example Create a script file with the following code: A = [7, 11, 15, 23, 9]; B = [2, 5, 13, 16, 20]; C = A + B; D = A - B; 85 disp(C); disp(D); When you run the file, it displays the following result: Scalar Multiplication of Vectors When you multiply a vector by a number, this is called the scalar multiplication. Scalar multiplication produces a new vector of same type with each element of the original vector multiplied by the number. Example Create a script file with the following code: When you run the file, it displays the following result: Please note that you can perform all scalar operations on vectors. For example, you can add, subtract and divide a vector with a scalar quantity. Transpose of a Vector The transpose operation changes a column vector into a row vector and vice versa. The transpose operation is represented by a single quote ('). 9 16 28 39 29 5 6 2 7 -11 v = [ 12 34 10 8]; m=5*v m= 60 170 50 40 Example Create a script file with the following code: r = [ 1 2 3 4 ]; tr = r'; 86 v = [1;2;3;4]; tv = v'; disp(tr); disp(tv); When you run the file, it displays the following result: 1 2 3 4 1234 Appending Vectors MATLAB allows you to append vectors together to create new vectors. If you have two row vectors r1 and r2 with n and m number of elements, to create a row vector r of n plus m elements, by appending these vectors, you write: You can also create a matrix r by appending these two vectors, the vector r2, will be the second row of the matrix: However, to do this, both the vectors should have same number of elements. Similarly, you can append two column vectors c1 and c2 with n and m number of elements. To create a column vector c of n plus m elements, by appending these vectors, you write: You can also create a matrix c by appending these two vectors; the vector c2 will be the second column of the matrix: 87 r = [r1,r2] r = [r1;r2] c = [c1; c2] c = [c1, c2] However, to do this, both the vectors should have same number of elements. Example Create a script file with the following code: r1 = [ 1 2 3 4 ]; r2 = [5 6 7 8 ]; r = [r1,r2] rMat = [r1;r2] c1 = [ 1; 2; 3; 4 ]; c2 = [5; 6; 7; 8 ]; c = [c1; c2] cMat = [c1,c2] When you run the file, it displays the following result: r= 12345678 rMat = 1234 5678 c= 1 2 3 4 5 88 6 7 8 cMat = 15 26 37 48 Magnitude of a Vector Magnitude of a vector v with elements v1, v2, v3, ..., vn, is given by the equation: |v| = √(v12 + v22 + v32 + ... + vn2) You need to take the following steps to calculate the magnitude of a vector: Take the product of the vector with itself, using array multiplication (.*). This produces a vector sv, whose elements are squares of the elements of vector v. sv = v.*v; Use the sum function to get the sum of squares of elements of vector v. This is also called the dot product of vector v. dp= sum(sv); Use the sqrt function to get the square root of the sum which is also the magnitude of the vector v. mag = sqrt(s); Example Create a script file with the following code: v = [1: 2: 20]; sv = v.* v; %the vector with elements % as square of v's elements dp = sum(sv); % sum of squares -- the dot product mag = sqrt(dp); % magnitude 89 disp('Magnitude:'); disp(mag); When you run the file, it displays the following result: Vector Dot Product Dot product of two vectors a = (a1, a2, ..., an) and b = (b1, b2, ..., bn) is given by: a.b = ∑(ai.bi) Dot product of two vectors a and b is calculated using the dot function. Example Create a script file with the following code: Magnitude: 36.4692 dot(a, b); v1 = [2 3 4]; v2 = [1 2 3]; dp = dot(v1, v2); disp('Dot Product:'); disp(dp); When you run the file, it displays the following result: Vectors with Uniformly Spaced Elements MATLAB allows you to create a vector with uniformly spaced elements. To create a vector v with the first element f, last element l, and the difference between elements is any real number n, we write: 90 Dot Product: 20 v = [f : n : l] Example Create a script file with the following code: When you run the file, it displays the following result: v = [1: 2: 20]; sqv = v.^2; disp(v);disp(sqv); 1 3 5 7 91113151719 1 9 25 49 81121169225289361 91 12. MATRIX A matrix is a two-dimensional array of numbers. In MATLAB, you create a matrix by entering elements in each row as comma or space delimited numbers and using semicolons to mark the end of each row. For example, let us create a 4-by-5 matrix a: MATLAB will execute the above statement and return the following result: a = [ 1 2 3 4 5; 2 3 4 5 6; 3 4 5 6 7; 4 5 6 7 8] a= 12345 23456 34567 45678 Referencing the Elements of a Matrix To reference an element in the mth row and nth column, of a matrix mx, we write: For example, to refer to the element in the 2nd row and 5th column, of the matrix a, as created in the last section, we type: MATLAB will execute the above statement and return the following result: 92 mx(m, n); a = [ 1 2 3 4 5; 2 3 4 5 6; 3 4 5 6 7; 4 5 6 7 8]; a(2,5) ans = 6 To reference all the elements in the mth column we type A(:,m). Let us create a column vector v, from the elements of the 4th row of the matrix a: MATLAB will execute the above statement and return the following result: a = [ 1 2 3 4 5; 2 3 4 5 6; 3 4 5 6 7; 4 5 6 7 8]; v = a(:,4) v= 4 5 6 7 You can also select the elements in the mth through nth columns, for this we write: Let us create a smaller matrix taking the elements from the second and third columns: MATLAB will execute the above statement and return the following result: a(:,m:n) a = [ 1 2 3 4 5; 2 3 4 5 6; 3 4 5 6 7; 4 5 6 7 8]; a(:, 2:3) ans = 23 34 45 56 In the same way, you can create a sub-matrix taking a sub-part of a matrix. 93 a = [ 1 2 3 4 5; 2 3 4 5 6; 3 4 5 6 7; 4 5 6 7 8]; a(:, 2:3) MATLAB will execute the above statement and return the following result: ans = 23 34 45 56 In the same way, you can create a sub-matrix taking a sub-part of a matrix. For example, let us create a sub-matrix sa taking the inner subpart of a: To do this, write: MATLAB will execute the above statement and return the following result: Deleting a Row or a Column in a Matrix You can delete an entire row or column of a matrix by assigning an empty set of square braces [] to that row or column. Basically, [] denotes an empty array. 345 456 a = [ 1 2 3 4 5; 2 3 4 5 6; 3 4 5 6 7; 4 5 6 7 8]; sa = a(2:3,2:4) sa = 345 456 For example, let us delete the fourth row of a: a = [ 1 2 3 4 5; 2 3 4 5 6; 3 4 5 6 7; 4 5 6 7 8]; 94 a(4,:)=[] MATLAB will execute the above statement and return the following result: a= 12345 23456 34567 Next, let us delete the fifth column of a: MATLAB will execute the above statement and return the following result: a = [ 1 2 3 4 5; 2 3 4 5 6; 3 4 5 6 7; 4 5 6 7 8]; a(: , 5)=[] a= 1234 2345 3456 4567 Example In this example, let us create a 3-by-3 matrix m, then we will copy the second and third rows of this matrix twice to create a 4-by-3 matrix. Create a script file with the following code: When you run the file, it displays the following result: a = [ 1 2 3 ; 4 5 6; 7 8 9]; new_mat = a([2,3,2,3],:) new_mat = 456 95 789 456 789 Matrix Operations In this section, let us discuss the following basic and commonly used matrix operations: Addition and Subtraction of Matrices Division of Matrices Scalar Operations of Matrices Transpose of a Matrix Concatenating Matrices Matrix Multiplication Determinant of a Matrix Inverse of a Matrix Addition and Subtraction of Matrices You can add or subtract matrices. Both the operand matrices must have the same number of rows and columns. Example Create a script file with the following code: a = [ 1 2 3 ; 4 5 6; 7 8 9]; b = [ 7 5 6 ; 2 0 8; 5 7 1]; c=a+b d=a-b When you run the file, it displays the following result: c= 879 6 5 14 96 12 15 10 d= -6 -3 -3 2 5 -2 218 Division (Left, Right) of Matrix You can divide two matrices using left (\) or right (/) division operators. Both the operand matrices must have the same number of rows and columns. Example Create a script file with the following code: a = [ 1 2 3 ; 4 5 6; 7 8 9]; b = [ 7 5 6 ; 2 0 8; 5 7 1]; c=a/b d=a\b When you run the file, it displays the following result: c= -0.52542 0.68644 0.66102 -0.42373 0.94068 1.01695 -0.32203 1.19492 1.37288 d= -3.27778 -1.05556 -4.86111 -0.11111 0.11111 -0.27778 97 3.05556 1.27778 4.30556 Scalar Operations of Matrices When you add, subtract, multiply or divide a matrix by a number, this is called the scalar operation. Scalar operations produce a new matrix with same number of rows and columns with each element of the original matrix added to, subtracted from, multiplied by or divided by the number. Example Create a script file with the following code: a = [ 10 12 23 ; 14 8 6; 27 8 9]; b = 2; c=a+b d=a-b e=a*b f=a/b When you run the file, it displays the following result: c= 12 14 25 16 10 8 29 10 11 d= 8 10 21 12 6 4 25 6 7 e= 20 24 46 98 28 16 12 54 16 18 f= 5.0000 6.0000 11.5000 7.0000 4.0000 3.0000 13.5000 4.0000 4.5000 Transpose of a Matrix The transpose operation switches the rows and columns in a matrix. It is represented by a single quote('). Example Create a script file with the following code: When you run the file, it displays the following result: a = [ 10 12 23 ; 14 8 6; 27 8 9] b = a' a= 10 12 23 14 8 6 27 8 9 b= 10 14 27 12 8 8 23 6 9 Concatenating Matrices You can concatenate two matrices to create a larger matrix. The pair of square brackets '[]' is the concatenation operator. 99 MATLAB allows two types of concatenations: Horizontal concatenation Vertical concatenation When you concatenate two matrices by separating those using commas, they are just appended horizontally. It is called horizontal concatenation. Alternatively, if you concatenate two matrices by separating those using semicolons, they are appended vertically. It is called vertical concatenation. Example Create a script file with the following code: a = [ 10 12 23 ; 14 8 6; 27 8 9] b = [ 12 31 45 ; 8 0 -9; 45 2 11] c = [a, b] d = [a; b] When you run the file, it displays the following result: a= 10 12 23 14 8 6 27 8 9 b= 12 31 45 8 0 -9 45 2 11 c= 10 12 23 12 31 45 14 8 6 8 0 -9 27 8 9 45 2 11 d= 100 10 12 23 14 8 6 27 8 9 12 31 45 8 0 -9 45 2 11 Matrix Multiplication Consider two matrices A and B. If A is an m x n matrix and B is an n x p matrix, they could be multiplied together to produce an m x n matrix C. Matrix multiplication is possible only if the number of columns n in A is equal to the number of rows n in B. In matrix multiplication, the elements of the rows in the first matrix are multiplied with corresponding columns in the second matrix. Each element in the (i, j)th position, in the resulting matrix C, is the summation of the products of elements in ith row of first matrix with the corresponding element in the jth column of the second matrix. Matrix multiplication in MATLAB is performed by using the * operator. Example Create a script file with the following code: When you run the file, it displays the following result: a = [ 1 2 3; 2 3 4; 1 2 5] b = [ 2 1 3 ; 5 0 -2; 2 3 -1] prod = a * b a= 123 234 125 101 b= 213 5 2 prod = 18 27 22 0 -2 3 -1 10 -4 14 -4 16 -6 Determinant of a Matrix Determinant of a matrix is calculated using the det function of MATLAB. Determinant of a matrix A is given by det(A). Example Create a script file with the following code: When you run the file, it displays the following result: a = [ 1 2 3; 2 3 4; 1 2 5] det(a) a= 123 234 125 ans = -2 Inverse of a Matrix The inverse of a matrix A is denoted by A−1 such that the following relationship holds: 102 AA−1=A−1A=1 The inverse of a matrix does not always exist. If the determinant of the matrix is zero, then the inverse does not exist and the matrix is singular. Inverse of a matrix in MATLAB is calculated using the inv function. Inverse of a matrix A is given by inv(A). Example Create a script file and type the following code: When you run the file, it displays the following result: a = [ 1 2 3; 2 3 4; 1 2 5] inv(a) a= 123 234 125 ans = -3.5000 2.0000 0.5000 3.0000 -1.0000 -1.0000 -0.5000 0 0.5000 103 13. ARRAYS All variables of all data types in MATLAB are multidimensional arrays. A vector is a one-dimensional array and a matrix is a two-dimensional array. We have already discussed vectors and matrices. In this chapter, we will discuss multidimensional arrays. However, before that, let us discuss some special types of arrays. Special Arrays in MATLAB In this section, we will discuss some functions that create some special arrays. For all these functions, a single argument creates a square array, double arguments create rectangular array. The zeros() function creates an array of all zeros: For example: MATLAB will execute the above statement and return the following result: zeros(5) ans = 00000 00000 00000 00000 00000 The ones() function creates an array of all ones: For example: MATLAB will execute the above statement and return the following result: 104 ones(4,3) ans = 111 111 111 111 The eye() function creates an identity matrix. For example: MATLAB will execute the above statement and return the following result: eye(4) ans = 1000 0100 0010 0001 The rand() function creates an array of uniformly distributed random numbers on (0,1): For example: MATLAB will execute the above statement and return the following result: rand(3, 5) ans = 0.8147 0.9134 0.2785 0.9649 0.9572 0.9058 0.6324 0.5469 0.1576 0.4854 0.1270 0.0975 0.9575 0.9706 0.8003 105 A Magic Square A magic square is a square that produces the same sum, when its elements are added row-wise, column-wise or diagonally. The magic() function creates a magic square array. It takes a singular argument that gives the size of the square. The argument must be a scalar greater than or equal to 3. MATLAB will execute the above statement and return the following result: magic(4) ans = 16 2 3 13 5 11 10 8 9 7 6 12 4 14 15 1 Multidimensional Arrays An array having more than two dimensions is called a multidimensional array in MATLAB. Multidimensional arrays in MATLAB are an extension of the normal two- dimensional matrix. Generally to generate a multidimensional array, we first create a two-dimensional array and extend it. For example, let's create a two-dimensional array a. MATLAB will execute the above statement and return the following result: a = [7 9 5; 6 1 9; 4 3 2] a= 795 619 432 106 The array a is a 3-by-3 array; we can add a third dimension to a, by providing the values like: MATLAB will execute the above statement and return the following result: a(:,:,2)=[123;456;789] a(:,:,1) = 795 619 432 a(:,:,2) = 123 456 789 We can also create multidimensional arrays using the ones(), zeros() or the rand() functions. For example, MATLAB will execute the above statement and return the following result: b = rand(4,3,2) b(:,:,1) = 0.0344 0.7952 0.6463 0.4387 0.1869 0.7094 0.3816 0.4898 0.7547 0.7655 0.4456 0.2760 b(:,:,2) = 0.6797 0.4984 0.2238 107 0.6551 0.9597 0.7513 0.1626 0.3404 0.2551 0.1190 0.5853 0.5060 We can also use the cat() function to build multidimensional arrays. It concatenates a list of arrays along a specified dimension: Syntax for the cat() function is: Where, B is the new array created A1, A2, ... are the arrays to be concatenated dim is the dimension along which to concatenate the arrays Example Create a script file and type the following code into it: When you run the file, it displays: B = cat(dim, A1, A2...) a = [9 8 7; 6 5 4; 3 2 1]; b = [1 2 3; 4 5 6; 7 8 9]; c = cat(3, a, b, [ 2 3 1; 4 7 8; 3 9 0]) c(:,:,1) = 987 654 321 c(:,:,2) = 123 456 789 c(:,:,3) = 108 231 478 390 Array Functions MATLAB provides the following functions to sort, rotate, permute, reshape, or shift array contents. Function Purpose length Length of vector or largest array dimension ndims Number of array dimensions numel Number of array elements size Array dimensions iscolumn Determines whether input is column vector isempty Determines whether array is empty ismatrix Determines whether input is matrix isrow Determines whether input is row vector isscalar Determines whether input is scalar isvector Determines whether input is vector blkdiag Constructs block diagonal matrix from input arguments circshift Shifts array circularly ctranspose Complex conjugate transpose 109 diag Diagonal matrices and diagonals of matrix flipdim Flips array along specified dimension fliplr Flips matrix from left to right flipud Flips matrix up to down ipermute Inverses permute dimensions of N-D array permute Rearranges dimensions of N-D array repmat Replicates and tile array reshape Reshapes array rot90 Rotates matrix 90 degrees shiftdim Shifts dimensions issorted Determines whether set elements are in sorted order sort Sorts array elements in ascending or descending order sortrows Sorts rows in ascending order squeeze Removes singleton dimensions transpose Transpose vectorize Vectorizes expression Examples The following examples illustrate some of the functions mentioned above. Length, Dimension and Number of elements: Create a script file and type the following code into it: 110 x = [7.1, 3.4, 7.2, 28/4, 3.6, 17, 9.4, 8.9]; length(x) % length of x vector y = rand(3, 4, 5, 2); ndims(y) % no of dimensions in array y s = ['Zara', 'Nuha', 'Shamim', 'Riz', 'Shadab']; numel(s) %noofelementsins When you run the file, it displays the following result: ans = 8 ans = 4 ans = 23 Circular Shifting of the Array Elements: Create a script file and type the following code into it: a=[123;456;789] %theoriginalarraya b = circshift(a,1) % circular shift first dimension values down by 1. c = circshift(a,[1 -1]) % circular shift first dimension values % down by 1 % and second dimension values to the left % by 1. When you run the file, it displays the following result: a= 123 456 789 111 b= 789 123 456 c= 897 231 564 Sorting Arrays Create a script file and type the following code into it: v=[2345129501917] %horizonalvector sort(v) %sortingv m=[264;539;201] % twodimensionalarray sort(m,1) %sortingmalongtherow sort(m,2) %sortingmalongthecolumn When you run the file, it displays the following result: v= 234512 9 5 01917 ans = 0 5 91217192345 m= 264 539 201 112 ans = 201 234 569 ans = 246 359 012 Cell Array Cell arrays are arrays of indexed cells where each cell can store an array of a different dimensions and data types. The cell function is used for creating a cell array. Syntax for the cell function is: Where, C is the cell array; dim is a scalar integer or vector of integers that specifies the dimensions of cell array C; C = cell(dim) C = cell(dim1,...,dimN) D = cell(obj) dim1, ... , dimN are scalar integers that specify the dimensions of C; obj is One of the following: Java array or object .NET array of type System.String or System.Object Example Create a script file and type the following code into it: c = cell(2, 5); c = {'Red', 'Blue', 'Green', 'Yellow', 'White'; 1 2 3 4 5} 113 When you run the file, it displays the following result: c= 'Red' 'Blue' 'Green' 'Yellow' 'White' [ 1] [ 2] [ 3] [ 4] [ 5] Accessing Data in Cell Arrays There are two ways to refer to the elements of a cell array: Enclosing the indices in first bracket (), to refer to sets of cells Enclosing the indices in braces {}, to refer to the data within individual cells When you enclose the indices in first bracket, it refers to the set of cells. Cell array indices in smooth parentheses refer to sets of cells. For example: MATLAB will execute the above statement and return the following result: You can also access the contents of cells by indexing with curly braces. For example: MATLAB will execute the above statement and return the following result: 114 c = {'Red', 'Blue', 'Green', 'Yellow', 'White'; 1 2 3 4 5}; c(1:2,1:2) ans = 'Red' 'Blue' [ 1] [ 2] c = {'Red', 'Blue', 'Green', 'Yellow', 'White'; 1 2 3 4 5}; c{1, 2:4} ans = Blue ans = Green ans = Yellow 115 14. COLONNOTATION The colon(:) is one of the most useful operator in MATLAB. It is used to create vectors, subscript arrays, and specify for iterations. If you want to create a row vector, containing integers from 1 to 10, you write: MATLAB executes the statement and returns a row vector containing the integers from 1 to 10: 1:10 ans = 1 2 3 4 5 6 7 8 9 10 If you want to specify an increment value other than one, for example: MATLAB executes the statement and returns the following result: Let us take another example: MATLAB executes the statement and returns the following result: 100: -5: 50 ans = 100 95 90 85 80 75 70 65 60 55 50 0:pi/8:pi ans = Columns 1 through 7 0 0.3927 0.7854 1.1781 1.5708 1.9635 2.3562 Columns 8 through 9 2.7489 3.1416 116 You can use the colon operator to create a vector of indices to select rows, columns or elements of arrays. The following table describes its use for this purpose (let us have a matrix A): Format Purpose A(:,j) is the jth column of A. A(i,:) is the ith row of A. A(:,:) is the equivalent two-dimensional array. For matrices this is the same as A. A(j:k) is A(j), A(j+1),...,A(k). A(:,j:k) is A(:,j), A(:,j+1),...,A(:,k). A(:,:,k) is the kth page of three-dimensional array A. A(i,j,k,:) is a vector in four-dimensional array A. The vector includes A(i,j,k,1), A(i,j,k,2), A(i,j,k,3), and so on. A(:) is all the elements of A, regarded as a single column. On the left side of an assignment statement, A(:) fills A, preserving its shape from before. In this case, the right side must contain the same number of elements as A. Example Create a script file and type the following code in it: A = [1 2 3 4; 4 5 6 7; 7 8 9 10] A(:,2) % second column of A A(:,2:3) % second and third column of A A(2:3,2:3) % second and third rows and second and third columns 117 When you run the file, it displays the following result: A= 1234 4567 7 8 ans = 2 5 8 ans = 23 56 89 ans = 56 89 9 10 118 15. NUMBERS MATLAB supports various numeric classes that include signed and unsigned integers and single-precision and double-precision floating-point numbers. By default, MATLAB stores all numeric values as double-precision floating point numbers. You can choose to store any number or array of numbers as integers or as single- precision numbers. All numeric types support basic array operations and mathematical operations. Conversion to Various Numeric Data Types MATLAB provides the following functions to convert to various numeric data types: Function Purpose Double Converts to double precision number Single Converts to single precision number int8 Converts to 8-bit signed integer int16 Converts to 16-bit signed integer int32 Converts to 32-bit signed integer int64 Converts to 64-bit signed integer uint8 Converts to 8-bit unsigned integer uint16 Converts to 16-bit unsigned integer uint32 Converts to 32-bit unsigned integer uint64 Converts to 64-bit unsigned integer 119 Example Create a script file and type the following code: x = single([5.32 3.47 6.28]) .* 7.5 x = double([5.32 3.47 6.28]) .* 7.5 x = int8([5.32 3.47 6.28]) .* 7.5 x = int16([5.32 3.47 6.28]) .* 7.5 x = int32([5.32 3.47 6.28]) .* 7.5 x = int64([5.32 3.47 6.28]) .* 7.5 When you run the file, it shows the following result: x= 39.9000 26.0250 47.1000 x= 39.9000 26.0250 47.1000 x= 38 23 45 x= 38 23 45 x= x= 38 23 45 38 23 45 Example Let us extend the previous example a little more. Create a script file and type the following code: 120 x = int32([5.32 3.47 6.28]) .* 7.5 x = int64([5.32 3.47 6.28]) .* 7.5 x = num2cell(x) When you run the file, it shows the following result: x= x= 38 23 45 38 23 45 x= [38] [23] [45] Smallest and Largest Integers The functions intmax() and intmin() return the maximum and minimum values that can be represented with all types of integer numbers. Both the functions take the integer data type as the argument, for example, intmax(int8) or intmin(int64) and return the maximum and minimum values that you can represent with the integer data type. Example The following example illustrates how to obtain the smallest and largest values of integers. Create a script file and write the following code in it: % displaying the smallest and largest signed integer data str = 'The range for int8 is:\n\t%d to %d '; sprintf(str, intmin('int8'), intmax('int8')) str = 'The range for int16 is:\n\t%d to %d '; sprintf(str, intmin('int16'), intmax('int16')) str = 'The range for int32 is:\n\t%d to %d '; sprintf(str, intmin('int32'), intmax('int32')) str = 'The range for int64 is:\n\t%d to %d '; 121 sprintf(str, intmin('int64'), intmax('int64')) % displaying the smallest and largest unsigned integer data str = 'The range for uint8 is:\n\t%d to %d '; sprintf(str, intmin('uint8'), intmax('uint8')) str = 'The range for uint16 is:\n\t%d to %d '; sprintf(str, intmin('uint16'), intmax('uint16')) str = 'The range for uint32 is:\n\t%d to %d '; sprintf(str, intmin('uint32'), intmax('uint32')) str = 'The range for uint64 is:\n\t%d to %d '; sprintf(str, intmin('uint64'), intmax('uint64')) When you run the file, it shows the following result: ans = The range for int8 is: -128 to 127 ans = The range for int16 is: -32768 to 32767 ans = The range for int32 is: -2147483648 to 2147483647 ans = The range for int64 is: -9223372036854775808 to 9223372036854775807 ans = The range for uint8 is: 122 0 to 255 ans = The range for uint16 is: 0 to 65535 ans = The range for uint32 is: 0 to 4294967295 ans = The range for uint64 is: 0 to 1.844674e+19 Smallest and Largest Floating Point Numbers The functions realmax() and realmin() return the maximum and minimum values that can be represented with floating point numbers. Both the functions when called with the argument 'single', return the maximum and minimum values that you can represent with the single-precision data type and when called with the argument 'double', return the maximum and minimum values that you can represent with the double-precision data type. Example The following example illustrates how to obtain the smallest and largest floating point numbers. Create a script file and write the following code in it: % displaying the smallest and largest single-precision % floating point number str = 'The range for single is:\n\t%g to %g and\n\t %g to %g'; sprintf(str, -realmax('single'), -realmin('single'), ... realmin('single'), realmax('single')) % displaying the smallest and largest double-precision % floating point number 123 str = 'The range for double is:\n\t%g to %g and\n\t %g to %g'; sprintf(str, -realmax('double'), -realmin('double'), ... realmin('double'), realmax('double')) When you run the file, it displays the following result: ans = The range for single is: -3.40282e+38 to -1.17549e-38 and 1.17549e-38to 3.40282e+38 ans = The range for double is: -1.79769e+308 to -2.22507e-308 and 2.22507e-308to 1.79769e+308 124 16. STRINGS Creating a character string is quite simple in MATLAB. In fact, we have used it many times. For example, you type the following in the command prompt: MATLAB will execute the above statement and return the following result: MATLAB considers all variables as arrays, and strings are considered as character arrays. Let us use the whos command to check the variable created above: MATLAB will execute the above statement and return the following result: Interestingly, you can use numeric conversion functions like uint8 or uint16 to convert the characters in the string to their numeric codes. The char function converts the integer vector back to characters: my_string = 'Tutorial''s Point' my_string = Tutorial's Point whos Name Size Bytes Class Attributes my_string 1x16 32 char Example Create a script file and type the following code into it: my_string = 'Tutorial''s Point'; str_ascii = uint8(my_string) % 8-bit ascii values str_back_to_char= char(str_ascii) str_16bit = uint16(my_string) % 16-bit ascii values str_back_to_char = char(str_16bit) 125 When you run the file, it displays the following result: str_ascii = Columns 1 through 14 84117116111114105 97108 39115 32 80111105 Columns 15 through 16 110 116 str_back_to_char = Tutorial's Point str_16bit = Columns 1 through 10 84 117 116 111 114 105 97 108 39 115 Columns 11 through 16 32 80 111 105 110 116 str_back_to_char = Tutorial's Point Rectangular Character Array The strings we have discussed so far are one-dimensional character arrays; however, we need to store more than that. We need to store more dimensional textual data in our program. This is achieved by creating rectangular character arrays. Simplest way of creating a rectangular character array is by concatenating two or more one-dimensional character arrays, either vertically or horizontally as required. You can combine strings vertically in either of the following ways: Using the MATLAB concatenation operator [] and separating each row with a semicolon (;).Please note that in this method each row must contain the same number of characters. For strings with different lengths, you should pad with space characters as needed. 126 Using the char function. If the strings are of different lengths, char pads the shorter strings with trailing blanks so that each row has the same number of characters. Example Create a script file and type the following code into it: doc_profile = ['Zara Ali '; ... 'Sr. Surgeon '; ... 'R N Tagore Cardiology Research Center'] doc_profile = char('Zara Ali', 'Sr. Surgeon', ... 'RN Tagore Cardiology Research Center') When you run the file, it displays the following result: doc_profile = Zara Ali Sr. Surgeon R N Tagore Cardiology Research Center doc_profile = Zara Ali Sr. Surgeon RN Tagore Cardiology Research Center You can combine strings horizontally in either of the following ways: Using the MATLAB concatenation operator, [] and separating the input strings with a comma or a space. This method preserves any trailing spaces in the input arrays. Using the string concatenation function, strcat. This method removes trailing spaces in the inputs Example Create a script file and type the following code into it: name = 'Zara Ali '; position = 'Sr. Surgeon '; 127 worksAt = 'R N Tagore Cardiology Research Center'; profile = [name ', ' position ', ' worksAt] profile = strcat(name, ', ', position, ', ', worksAt) When you run the file, it displays the following result: profile = Zara Ali , Sr. Surgeon , R N Tagore Cardiology Research Center profile = Zara Ali,Sr. Surgeon,R N Tagore Cardiology Research Center Combining Strings into a Cell Array From our previous discussion, it is clear that combining strings with different lengths could be a pain as all strings in the array has to be of the same length. We have used blank spaces at the end of strings to equalize their length. However, a more efficient way to combine the strings is to convert the resulting array into a cell array. MATLAB cell array can hold different sizes and types of data in an array. Cell arrays provide a more flexible way to store strings of varying length. The cellstr function converts a character array into a cell array of strings. Example Create a script file and type the following code into it: name = 'Zara Ali '; position = 'Sr. Surgeon '; worksAt = 'R N Tagore Cardiology Research Center'; profile = char(name, position, worksAt); profile = cellstr(profile); disp(profile) When you run the file, it displays the following result: 128 'Zara Ali' 'Sr. Surgeon' 'R N Tagore Cardiology Research Center' String Functions in MATLAB MATLAB provides numerous string functions creating, combining, parsing, comparing and manipulating strings. Following table provides brief description of the string functions in MATLAB: Function Purpose Functions for storing text in character arrays, combine character arrays, etc. blanks Create string of blank characters cellstr Create cell array of strings from character array char Convert to character array (string) iscellstr Determine whether input is cell array of strings ischar Determine whether item is character array sprintf Format data into string strcat Concatenate strings horizontally strjoin Join strings in cell array into single string Functions for identifying parts of strings, find and replace substrings ischar Determine whether item is character array isletter Array elements that are alphabetic letters 129 isspace Array elements that are space characters isstrprop Determine whether string is of specified category sscanf Read formatted data from string strfind Find one string within another strrep Find and replace substring strsplit Split string at specified delimiter strtok Selected parts of string validatestring Check validity of text string symvar Determine symbolic variables in expression regexp Match regular expression (case sensitive) regexpi Match regular expression (case insensitive) regexprep Replace string using regular expression regexptranslate Translate string into regular expression Functions for string comparison strcmp Compare strings (case sensitive) strcmpi Compare strings (case insensitive) strncmp Compare first n characters of strings (case sensitive) strncmpi Compare first n characters of strings (case insensitive) 130 Functions for changing string to upper- or lowercase, creating or removing white space deblank Strip trailing blanks from end of string strtrim Remove leading and trailing white space from string lower Convert string to lowercase upper Convert string to uppercase strjust Justify character array Examples The following examples illustrate some of the above-mentioned string functions: Formatting Strings Create a script file and type the following code into it: When you run the file, it displays the following result: A = pi*1000*ones(1,5); sprintf(' %f \n %.2f \n %+.2f \n %12.2f \n %012.2f \n', A) ans = 3141.592654 3141.59 +3141.59 3141.59 000003141.59 Joining Strings Create a script file and type the following code into it: %cell array of strings 131 str_array = {'red','blue','green', 'yellow', 'orange'}; % Join strings in cell array into single string str1 = strjoin("-", str_array) str2 = strjoin(",", str_array) When you run the file, it displays the following result: str1 = red blue green yellow orange str2 = red , blue , green , yellow , orange Finding and Replacing Strings Create a script file and type the following code into it: students = {'Zara Ali', 'Neha Bhatnagar', ... 'Monica Malik', 'Madhu Gautam', ... 'Madhu Sharma', 'Bhawna Sharma',... 'Nuha Ali', 'Reva Dutta', ... 'Sunaina Ali', 'Sofia Kabir'}; % The strrep function searches and replaces sub-string. new_student = strrep(students(8), 'Reva', 'Poulomi') % Display first names first_names = strtok(students) When you run the file, it displays the following result: new_student = 132 'Poulomi Dutta' first_names = Columns 1 through 6 'Zara' 'Neha' 'Monica' 'Madhu' 'Madhu' 'Bhawna' Columns 7 through 10 'Nuha' 'Reva' 'Sunaina' 'Sofia' Comparing Strings Create a script file and type the following code into it: str1 = 'This is test' str2 = 'This is text' if (strcmp(str1, str2)) sprintf('%s and %s are equal', str1, str2) else sprintf('%s and %s are not equal', str1, str2) end When you run the file, it displays the following result: str1 = This is test str2 = This is text ans = This is test and This is text are not equal 133 17. FUNCTIONS A function is a group of statements that together perform a task. In MATLAB, functions are defined in separate files. The name of the file and of the function should be the same. Functions operate on variables within their own workspace, which is also called the local workspace, separate from the workspace you access at the MATLAB command prompt which is called the base workspace. Functions can accept more than one input arguments and may return more than one output arguments Syntax of a function statement is: Example The following function named mymax should be written in a file named mymax.m. It takes five numbers as argument and returns the maximum of the numbers. Create a function file, named mymax.m and type the following code in it: function [out1,out2, ..., outN] = myfun(in1,in2,in3, ..., inN) function max = mymax(n1, n2, n3, n4, n5) %This function calculates the maximum of the % five numbers given as input max = n1; if(n2 > max)
max = n2; end
if(n3 > max) max = n3;
end
if(n4 > max)
max = n4;
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end
if(n5 > max)
max = n5; end
The first line of a function starts with the keyword function. It gives the name of the function and order of arguments. In our example, the mymax function has five input arguments and one output argument.
The comment lines that come right after the function statement provide the help text. These lines are printed when you type:
MATLAB will execute the above statement and return the following result:
You can call the function as:
MATLAB will execute the above statement and return the following result:
Anonymous Functions
An anonymous function is like an inline function in traditional programming languages, defined within a single MATLAB statement. It consists of a single MATLAB expression and any number of input and output arguments.
You can define an anonymous function right at the MATLAB command line or within a function or script.
This way you can create simple functions without having to create a file for them. The syntax for creating an anonymous function from an expression is
135
help mymax
This function calculates the maximum of the five numbers given as input
mymax(34, 78, 89, 23, 11)
ans = 89

f = @(arglist)expression
Example
In this example, we will write an anonymous function named power, which will take two numbers as input and return first number raised to the power of the second number.
Create a script file and type the following code in it:
power = @(x, n) x.^n; result1 = power(7, 3) result2 = power(49, 0.5) result3 = power(10, -10) result4 = power (4.5, 1.5)
When you run the file, it displays:
result1 = 343 result2 =
7 result3 =
1.0000e-10 result4 =
9.5459
Primary and Sub-Functions
Any function other than an anonymous function must be defined within a file. Each function file contains a required primary function that appears first and any number of optional sub-functions that comes after the primary function and used by it.
Primary functions can be called from outside of the file that defines them, either from command line or from other functions, but sub-functions cannot be called from command line or other functions, outside the function file.
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Sub-functions are visible only to the primary function and other sub-functions within the function file that defines them.
Example
Let us write a function named quadratic that would calculate the roots of a quadratic equation. The function would take three inputs, the quadratic co- efficient, the linear co-efficient and the constant term. It would return the roots.
The function file quadratic.m will contain the primary function quadratic and the sub-function disc, which calculates the discriminant.
Create a function file quadratic.m and type the following code in it:
function [x1,x2] = quadratic(a,b,c) %this function returns the roots of % a quadratic equation.
% It takes 3 input arguments
% which are the co-efficients of x2, x and the %constant term
% It returns the roots
d = disc(a,b,c);
x1 = (-b + d) / (2*a); x2 = (-b – d) / (2*a); end % end of quadratic
function dis = disc(a,b,c) %function calculates the discriminant dis = sqrt(b^2 – 4*a*c);
end % end of sub-function
You can call the above function from command prompt as:
quadratic(2,4,-4)
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MATLAB will execute the above statement and will give the following result:
ans = 0.7321
Nested Functions
You can define functions within the body of another function. These are called nested functions. A nested function contains any or all of the components of any other function.
Nested functions are defined within the scope of another function and they share access to the containing function’s workspace.
A nested function follows the below syntax:
function x = A(p1, p2) …
B(p2)
function y = B(p3) …
end
… end
Example
Let us rewrite the function quadratic, from previous example, however, this time the disc function will be a nested function.
Create a function file quadratic2.m and type the following code in it:
function [x1,x2] = quadratic2(a,b,c) functiondisc %nestedfunction
d = sqrt(b^2 – 4*a*c);
end % end of function disc
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disc;
x1 = (-b + d) / (2*a);
x2 = (-b – d) / (2*a);
end % end of function quadratic2
You can call the above function from command prompt as:
MATLAB will execute the above statement and return the following result:
Private Functions
A private function is a primary function that is visible only to a limited group of other functions. If you do not want to expose the implementation of a function(s), you can create them as private functions.
Private functions reside in subfolders with the special name private. They are visible only to functions in the parent folder.
Example
Let us rewrite the quadratic function. This time, however, the disc function calculating the discriminant, will be a private function.
Create a subfolder named private in working directory. Store the following function file disc.m in it:
quadratic2(2,4,-4)
ans = 0.7321
function dis = disc(a,b,c) %function calculates the discriminant dis = sqrt(b^2 – 4*a*c);
end % end of sub-function
Create a function quadratic3.m in your working directory and type the following code in it:
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function [x1,x2] = quadratic3(a,b,c) %this function returns the roots of % a quadratic equation.
% It takes 3 input arguments
% which are the co-efficients of x2, x and the %constant term
% It returns the roots
d = disc(a,b,c);
x1 = (-b + d) / (2*a); x2 = (-b – d) / (2*a); end % end of quadratic3
You can call the above function from command prompt as:
MATLAB will execute the above statement and return the following result:
Global Variables
Global variables can be shared by more than one function. For this, you need to declare the variable as global in all the functions.
If you want to access that variable from the base workspace, then declare the variable at the command line.
The global declaration must occur before the variable is actually used in a function. It is a good practice to use capital letters for the names of global variables to distinguish them from other variables.
Example
Let us create a function file named average.m and type the following code in it: 140
quadratic3(2,4,-4)
ans = 0.7321

function avg = average(nums) global TOTAL
avg = sum(nums)/TOTAL;
end
Create a script file and type the following code in it:
global TOTAL;
TOTAL = 10;
n = [34, 45, 25, 45, 33, 19, 40, 34, 38, 42]; av = average(n)
When you run the file, it will display the following result:
av = 35.5000
141

18. DATA IMPORT
Importing data in MATLAB means loading data from an external file. The importdata function allows loading various data files of different formats. It has the following five forms:
S.N.
Function and Description
1
A = importdata(filename)
Loads data into array A from the file denoted by filename.
2
A = importdata(‘-pastespecial’)
Loads data from the system clipboard rather than from a file.
3
A = importdata(___, delimiterIn)
Interprets delimiterIn as the column separator in ASCII file, filename, or the clipboard data. You can use delimiterIn with any of the input arguments in the above syntaxes.
4
A = importdata(___, delimiterIn, headerlinesIn)
Loads data from ASCII file, filename, or the clipboard, reading numeric data starting from line headerlinesIn+1.
5
[A, delimiterOut, headerlinesOut] = importdata(___)
dditionally returns the detected delimiter character for the input ASCII file indelimiterOut and the detected number of header lines in headerlinesOut, using any of the input arguments in the previous syntaxes.
By default, Octave does not have support for importdata() function, so you will have to search and install this package to make following examples work with your Octave installation.
Example 1
Let us load and display an image file. Create a script file and type the following code in it:
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filename = ‘smile.jpg’; A = importdata(filename); image(A);
When you run the file, MATLAB displays the image file. However, you must store it in the current directory.
Example 2
In this example, we import a text file and specify Delimiter and Column Header. Let us create a space-delimited ASCII file with column headers, named weeklydata.txt.
Our text file weeklydata.txt looks like this:
SunDay MonDay TuesDay WednesDay ThursDay FriDay SaturdDay 95.01 76.21 61.54 40.57 55.79 70.28 81.53
73.11 45.65 79.19 93.55 75.29 69.87 74.68
60.68 41.85 92.18 91.69 81.32 90.38 74.51
48.60 82.14 73.82 41.03 0.99 67.22 93.18 89.13 44.47 57.63 89.36 13.89 19.88 46.60
Create a script file and type the following code in it:
filename = ‘weeklydata.txt’; delimiterIn = ‘ ‘;
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headerlinesIn = 1;
A = importdata(filename,delimiterIn,headerlinesIn); % View data
for k = [1:7]
disp(A.colheaders{1, k}) disp(A.data(:, k)) disp(‘ ‘)
end
When you run the file, it displays the following result:
SunDay
95.0100
73.1100
60.6800
48.6000
89.1300
MonDay
76.2100
45.6500
41.8500
82.1400
44.4700
TuesDay
61.5400
79.1900
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92.1800
73.8200
57.6300
WednesDay
40.5700
93.5500
91.6900
41.0300
89.3600
ThursDay
55.7900
75.2900
81.3200
0.9900
13.8900
FriDay
70.2800
69.8700
90.3800
67.2200
19.8800
SatureDay
81.5300
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74.6800
74.5100
93.1800
46.6000
Example 3
In this example, let us import data from clipboard. Copy the following lines to the clipboard:
Mathematics is simple
Create a script file and type the following code:
When you run the file, it displays the following result:
Low-Level File I/O
The importdata function is a high-level function. The low-level file I/O functions in MATLAB allow the most control over reading or writing data to a file. However, these functions need more detailed information about your file to work efficiently.
MATLAB provides the following functions for read and write operations at the byte or character level:
A = importdata(‘-pastespecial’)
A=
‘Mathematics is simple’
Function
Description
fclose
Close one or all open files
feof
Test for end-of-file
ferror
Information about file I/O errors
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fgetl
Read line from file, removing newline characters
fgets
Read line from file, keeping newline characters
fopen
Open file, or obtain information about open files
fprintf
Write data to text file
fread
Read data from binary file
frewind
Move file position indicator to beginning of open file
fscanf
Read data from text file
fseek
Move to specified position in file
ftell
Position in open file
fwrite
Write data to binary file
Import Text Data Files with Low-Level I/O
MATLAB provides the following functions for low-level import of text data files: The fscanf function reads formatted data in a text or ASCII file.
The fgetl and fgets functions read one line of a file at a time, where a newline character separates each line.
The fread function reads a stream of data at the byte or bit level. Example
We have a text data file ‘myfile.txt’ saved in our working directory. The file stores rainfall data for three months; June, July and August for the year 2012.
The data in myfile.txt contains repeated sets of time, month and rainfall measurements at five places. The header data stores the number of months M; so we have M sets of measurements.
The file looks like this:
Rainfall Data
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Months: June, July, August
M=3
12:00:00
June-2012
17.21 28.52 39.78 16.55 23.67 19.15 0.35 17.57 NaN 12.01 17.92 28.49 17.40 17.06 11.09 9.59 9.33 NaN 0.31 0.23
10.46 13.17 NaN 20.97 19.50 17.65 18.23 10.34 17.95 09:10:02
July-2012
12.76 16.94 14.38 20.46 23.17 NaN 30.97 49.50 47.65 18.23 30.34 27.95 30.46 33.17 NaN 30.97 49.50 47.65 28.67 30.34 27.95 15:03:40 August-2012
17.09 16.55 19.59 17.54 11.45 13.48 NaN 21.19 25.85
14.89 19.33 14.45 14.00 16.46 19.34
11.86 16.89 24.89 19.33
24.45 34.00
16.46 19.34 34.89 29.33 24.45 34.00 36.46 29.34
17.25 19.22
22.55 24.01 25.05 27.21
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26.79 24.98 12.23 16.99 18.67 17.54 11.45 13.48 22.55 24.01 NaN 21.19 25.85 25.05 27.21 26.79 24.98 12.23 16.99 18.67
We will import data from this file and display this data. Take the following steps: Open the file with fopen function and get the file identifier.
Describe the data in the file with format specifiers, such as ‘%s’ for a string, ‘%d’ for an integer, or ‘%f’ for a floating-point number.
To skip literal characters in the file, include them in the format description. To skip a data field, use an asterisk (‘*’) in the specifier.
For example, to read the headers and return the single value for M, we write:
By default, fscanf reads data according to our format description until it does not find any match for the data, or it reaches the end of the file. Here we will use for loop for reading 3 sets of data and each time, it will read 7 rows and 5 columns.
We will create a structure named mydata in the workspace to store data read from the file. This structure has three fields – time, month, and raindata array.
M = fscanf(fid, ‘%*s %*s\n%*s %*s %*s %*s\nM=%d\n\n’, 1);
Create a script file and type the following code in it:
filename = ‘/data/myfile.txt’; rows = 7;
cols = 5;
% open the file
fid = fopen(filename);
% read the file headers, find M (number of months)
M = fscanf(fid, ‘%*s %*s\n%*s %*s %*s %*s\nM=%d\n\n’, 1);
% read each set of measurements
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for n = 1:M
mydata(n).time = fscanf(fid, ‘%s’, 1); mydata(n).month = fscanf(fid, ‘%s’, 1);
% fscanf fills the array in column order, % so transpose the results mydata(n).raindata = …
fscanf(fid, ‘%f’, [rows, cols]); end
for n = 1:M
disp(mydata(n).time), disp(mydata(n).month) disp(mydata(n).raindata)
end
% close the file
fclose(fid);
When you run the file, it displays the following result:
12:00:00
June-2012
17.2100 17.5700 11.0900 13.1700 14.4500 28.5200 NaN 9.5900 NaN 14.0000
39.7800 12.0100 16.5500 17.9200 23.6700 28.4900 19.1500 17.4000
0.3500 17.0600
9.3300 14.8900 18.2300 NaN 19.3300 10.3400
0.3100 20.9700 17.9500
0.2300 19.5000 16.4600 10.4600 17.6500 19.3400
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09:10:02
July-2012
12.7600 NaN 34.0000 33.1700 24.4500
16.9400 24.8900 18.2300 14.3800 19.3300 30.3400 11.8600 30.9700 27.9500 16.8900 49.5000 16.4600 20.4600 47.6500 19.3400 23.1700 24.4500 30.4600
15:03:40
August-2012
NaN 34.0000 34.8900 28.6700 29.3300 30.3400 30.9700 27.9500 49.5000 36.4600 47.6500 29.3400
17.0900 13.4800 27.2100
16.5500 22.5500 26.7900
19.5900 24.0100 24.9800
17.2500 NaN 12.2300 24.0100 24.9800
11.4500 25.0500 13.4800 27.2100 22.5500 26.7900
19.2200 21.1900 16.9900 17.5400 25.8500 18.6700 11.4500 25.0500 17.5400
NaN 12.2300 21.1900 16.9900 25.8500 18.6700
151

19. DATA OUTPUT
Data export in MATLAB means to write into files. MATLAB allows you to use your data in another application that reads ASCII files. For this, MATLAB provides several data export options.
You can create the following type of files:
Rectangular, delimited ASCII data file from an array.
Diary (or log) file of keystrokes and the resulting text output.
Specialized ASCII file using low-level functions such as fprintf.
MEX-file to access your C/C++ or FORTRAN routine that writes to a particular text file format.
Apart from this, you can also export data to spreadsheets.
There are two ways to export a numeric array as a delimited ASCII data file:
Using the save function and specifying the -ASCII qualifier Using the dlmwrite function
Syntax for using the save function is:
where, my_data.out is the delimited ASCII data file created, num_array is a numeric array and �ASCII is the specifier.
Syntax for using the dlmwrite function is:
where, my_data.out is the delimited ASCII data file created, num_array is a numeric array and dlm_char is the delimiter character.
Example
The following example demonstrates the concept. Create a script file and type the following code:
152
save my_data.out num_array -ASCII
dlmwrite(‘my_data.out’, num_array, ‘dlm_char’)
num_array = [ 1 2 3 4 ; 4 5 6 7; 7 8 9 0]; save array_data1.out num_array -ASCII; type array_data1.out

dlmwrite(‘array_data2.out’, num_array, ‘ ‘); type array_data2.out
When you run the file, it displays the following result:
1.0000000e+00 2.0000000e+00 3.0000000e+00 4.0000000e+00 4.0000000e+00 5.0000000e+00 6.0000000e+00 7.0000000e+00 7.0000000e+00 8.0000000e+00 9.0000000e+00 0.0000000e+00
1234 4567 7890
Please note that the save -ascii command and the dlmwrite function does not work with cell arrays as input. To create a delimited ASCII file from the contents of a cell array, you can
Either, convert the cell array to a matrix using the cell2mat function Or export the cell array using low-level file I/O functions.
If you use the save function to write a character array to an ASCII file, it writes the ASCII equivalent of the characters to the file.
For example, let us write the word ‘hello’ to a file:
MATLAB executes the above statements and displays the following result which is the characters of the string ‘hello’ in 8-digit ASCII format.
153
h = ‘hello’;
save textdata.out h -ascii
type textdata.out
1.0400000e+02 1.0100000e+02 1.0800000e+02 1.0800000e+02 1.1100000e+02

Writing to Diary Files
Diary files are activity logs of your MATLAB session. The diary function creates an exact copy of your session in a disk file, excluding graphics.
To turn on the diary function, type:
Optionally, you can give the name of the log file, say:
To turn off the diary function:
You can open the diary file in a text editor.
Exporting Data to Text Data Files with Low-Level I/O
So far, we have exported numeric arrays. However, you may need to create other text files, including combinations of numeric and character data, nonrectangular output files, or files with non-ASCII encoding schemes. For these purposes, MATLAB provides the low-level fprintf function.
As in low-level I/O file activities, before exporting, you need to open or create a file with the fopen function and get the file identifier. By default, fopen opens a file for read-only access. You should specify the permission to write or append, such as ‘w’ or ‘a’.
diary
diary logdata.out
diary off
After processing the file, you need to close it with fclose(fid) function. The following example demonstrates the concept:
Example
Create a script file and type the following code in it:
% create a matrix y, with two rows
x = 0:10:100;
y = [x; log(x)];
154

% open a file for writing
fid = fopen(‘logtable.txt’, ‘w’);
% Table Header
fprintf(fid, ‘Log Function\n\n’);
% print values in column order
% two values appear on each row of the file fprintf(fid, ‘%f %f\n’, y); fclose(fid);
% display the file created
type logtable.txt
When you run the file, it displays the following result:
Log Function
0.000000 -Inf
10.000000 2.302585
20.000000 2.995732
30.000000 3.401197
40.000000 3.688879
50.000000 3.912023
60.000000 4.094345
70.000000 4.248495
80.000000 4.382027
90.000000 4.499810
100.000000 4.605170
155

20. PLOTTING
To plot the graph of a function, you need to take the following steps:
Define x, by specifying the range of values for the variable x, for which the function is to be plotted
Define the function, y = f(x)
Call the plot command, as plot(x, y)
Following example would demonstrate the concept. Let us plot the simple function y = x for the range of values for x from 0 to 100, with an increment of 5.
Create a script file and type the following code:
When you run the file, MATLAB displays the following plot:
Let us take one more example to plot the function y = x2. In this example, we will draw two graphs with the same function, but in second time, we will reduce the value of increment. Please note that as we decrease the increment, the graph becomes smoother.
156
x = [0:5:100];
y = x;
plot(x, y)

Create a script file and type the following code:
x = [1 2 3 4 5 6 7 8 9 10]; x = [-100:20:100];
y = x.^2;
plot(x, y)
When you run the file, MATLAB displays the following plot:
Change the code file a little, reduce the increment to 5:
x = [-100:5:100]; y = x.^2;
plot(x, y)
157

MATLAB draws a smoother graph:
Adding Title, Labels, Grid Lines, and Scaling on the Graph
MATLAB allows you to add title, labels along the x-axis and y-axis, grid lines and also to adjust the axes to spruce up the graph.
The xlabel and ylabel commands generate labels along x-axis and y-axis.
The title command allows you to put a title on the graph.
The grid on command allows you to put the grid lines on the graph.
The axis equal command allows generating the plot with the same scale factors and the spaces on both axes.
The axis square command generates a square plot.
Example
Create a script file and type the following code:
x = [0:0.01:10];
y = sin(x);
plot(x, y), xlabel(‘x’), ylabel(‘Sin(x)’), title(‘Sin(x) Graph’), grid on, axis equal
158

MATLAB generates the following graph:
Drawing Multiple Functions on the Same Graph
You can draw multiple graphs on the same plot. The following example demonstrates the concept:
Example
Create a script file and type the following code:
x = [0 : 0.01: 10];
y = sin(x);
g = cos(x);
plot(x, y, x, g, ‘.-‘), legend(‘Sin(x)’, ‘Cos(x)’)
159

MATLAB generates the following graph:
Setting Colors on Graph
MATLAB provides eight basic color options for drawing graphs. The following table shows the colors and their codes:
Code
Color
w
White
k
Black
b
Blue
r
Red
c
Cyan
g
Green
m
Magenta
y
Yellow
160

Example
Let us draw the graph of two polynomials
f(x) = 3×4 + 2×3+ 7×2 + 2x + 9 and
g(x) = 5×3 + 9x + 2
Create a script file and type the following code:
x = [-10 : 0.01: 10];
y = 3*x.^4 + 2 * x.^3 + 7 * x.^2 + 2 * x + 9; g = 5 * x.^3 + 9 * x + 2;
plot(x, y, ‘r’, x, g, ‘g’)
When you run the file, MATLAB generates the following graph:
Setting Axis Scales
The axis command allows you to set the axis scales. You can provide minimum and maximum values for x and y axes using the axis command in the following way:
161
axis ( [xmin xmax ymin ymax] )

The following example shows this:
Example
Create a script file and type the following code:
When you run the file, MATLAB generates the following graph:
Generating Sub-Plots
When you create an array of plots in the same figure, each of these plots is called a subplot. The subplot command is used for creating subplots.
Syntax for the command is:
where, m and n are the number of rows and columns of the plot array and p specifies where to put a particular plot.
Each plot created with the subplot command can have its own characteristics. Following example demonstrates the concept:
162
x = [0 : 0.01: 10];
y = exp(-x).* sin(2*x + 3); plot(x, y), axis([0 10 -1 1])
subplot(m, n, p)

Example
Let us generate two plots:
y = e−1.5xsin(10x)
y = e−2xsin(10x)
Create a script file and type the following code:
x = [0:0.01:5];
y = exp(-1.5*x).*sin(10*x);
subplot(1,2,1)
plot(x,y), xlabel(‘x’),ylabel(‘exp(–1.5x)*sin(10x)’),axis([0 5 -1 1]) y = exp(-2*x).*sin(10*x);
subplot(1,2,2) plot(x,y),xlabel(‘x’),ylabel(‘exp(–2x)*sin(10x)’),axis([0 5 -1 1])
When you run the file, MATLAB generates the following graph:
163

21. GRAPHICS
This chapter will continue exploring the plotting and graphics capabilities of MATLAB. We will discuss:
Drawing bar charts Drawing contours Three dimensional plots
Drawing Bar Charts
The bar command draws a two dimensional bar chart. Let us take up an example to demonstrate the idea.
Example
Let us have an imaginary classroom with 10 students. We know the percent of marks obtained by these students are 75, 58, 90, 87, 50, 85, 92, 75, 60 and 95. We will draw the bar chart for this data.
Create a script file and type the following code:
x = [1:10];
y = [75, 58, 90, 87, 50, 85, 92, 75, 60, 95]; bar(x,y), xlabel(‘Student’),ylabel(‘Score’), title(‘First Sem:’)
print -deps graph.eps
164

When you run the file, MATLAB displays the following bar chart:
Drawing Contours
A contour line of a function of two variables is a curve along which the function has a constant value. Contour lines are used for creating contour maps by joining points of equal elevation above a given level, such as mean sea level.
MATLAB provides a contour function for drawing contour maps. Example
Let us generate a contour map that shows the contour lines for a given function g = f(x, y). This function has two variables. So, we will have to generate two independent variables, i.e., two data sets x and y. This is done by calling the meshgrid command.
The meshgrid command is used for generating a matrix of elements that give the range over x and y along with the specification of increment in each case.
Let us plot our function g = f(x, y), where −5 ≤ x ≤ 5, −3 ≤ y ≤ 3. Let us take an increment of 0.1 for both the values. The variables are set as:
[x,y] = meshgrid(–5:0.1:5, –3:0.1:3);
Lastly, we need to assign the function. Let our function be: x2 + y2 Create a script file and type the following code:
[x,y] = meshgrid(-5:0.1:5,-3:0.1:3); %independent variables
165

g = x.^2 + y.^2; % our function contour(x,y,g) % call the contour function print -deps graph.eps
When you run the file, MATLAB displays the following contour map:
Let us modify the code a little to spruce up the map:
[x,y] = meshgrid(-5:0.1:5,-3:0.1:3); %independent variables
g = x.^2 + y.^2; % our function
[C, h] = contour(x,y,g); % call the contour function set(h,’ShowText’,’on’,’TextStep’,get(h,’LevelStep’)*2)
print -deps graph.eps
166

When you run the file, MATLAB displays the following contour map:
Three-Dimensional Plots
Three-dimensional plots basically display a surface defined by a function in two variables, g = f (x,y).
As before, to define g, we first create a set of (x,y) points over the domain of the function using the meshgrid command. Next, we assign the function itself. Finally, we use the surf command to create a surface plot.
The following example demonstrates the concept:
Example
Let us create a 3D surface map for the function g = xe-(x2 + y2) Create a script file and type the following code:
[x,y] = meshgrid(-2:.2:2);
g = x .* exp(-x.^2 – y.^2);
surf(x, y, g)
print -deps graph.eps
167

When you run the file, MATLAB displays the following 3-D map:
You can also use the mesh command to generate a three-dimensional surface. However, the surf command displays both the connecting lines and the faces of the surface in color, whereas, the mesh command creates a wireframe surface with colored lines connecting the defining points.
168

22. ALGEBRA
So far, we have seen that all the examples work in MATLAB as well as its GNU, alternatively called Octave. But for solving basic algebraic equations, both MATLAB and Octave are little different, so we will try to cover MATLAB and Octave in separate sections.
We will also discuss factorizing and simplification of algebraic expressions.
Solving Basic Algebraic Equations in MATLAB
The solve function is used for solving algebraic equations. In its simplest form, the solve function takes the equation enclosed in quotes as an argument.
For example, let us solve for x in the equation x-5 = 0
MATLAB will execute the above statement and return the following result:
You can also call the solve function as:
MATLAB will execute the above statement and return the following result:
You may even not include the right hand side of the equation:
MATLAB will execute the above statement and return the following result:
solve(‘x-5=0’)
ans = 5
y = solve(‘x-5 = 0’)
y= 5
solve(‘x-5’)
ans =
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5
If the equation involves multiple symbols, then MATLAB by default assumes that you are solving for x, however, the solve command has another form:
where, you can also mention the variable.
For example, let us solve the equation v – u – 3t2 = 0, for v. In this case, we should write:
MATLAB will execute the above statement and return the following result:
Solving Basic Algebraic Equations in Octave
The roots command is used for solving algebraic equations in Octave and you can write above examples as follows:
For example, let us solve for x in the equation x-5 = 0
Octave will execute the above statement and return the following result:
You can also call the solve function as:
Octave will execute the above statement and return the following result:
170
solve(equation, variable)
solve(‘v-u-3*t^2=0’, ‘v’)
ans = 3*t^2 + u
roots([1, -5])
ans = 5
y = roots([1, -5])

y= 5
Solving Quadratic Equations in MATLAB
The solve function can also solve higher order equations. It is often used to solve quadratic equations. The function returns the roots of the equation in an array.
The following example solves the quadratic equation x2 -7x +12 = 0. Create a script file and type the following code:
eq = ‘x^2 -7*x + 12 = 0’;
s = solve(eq);
disp(‘The first root is: ‘), disp(s(1)); disp(‘The second root is: ‘), disp(s(2));
When you run the file, it displays the following result:
The first root is:
3
The second root is:
4
Solving Quadratic Equations in Octave
The following example solves the quadratic equation x2 -7x +12 = 0 in Octave. Create a script file and type the following code:
s = roots([1, -7, 12]);
disp(‘The first root is: ‘), disp(s(1)); disp(‘The second root is: ‘), disp(s(2));
When you run the file, it displays the following result:
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The first root is:
4
The second root is:
3
Solving Higher Order Equations in MATLAB
The solve command can also solve higher order equations. For example, let us solve a cubic equation as (x-3)2(x-7) = 0
MATLAB will execute the above statement and return the following result:
solve(‘(x-3)^2*(x-7)=0’)
ans = 3 3 7
In case of higher order equations, roots are long containing many terms. You can get the numerical value of such roots by converting them to double. The following example solves the fourth order equation x4 − 7×3 + 3×2 − 5x + 9 = 0.
Create a script file and type the following code:
eq = ‘x^4 – 7*x^3 + 3*x^2 – 5*x + 9 = 0’;
s = solve(eq);
disp(‘The first root is: ‘), disp(s(1));
disp(‘The second root is: ‘), disp(s(2));
disp(‘The third root is: ‘), disp(s(3));
disp(‘The fourth root is: ‘), disp(s(4));
% converting the roots to double type
disp(‘Numeric value of first root’), disp(double(s(1)));
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disp(‘Numeric value of second root’), disp(double(s(2))); disp(‘Numeric value of third root’), disp(double(s(3))); disp(‘Numeric value of fourth root’), disp(double(s(4)));
When you run the file, it returns the following result:
The first root is: 6.630396332390718431485053218985
The second root is: 1.0597804633025896291682772499885
The third root is:
– 0.34508839784665403032666523448675 – 1.0778362954630176596831109269793*i
The fourth root is:
– 0.34508839784665403032666523448675 + 1.0778362954630176596831109269793*i
Numeric value of first root
6.6304
Numeric value of second root
1.0598
Numeric value of third root
-0.3451 – 1.0778i
Numeric value of fourth root
-0.3451 + 1.0778i
Please note that the last two roots are complex numbers.
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Solving Higher Order Equations in Octave
The following example solves the fourth order equation x4 − 7×3 + 3×2 − 5x + 9 = 0.
Create a script file and type the following code:
v=[1,-7, 3,-5,9];
s = roots(v);
% converting the roots to double type
disp(‘Numeric
disp(‘Numeric
disp(‘Numeric
disp(‘Numeric
value of first root’), disp(double(s(1))); value of second root’), disp(double(s(2))); value of third root’), disp(double(s(3))); value of fourth root’), disp(double(s(4)));
When you run the file, it returns the following result:
Numeric value of first root
6.6304
Numeric value of second root
-0.34509 + 1.07784i
Numeric value of third root
-0.34509 – 1.07784i
Numeric value of fourth root
1.0598
Solving System of Equations in MATLAB
The solve function can also be used to generate solutions of systems of equations involving more than one variables. Let us take up a simple example to demonstrate this use.
Let us solve the equations:
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5x + 9y = 5
3x – 6y = 4
Create a script file and type the following code:
When you run the file, it displays the following result:
s = solve(‘5*x + 9*y = 5′,’3*x – 6*y = 4’); s.x
s.y
ans = 22/19
ans = -5/57
In same way, you can solve larger linear systems. Consider the following set of equations:
x + 3y -2z = 5 3x + 5y + 6z = 7 2x + 4y + 3z = 8
Solving System of Equations in Octave
We have a little different approach to solve a system of ‘n’ linear equations in ‘n’ unknowns. Let us take up a simple example to demonstrate this use.
Let us solve the equations: 5x + 9y = 5
3x – 6y = 4
Such a system of linear equations can be written as the single matrix equation Ax = b, where A is the coefficient matrix, b is the column vector containing the right- hand side of the linear equations and x is the column vector representing the solution as shown in the below program:
Create a script file and type the following code:
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A = [5, 9; 3, -6]; b = [5;4];
A\b
When you run the file, it displays the following result:
ans =
1.157895
-0.087719
In same way, you can solve larger linear systems as given below: x + 3y -2z = 5
3x + 5y + 6z = 7
2x + 4y + 3z = 8
Expanding and Collecting Equations in MATLAB
The expand and the collect commands expands and collects an equation respectively. The following example demonstrates the concepts:
When you work with many symbolic functions, you should declare that your variables are symbolic.
Create a script file and type the following code:
syms x %symbolic variable x syms y %symbolic variable x
% expanding equations expand((x-5)*(x+9)) expand((x+2)*(x-3)*(x-5)*(x+7)) expand(sin(2*x)) expand(cos(x+y))
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% collecting equations
collect(x^3 *(x-7))
collect(x^4*(x-3)*(x-5))
When you run the file, it displays the following result:
ans =
x^2 + 4*x – 45
ans =
x^4 + x^3 – 43*x^2 + 23*x + 210 ans =
2*cos(x)*sin(x)
ans =
cos(x)*cos(y) – sin(x)*sin(y)
ans =
x^4 – 7*x^3
ans =
x^6 – 8*x^5 + 15*x^4
Expanding and Collecting Equations in Octave
You need to have symbolic package, which provides expand and collect command to expand and collect an equation, respectively. The following example demonstrates the concepts:
When you work with many symbolic functions, you should declare that your variables are symbolic but Octave has different approach to define symbolic variables. Notice the use of Sin and Cos which are also defined in symbolic package.
Create a script file and type the following code:
% first of all load the package, make sure it’s installed.
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pkg load symbolic
% make symbols module available
symbols
% define symbolic variables
x = sym (‘x’);
y = sym (‘y’);
z = sym (‘z’);
% expanding equations expand((x-5)*(x+9)) expand((x+2)*(x-3)*(x-5)*(x+7)) expand(Sin(2*x)) expand(Cos(x+y))
% collecting equations
collect(x^3 *(x-7), z)
collect(x^4*(x-3)*(x-5), z)
When you run the file, it displays the following result:
ans =
-45.0+x^2+(4.0)*x
ans =
210.0+x^4-(43.0)*x^2+x^3+(23.0)*x
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ans =
sin((2.0)*x)
ans =
cos(y+x)
ans =
x^(3.0)*(-7.0+x)
ans =
(-3.0+x)*x^(4.0)*(-5.0+x)
Factorization and Simplification of Algebraic Expressions
The factor function factorizes an expression and the simplify function simplifies an expression. The following example demonstrates the concept:
Example
Create a script file and type the following code:
syms x
syms y
factor(x^3 – y^3)
factor([x^2-y^2,x^3+y^3])
simplify((x^4-16)/(x^2-4))
When you run the file, it displays the following result:
ans =
(x – y)*(x^2 + x*y + y^2)
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ans =
[ (x – y)*(x + y), (x + y)*(x^2 – x*y + y^2)]
ans =
x^2 + 4
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23. CALCULUS
MATLAB provides various ways for solving problems of differential and integral calculus, solving differential equations of any degree and calculation of limits. Best of all, you can easily plot the graphs of complex functions and check maxima, minima and other stationery points on a graph by solving the original function, as well as its derivative.
This chapter will deal with problems of calculus.. In this chapter, we will discuss pre-calculus concepts i.e., calculating limits of functions and verifying the properties of limits.
In the next chapter Differential, we will compute derivative of an expression and find the local maxima and minima on a graph. We will also discuss solving differential equations.
Finally, in the Integration chapter, we will discuss integral calculus. Calculating Limits
MATLAB provides the limit command for calculating limits. In its most basic form, the limit command takes expression as an argument and finds the limit of the expression as the independent variable goes to zero.
For example, let us calculate the limit of a function f(x) = (x3 + 5)/(x4 + 7), as x tends to zero.
MATLAB will execute the above statement and return the following result:
The limit function falls in the realm of symbolic computing; you need to use the syms function to tell MATLAB which symbolic variables you are using. You can also compute limit of a function, as the variable tends to some number other than zero. To calculate lim x->a(f(x)), we use the limit command with arguments. The first being the expression and the second is the number, that x approaches, here it is a.
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syms x
limit((x^3 + 5)/(x^4 + 7))
ans = 5/7

For example, let us calculate limit of a function f(x) = (x-3)/(x-1), as x tends to 1.
MATLAB will execute the above statement and return the following result:
Let’s take another example,
MATLAB will execute the above statement and return the following result:
Calculating Limits using Octave
Following is Octave version of the above example using symbolic package, try to execute and compare the result:
limit((x – 3)/(x-1),1)
ans = NaN
limit(x^2 + 5, 3)
ans = 14
pkg load symbolic
symbols
x=sym(“x”);
subs((x^3+5)/(x^4+7),x,0)
Octave will execute the above statement and return the following result:
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ans =
0.7142857142857142857
Verification of Basic Properties of Limits

Algebraic Limit Theorem provides some basic properties of limits. These are as follows:
Let us consider two functions:
f(x) = (3x + 5)/(x – 3) g(x) = x2 + 1.
Let us calculate the limits of the functions as x tends to 5, of both functions and verify the basic properties of limits using these two functions and MATLAB.
Example
Create a script file and type the following code into it:
syms x
f = (3*x + 5)/(x-3); g = x^2 + 1;
l1 = limit(f, 4)
l2 = limit (g, 4)
lAdd = limit(f + g, 4) lSub = limit(f – g, 4) lMult = limit(f*g, 4) lDiv = limit (f/g, 4)
When you run the file, it displays:
l1 = 17
l2 =
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17
lAdd = 34
lSub = 0
lMult = 289
lDiv = 1
Verification of Basic Properties of Limits using Octave
Following is Octave version of the above example using symbolic package, try to execute and compare the result:
pkg load symbolic
symbols
x = sym(“x”);
f = (3*x + 5)/(x-3);
g = x^2 + 1;
l1=subs(f, x, 4)
l2 = subs (g, x, 4) lAdd = subs (f+g, x, 4)
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lSub = subs (f-g, x, 4)
lMult = subs (f*g, x, 4)
lDiv = subs (f/g, x, 4)
Octave will execute the above statement and return the following result:
l1 =
17.0 l2 =
17.0 lAdd =
34.0 lSub =
0.0 lMult =
289.0 lDiv =
1.0
Left and Right Sided Limits
When a function has a discontinuity for some particular value of the variable, the limit does not exist at that point. In other words, limits of a function f(x) has
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discontinuity at x = a, when the value of limit, as x approaches x from left side, does not equal the value of the limit as x approaches from right side.
This leads to the concept of left-handed and right-handed limits. A left-handed limit is defined as the limit as x -> a, from the left, i.e., x approaches a, for values of x < a. A right-handed limit is defined as the limit as x -> a, from the right, i.e., x approaches a, for values of x > a. When the left-handed limit and right-handed limit are not equal, the limit does not exist.
Let us consider a function:
f(x) = (x – 3)/|x – 3|
We will show that limx->3 f(x) does not exist. MATLAB helps us to establish this fact in two ways:
By plotting the graph of the function and showing the discontinuity By computing the limits and showing that both are different.
The left-handed and right-handed limits are computed by passing the character strings ‘left’ and ‘right’ to the limit command as the last argument.
Example
Create a script file and type the following code into it:
f = (x – 3)/abs(x-3);
ezplot(f,[-1,5])
l = limit(f,x,3,’left’)
r = limit(f,x,3,’right’)
When you run the file, MATLAB draws the following plot,
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and displays the following output:
l= -1
r= 1
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24. DIFFERENTIAL
MATLAB provides the diff command for computing symbolic derivatives. In its simplest form, you pass the function you want to differentiate to diff command as an argument.
For example, let us compute the derivative of the function f(t) = 3t2 + 2t-2
Example
Create a script file and type the following code into it:
When the above code is compiled and executed, it produces the following result:
syms t
f = 3*t^2 + 2*t^(-2);
diff(f)
ans =
6*t – 4/t^3
Following is Octave equivalent of the above calculation:
pkg load symbolic
symbols
t = sym(“t”);
f = 3*t^2 + 2*t^(-2);
differentiate(f,t)
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Octave executes the code and returns the following result:
ans =
-(4.0)*t^(-3.0)+(6.0)*t
Verification of Elementary Rules of Differentiation
Let us briefly state various equations or rules for differentiation of functions and verify these rules. For this purpose, we will write f'(x) for a first order derivative and f”(x) for a second order derivative.
Following are the rules for differentiation:
Rule 1
For any functions f and g and any real numbers a and b are the derivative of the function:
h(x) = af(x) + bg(x) with respect to x is given by: h'(x) = af'(x) + bg'(x)
Rule 2
The sum and subtraction rules state that if f and g are two functions, f’ and g’ are their derivatives respectively, then,
(f + g)’ = f’ + g’ (f – g)’ = f’ – g’
Rule 3
The product rule states that if f and g are two functions, f’ and g’ are their derivatives respectively, then,
(f.g)’ = f’.g + g’.f
Rule 4
The quotient rule states that if f and g are two functions, f’ and g’ are their derivatives respectively, then,
(f/g)’ = (f’.g – g’.f)/g2
Rule 5
The polynomial or elementary power rule states that, if y = f(x) = xn, then f’ = n. x(n-1)
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A direct outcome of this rule is that the derivative of any constant is zero, i.e., if y = k, any constant, then
f’ = 0
Rule 6
The chain rule states that, the derivative of the function of a function h(x) = f(g(x)) with respect to x is,
h'(x)= f'(g(x)).g'(x)
Example
Create a script file and type the following code into it:
syms x
syms t
f = (x + 2)*(x^2 + 3)
der1 = diff(f)
f = (t^2 + 3)*(sqrt(t) + t^3)
der2 = diff(f)
f = (x^2 – 2*x + 1)*(3*x^3 – 5*x^2 + 2)
der3 = diff(f)
f = (2*x^2 + 3*x)/(x^3 + 1)
der4 = diff(f)
f = (x^2 + 1)^17
der5 = diff(f)
f = (t^3 + 3* t^2 + 5*t -9)^(-6)
der6 = diff(f)
When you run the file, MATLAB displays the following result:
f=
(x^2 + 3)*(x + 2)
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der1 =
2*x*(x + 2) + x^2 + 3
f=
(t^(1/2) + t^3)*(t^2 + 3)
der2 = (t^2 +
f= (x^2 –
der3 = (2*x –
f= (2*x^2
der4 = (4*x +
3)*(3*t^2 + 1/(2*t^(1/2))) + 2*t*(t^(1/2) + t^3)
2*x + 1)*(3*x^3 – 5*x^2 + 2)
2)*(3*x^3 – 5*x^2 + 2) – (- 9*x^2 + 10*x)*(x^2 – 2*x + 1)
+ 3*x)/(x^3 + 1)
3)/(x^3 + 1) – (3*x^2*(2*x^2 + 3*x))/(x^3 + 1)^2
f=
(x^2 + 1)^17
der5 =
34*x*(x^2 + 1)^16
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f=
1/(t^3 + 3*t^2 + 5*t – 9)^6
der6 =
-(6*(3*t^2 + 6*t + 5))/(t^3 + 3*t^2 + 5*t – 9)^7
Following is Octave equivalent of the above calculation:
pkg load symbolic
symbols
x=sym(“x”);
t=sym(“t”);
f = (x + 2)*(x^2 + 3)
der1 = differentiate(f,x)
f = (t^2 + 3)*(t^(1/2) + t^3)
der2 = differentiate(f,t)
f = (x^2 – 2*x + 1)*(3*x^3 – 5*x^2 + 2)
der3 = differentiate(f,x)
f = (2*x^2 + 3*x)/(x^3 + 1)
der4 = differentiate(f,x)
f = (x^2 + 1)^17
der5 = differentiate(f,x)
f = (t^3 + 3* t^2 + 5*t -9)^(-6)
der6 = differentiate(f,t)
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Derivatives of Exponential, Logarithmic, and Trigonometric
Functions
The following table provides the derivatives of commonly used exponential, logarithmic and trigonometric functions:
Function
Derivative
ca.x
ca.x.ln c.a (ln is natural logarithm)
ex
ex
ln x
1/x
lncx
1/x.ln c
xx
xx.(1 + ln x)
sin(x)
cos(x)
cos(x)
-sin(x)
tan(x)
sec2(x), or 1/cos2(x), or 1 + tan2(x)
cot(x)
-csc2(x), or -1/sin2(x), or -(1 + cot2(x))
sec(x)
sec(x).tan(x)
csc(x)
-csc(x).cot(x)
Example
Create a script file and type the following code into it:
syms x
y = exp(x)
diff(y)
y = x^9
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diff(y)
y = sin(x)
diff(y)
y = tan(x)
diff(y)
y = cos(x)
diff(y)
y = log(x)
diff(y)
y = log10(x)
diff(y)
y = sin(x)^2
diff(y)
y = cos(3*x^2 + 2*x + 1)
diff(y)
y = exp(x)/sin(x)
diff(y)
When you run the file, MATLAB displays the following result:
y= exp(x) ans = exp(x)
y= x^9
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ans = 9*x^8
y= sin(x) ans = cos(x)
y= tan(x)
ans =
tan(x)^2 + 1
y= cos(x) ans = -sin(x)
y= log(x) ans = 1/x
y= log(x)/log(10) ans =
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1/(x*log(10))
y= sin(x)^2
ans =
2*cos(x)*sin(x)
y=
cos(3*x^2 + 2*x + 1)
ans =
-sin(3*x^2 + 2*x + 1)*(6*x + 2)
y=
exp(x)/sin(x)
ans =
exp(x)/sin(x) – (exp(x)*cos(x))/sin(x)^2
Following is Octave equivalent of the above calculation:
pkg load symbolic
symbols
x = sym(“x”);
y = Exp(x)
differentiate(y,x)
y = x^9
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differentiate(y,x)
y = Sin(x)
differentiate(y,x)
y = Tan(x)
differentiate(y,x)
y = Cos(x)
differentiate(y,x)
y = Log(x)
differentiate(y,x)
% symbolic packages does not have this support %y = Log10(x)
%differentiate(y,x)
y = Sin(x)^2
differentiate(y,x)
y = Cos(3*x^2 + 2*x + 1)
differentiate(y,x)
y = Exp(x)/Sin(x)
differentiate(y,x)
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Computing Higher Order Derivatives
To compute higher derivatives of a function f, we use the syntax diff(f,n). Let us compute the second derivative of the function y = f(x) = x .e-3x
MATLAB executes the code and returns the following result:
Following is Octave equivalent of the above calculation:
f = x*exp(-3*x);
diff(f, 2)
ans =
9*x*exp(-3*x) – 6*exp(-3*x)
pkg load symbolic
symbols
x = sym(“x”);
f = x*Exp(-3*x);
differentiate(f, x, 2)
Example
In this example, let us solve a problem. Given that a function y = f(x) = 3 sin(x) + 7 cos(5x). We will have to find out whether the equation f” + f = – 5cos(2x) holds true.
Create a script file and type the following code into it:
syms x
y = 3*sin(x)+7*cos(5*x); % defining the function
lhs = diff(y,2)+y; %evaluating the lhs of the equation
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rhs = -5*cos(2*x); %rhs of the equation if(isequal(lhs,rhs))
disp(‘Yes, the equation holds true’); else
disp(‘No, the equation does not hold true’); end
disp(‘Value of LHS is: ‘), disp(lhs);
When you run the file, it displays the following result:
Following is Octave equivalent of the above calculation:
No, the equation does not hold true Value of LHS is:
-168*cos(5*x)
pkg load symbolic
symbols
x = sym(“x”);
y = 3*Sin(x)+7*Cos(5*x); % defining the function
lhs = differentiate(y, x, 2) + y; %evaluting the lhs of the equation rhs = -5*Cos(2*x); %rhs of the equation
if(lhs == rhs)
disp(‘Yes, the equation holds true’);
else
disp(‘No, the equation does not hold true’);
end
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disp(‘Value of LHS is: ‘), disp(lhs);
Finding the Maxima and Minima of a Curve
If we are searching for the local maxima and minima for a graph, we are basically looking for the highest or lowest points on the graph of the function at a particular locality, or for a particular range of values of the symbolic variable.
For a function y = f(x) the points on the graph where the graph has zero slope are called stationary points. In other words stationary points are where f'(x) = 0.
To find the stationary points of a function we differentiate, we need to set the derivative equal to zero and solve the equation.
Example
Let us find the stationary points of the function f(x) = 2×3 + 3×2 − 12x + 17 Take the following steps:
First let us enter the function and plot its graph:
syms x
y = 2*x^3 + 3*x^2 – 12*x + 17; % defining the function ezplot(y)
MATLAB executes the code and returns the following plot:
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Here is Octave equivalent code for the above example:
pkg load symbolic
symbols
x = sym(‘x’);
y = inline(“2*x^3 + 3*x^2 – 12*x + 17”);
ezplot(y)
print -deps graph.eps
Our aim is to find some local maxima and minima on the graph, so let us find the local maxima and minima for the interval [-2, 2] on the graph.
syms x
y = 2*x^3 + 3*x^2 – 12*x + 17; % defining the function ezplot(y, [-2, 2])
MATLAB executes the code and returns the following plot:
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Here is Octave equivalent code for the above example:
pkg load symbolic
symbols
x = sym(‘x’);
y = inline(“2*x^3 + 3*x^2 – 12*x + 17”);
ezplot(y, [-2, 2])
print -deps graph.eps
Next, let us compute the derivative
MATLAB executes the code and returns the following result:
Here is Octave equivalent of the above calculation:
g = diff(y)
g=
6*x^2 + 6*x – 12
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pkg load symbolic
symbols
x = sym(“x”);
y = 2*x^3 + 3*x^2 – 12*x + 17; g = differentiate(y,x)
Let us solve the derivative function, g, to get the values where it becomes zero.
MATLAB executes the code and returns the following result:
Following is Octave equivalent of the above calculation:
s = solve(g)
s=
1
-2
pkg load symbolic
symbols
x = sym(“x”);
y = 2*x^3 + 3*x^2 – 12*x + 17; g = differentiate(y,x) roots([6, 6, -12])
This agrees with our plot. So let us evaluate the function f at the critical points x = 1, -2. We can substitute a value in a symbolic function by using the subs command.
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subs(y, 1), subs(y, -2)
MATLAB executes the code and returns the following result:
Following is Octave equivalent of the above calculation:
ans = 10
ans = 37
pkg load symbolic
symbols
x = sym(“x”);
y = 2*x^3 + 3*x^2 – 12*x + 17; g = differentiate(y,x)
roots([6, 6, -12])
subs(y, x, 1), subs(y, x, -2)
Therefore, The minimum and maximum values on the function f(x) = 2×3 + 3×2 − 12x + 17, in the interval [-2,2] are 10 and 37.
Solving Differential Equations
MATLAB provides the dsolve command for solving differential equations symbolically.
The most basic form of the dsolve command for finding the solution to a single equation is:
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dsolve(‘eqn’)
where eqn is a text string used to enter the equation.
It returns a symbolic solution with a set of arbitrary constants that MATLAB labels
C1, C2, and so on.
You can also specify initial and boundary conditions for the problem, as comma- delimited list following the equation as:
For the purpose of using dsolve command, derivatives are indicated with a D. For example, an equation like f'(t) = -2*f + cost(t) is entered as:
‘Df = -2*f + cos(t)’
Higher derivatives are indicated by following D by the order of the derivative. For example the equation f”(x) + 2f'(x) = 5sin3x should be entered as:
‘D2y + 2Dy = 5*sin(3*x)’
Let us take up a simple example of a first order differential equation: y’ = 5y.
MATLAB executes the code and returns the following result:
Let us take up another example of a second order differential equation as: y” – y = 0, y(0) = -1, y'(0) = 2.
dsolve(‘eqn’,’cond1′, ‘cond2’,…)
s = dsolve(‘Dy = 5*y’)
s= C2*exp(5*t)
dsolve(‘D2y – y = 0′,’y(0) = -1′,’Dy(0) = 2’)
MATLAB executes the code and returns the following result:
ans =
exp(t)/2 – (3*exp(-t))/2
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25. INTEGRATION
Integration deals with two essentially different types of problems.
In the first type, derivative of a function is given and we want to find the function. Therefore, we basically reverse the process of differentiation. This reverse process is known as anti-differentiation, or finding the primitive function, or finding an indefinite integral.
The second type of problems involve adding up a very large number of very small quantities and then taking a limit as the size of the quantities approaches zero, while the number of terms tend to infinity. This process leads to the definition of the definite integral.
Definite integrals are used for finding area, volume, center of gravity, moment of inertia, work done by a force, and in numerous other applications.
Finding Indefinite Integral Using MATLAB
By definition, if the derivative of a function f(x) is f'(x), then we say that an indefinite integral of f'(x) with respect to x is f(x). For example, since the derivative (with respect to x) of x2 is 2x, we can say that an indefinite integral of 2x is x2.
In symbols:
f'(x2) = 2x, therefore,
∫ 2xdx = x2.
Indefinite integral is not unique, because derivative of x2 + c, for any value of a constant c, will also be 2x.
This is expressed in symbols as:
∫ 2xdx = x2 + c.
Where, c is called an ‘arbitrary constant’.
MATLAB provides an int command for calculating integral of an expression. To derive an expression for the indefinite integral of a function, we write:
int(f);
For example, from our previous example:
syms x
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int(2*x)
MATLAB executes the above statement and returns the following result:
Example 1
In this example, let us find the integral of some commonly used expressions. Create a script file and type the following code in it:
ans = x^2
syms x n
int(sym(x^n))
f = ‘sin(n*t)’
int(sym(f))
syms a t
int(a*cos(pi*t))
int(a^x)
When you run the file, it displays the following result:
ans =
piecewise([n == -1, log(x)], [n ~= -1, x^(n + 1)/(n + 1)])
f= sin(n*t) ans =
-cos(n*t)/n
ans =
(a*sin(pi*t))/pi
ans =
a^x/log(a)
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Example 2
Create a script file and type the following code in it:
syms x n
int(cos(x))
int(exp(x))
int(log(x))
int(x^-1)
int(x^5*cos(5*x))
pretty(int(x^5*cos(5*x)))
int(x^-5)
int(sec(x)^2)
pretty(int(1 – 10*x + 9 * x^2))
int((3 + 5*x -6*x^2 – 7*x^3)/2*x^2) pretty(int((3 + 5*x -6*x^2 – 7*x^3)/2*x^2))
Note that the pretty command returns an expression in a more readable format. When you run the file, it displays the following result:
ans =
sin(x)
ans =
exp(x)
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ans =
x*(log(x) – 1)
ans =
log(x)
ans =
(24*cos(5*x))/3125 + (24*x*sin(5*x))/625 – (12*x^2*cos(5*x))/125 + (x^4*cos(5*x))/5 – (4*x^3*sin(5*x))/25 + (x^5*sin(5*x))/5
24 24cos(5x) 24xsin(5x) 12x cos(5x) x cos(5x)
———– + ————- – ————– + ———– – 3125 625 125 5
35
4x sin(5x) x sin(5x) ————- + ———–
25 5
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ans =
-1/(4*x^4)
ans =
tan(x)
2
x(3x -5x+1)
ans =
– (7*x^6)/12 – (3*x^5)/5 + (5*x^4)/8 + x^3/2
6543 7x3x5xx
– —- – —- + —- + — 12 5 8 2
Finding Definite Integral Using MATLAB
By definition, definite integral is basically the limit of a sum. We use definite integrals to find areas such as the area between a curve and the x-axis and the area between two curves. Definite integrals can also be used in other situations, where the quantity required can be expressed as the limit of a sum.
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The int command can be used for definite integration by passing the limits over which you want to calculate the integral.
To calculate
we write,
For example, to calculate the value of we write:
MATLAB executes the above statement and returns the following result:
Following is Octave equivalent of the above calculation:
pkg load symbolic
symbols
x = sym(“x”);
f = x;
c = [1, 0];
integral = polyint(c);
a = polyval(integral, 9) – polyval(integral, 4);
int(x, a, b)
int(x, 4, 9)
ans = 65/2
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display(‘Area: ‘), disp(double(a));
An alternative solution can be given using quad() function provided by Octave as follows:
pkg load symbolic
symbols
f = inline(“x”);
[a, ierror, nfneval] = quad(f, 4, 9);
display(‘Area: ‘), disp(double(a));
Example 1
Let us calculate the area enclosed between the x-axis, and the curve y = x3−2x+5 and the ordinates x = 1 and x = 2.
The required area is given by:
Create a script file and type the following code:
When you run the file, it displays the following result:
f = x^3 – 2*x +5;
a = int(f, 1, 2)
display(‘Area: ‘), disp(double(a));
a= 23/4 Area:
5.7500
Following is Octave equivalent of the above calculation:
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pkg load symbolic
symbols
x = sym(“x”);
f = x^3 – 2*x +5;
c = [1, 0, -2, 5];
integral = polyint(c);
a = polyval(integral, 2) – polyval(integral, 1);
display(‘Area: ‘), disp(double(a));
An alternative solution can be given using quad() function provided by Octave as follows:
pkg load symbolic
symbols
x = sym(“x”);
f = inline(“x^3 – 2*x +5”);
[a, ierror, nfneval] = quad(f, 1, 2);
display(‘Area: ‘), disp(double(a));
Example 2
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Find the area under the curve: f(x) = x2 cos(x) for −4 ≤ x ≤ 9. Create a script file and write the following code:
f = x^2*cos(x);
ezplot(f, [-4,9])
a = int(f, -4, 9)
disp(‘Area: ‘), disp(double(a));
When you run the file, MATLAB plots the graph:
The output is given below:
a=
8*cos(4) + 18*cos(9) + 14*sin(4) + 79*sin(9)
Area: 0.3326
Following is the Octave equivalent of the above calculation:
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pkg load symbolic
symbols
x = sym(“x”);
f = inline(“x^2*cos(x)”);
ezplot(f, [-4,9])
print -deps graph.eps
[a, ierror, nfneval] = quad(f, -4, 9);
display(‘Area: ‘), disp(double(a));
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26. POLYNOMIALS
MATLAB represents polynomials as row vectors containing coefficients ordered by descending powers. For example, the equation P(x) = x4 + 7×3 – 5x + 9 could be represented as:
p = [1 7 0 -5 9];
Evaluating Polynomials
The polyval function is used for evaluating a polynomial at a specified value. For example, to evaluate our previous polynomial p, at x = 4, type:
MATLAB executes the above statements and returns the following result:
MATLAB also provides the polyvalm function for evaluating a matrix polynomial. A matrix polynomial is a polynomial with matrices as variables.
For example, let us create a square matrix X and evaluate the polynomial p, at X:
MATLAB executes the above statements and returns the following result:
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p=[170 -59]; polyval(p,4)
ans = 693
p=[170 -59];
X = [1 2 -3 4; 2 -5 6 3; 3 1 0 2; 5 -7 3 8]; polyvalm(p, X)
ans =
2307 -1769 -939 4499
2314 -2376 -249 4695
2256 -1892 -549 4310

4570 -4532 -1062 9269
Finding the Roots of Polynomials
The roots function calculates the roots of a polynomial. For example, to calculate the roots of our polynomial p, type:
MATLAB executes the above statements and returns the following result:
p=[170 -59]; r = roots(p)
r=
-6.8661 + 0.0000i -1.4247 + 0.0000i
0.6454 + 0.7095i
0.6454 – 0.7095i
The function poly is an inverse of the roots function and returns to the polynomial coefficients. For example:
MATLAB executes the above statements and returns the following result:
Polynomial Curve Fitting
The polyfit function finds the coefficients of a polynomial that fits a set of data in a least-squares sense. If x and y are two vectors containing the x and y data to be fitted to a n-degree polynomial, then we get the polynomial fitting the data by writing:
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p2 = poly(r)
p2 =
1.0000 7.0000 0.0000 -5.0000 9.0000
p = polyfit(x,y,n)

Example
Create a script file and type the following code:
x=[123456];y=[5.543.1128290.7498.4978.67]; %data p = polyfit(x,y,4) %get the polynomial
% Compute the values of the polyfit estimate over a finer range, % and plot the estimate over the real data values for comparison: x2 = 1:.1:6;
y2 = polyval(p,x2);
plot(x,y,’o’,x2,y2)
grid on
When you run the file, MATLAB displays the following result:
The following graph will be plotted:
p=
4.1056 -47.9607 222.2598 -362.7453 191.1250
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27. TRANSFORMS
MATLAB provides command for working with transforms, such as the Laplace and Fourier transforms. Transforms are used in science and engineering as a tool for simplifying analysis and look at data from another angle.
For example, the Fourier transform allows us to convert a signal represented as a function of time to a function of frequency. Laplace transform allows us to convert a differential equation to an algebraic equation.
MATLAB provides the laplace, fourier and fft commands to work with Laplace, Fourier and Fast Fourier transforms.
The Laplace Transform
The Laplace transform of a function of time f(t) is given by the following integral:
Laplace transform is also denoted as transform of f(t) to F(s). You can see this transform or integration process converts f(t), a function of the symbolic variable t, into another function F(s), with another variable s.
Laplace transform turns differential equations into algebraic ones. To compute a Laplace transform of a function f(t), write:
Example
In this example, we will compute the Laplace transform of some commonly used functions.
laplace(f(t))
Create a script file and type the following code:
syms s t a b w
laplace(a)
laplace(t^2)
laplace(t^9)
laplace(exp(-b*t))
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laplace(sin(w*t))
laplace(cos(w*t))
When you run the file, it displays the following result:
ans = 1/s^2
ans = 2/s^3
ans =
362880/s^10
ans = 1/(b + s)
ans =
w/(s^2 + w^2)
ans =
s/(s^2 + w^2)
The Inverse Laplace Transform
MATLAB allows us to compute the inverse Laplace transform using the command ilaplace.
For example,
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ilaplace(1/s^3)
MATLAB will execute the above statement and display the result:
Example
Create a script file and type the following code:
ans = t^2/2
syms s t a b w
ilaplace(1/s^7)
ilaplace(2/(w+s))
ilaplace(s/(s^2+4))
ilaplace(exp(-b*t))
ilaplace(w/(s^2 + w^2))
ilaplace(s/(s^2 + w^2))
When you run the file, it displays the following result:
ans = t^6/720
ans =
2*exp(-t*w)
ans =
cos(2*t)
ans =
ilaplace(exp(-b*t), t, x)
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ans =
sin(t*w)
ans =
cos(t*w)
The Fourier Transforms
Fourier transforms commonly transforms a mathematical function of time, f(t), into a new function, sometimes denoted by or F, whose argument is frequency with units of cycles/s (hertz) or radians per second. The new function is then known as the Fourier transform and/or the frequency spectrum of the function f.
Example
Create a script file and type the following code in it:
syms x
f = exp(-2*x^2); %our function ezplot(f,[-2,2]) % plot of our function FT = fourier(f) % Fourier transform
When you run the file, MATLAB plots the following graph:
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The following result is displayed:
Plotting the Fourier transform as:
Gives the following graph:
FT = (2^(1/2)*pi^(1/2)*exp(-w^2/8))/2
ezplot(FT)
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Inverse Fourier Transforms
MATLAB provides the ifourier command for computing the inverse Fourier transform of a function. For example,
f = ifourier(-2*exp(-abs(w)))
MATLAB will execute the above statement and display the result:
f=
-2/(pi*(x^2 + 1))
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28. GNU OCTAVE TUTORIAL
GNU Octave is a high-level programming language like MATLAB and it is mostly compatible with MATLAB. It is also used for numerical computations.
Octave has the following common features with MATLAB:
 Matrices are fundamental data type.
 It has built-in support for complex numbers.
 It has built-in math functions and libraries.
 It supports user-defined functions.
GNU Octave is also freely redistributable software. You may redistribute it and/or modify it under the terms of the GNU General Public License (GPL) as published by the Free Software Foundation.
MATLAB vs Octave
Most MATLAB programs run in Octave, but some of the Octave programs may not run in MATLAB because, Octave allows some syntax that MATLAB does not.
For example, MATLAB supports single quotes only, but Octave supports both single and double quotes for defining strings. If you are looking for a tutorial on Octave, then kindly go through this tutorial from beginning which covers both MATLAB as well as Octave.
Compatible Examples
Almost all the examples covered in this tutorial are compatible with MATLAB as well as Octave. Let’s try following example in MATLAB and Octave which produces same result without any syntax changes:
This example creates a 3D surface map for the function g = xe-(x2 + y2). Create a script file and type the following code:
[x,y] = meshgrid(-2:.2:2);
g = x .* exp(-x.^2 – y.^2);
surf(x, y, g)
print -deps graph.eps
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When you run the file, MATLAB displays the following 3-D map:
Non-compatible Examples
Though all the core functionality of MATLAB is available in Octave, there are some functionality for example, Differential & Integration Calculus, which does not match exactly in both the languages. This tutorial has tried to give both type of examples where they differed in their syntax.
Consider following example where MATLAB and Octave make use of different functions to get the area of a curve: f(x) = x2 cos(x) for −4 ≤ x ≤ 9. Following is MATLAB version of the code:
f = x^2*cos(x);
ezplot(f, [-4,9])
a = int(f, -4, 9)
disp(‘Area: ‘), disp(double(a));
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When you run the file, MATLAB plots the graph:
The following result is displayed:
a=
8*cos(4) + 18*cos(9) + 14*sin(4) + 79*sin(9)
Area: 0.3326
But to give area of the same curve in Octave, you will have to make use of symbolic package as follows:
pkg load symbolic
symbols
x = sym(“x”);
f = inline(“x^2*cos(x)”);
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ezplot(f, [-4,9])
print -deps graph.eps
[a, ierror, nfneval] = quad(f, -4, 9);
display(‘Area: ‘), disp(double(a));
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29. SIMULINK
Simulink is a simulation and model-based design environment for dynamic and embedded systems, integrated with MATLAB. Simulink, also developed by MathWorks, is a data flow graphical programming language tool for modeling, simulating and analyzing multi-domain dynamic systems. It is basically a graphical block diagramming tool with customizable set of block libraries.
It allows you to incorporate MATLAB algorithms into models as well as export the simulation results into MATLAB for further analysis.
Simulink supports:
 system-level design
 simulation
 automatic code generation
 testing and verification of embedded systems
There
hardware and software products that are available for use with Simulink.
are several other add-on products provided by MathWorks and third-party The following list gives a brief description of some of them:
 Stateflow allows developing state machines and flow charts.
 Simulink Coder allows the generation of C source code for real-time
implementation of systems automatically.
 xPC Target together with x86-based real-time systems provide an environment to simulate and test Simulink and Stateflow models in real- time on the physical system.
 Embedded Coder supports specific embedded targets.
 HDL Coder allows to automatically generate synthesizable VHDL and
Verilog.
 SimEvents provides a library of graphical building blocks for modelling queuing systems.
Simulink is capable of systematic verification and validation of models through modelling style checking, requirements traceability and model coverage analysis.
Simulink Design Verifier allows you to identify design errors and to generate test case scenarios for model checking.
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Using Simulink
To open Simulink, type in the MATLAB work space:
Simulink opens with the Library Browser. The Library Browser is used for building simulation models.
On the left side window pane, you will find several libraries categorized on the basis of various systems, clicking on each one will display the design blocks on the right window pane.
230
simulink

Building Models
To create a new model, click the New button on the Library Browser’s toolbar. This opens a new untitled model window
A Simulink model is a block diagram.
Model elements are added by selecting the appropriate elements from the Library Browser and dragging them into the Model window.
Alternately, you can copy the model elements and paste them into the model window.
Examples
Drag and drop items from the Simulink library to make your project.
For the purpose of this example, two blocks will be used for the simulation – A Source (a signal) and a Sink (a scope). A signal generator (the source) generates an analog signal, which will then be graphically visualized by the scope(the sink).
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Begin by dragging the required blocks from the library to the project window. Then, connect the blocks together which can be done by dragging connectors from connection points on one block to those of another.
Let us drag a ‘Sine Wave’ block into the model.
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Select ‘Sinks’ from the library and drag a ‘Scope’ block into the model.
Drag a signal line from the output of the Sine Wave block to the input of the Scope block.
233

Run the simulation by pressing the ‘Run’ button, keeping all parameters default (you can change them from the Simulation menu)
You should get the below graph from the scope.
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