SlideShare a Scribd company logo
1 of 52
THE z-TRANSFORM
SWATI MISHRA
1
CONTENTS
• z-transform
• Region Of Convergence
• Properties Of Region Of Convergence
• z-transform Of Common Sequence
• Properties And Theorems
• Application
• Inverse z- Transform
• z-transform Implementation Using Matlab
2
Why z-Transform ?
• The z transform is a mathematical tool commonly used for the analysis and
synthesis of discrete-time control systems.
• The z transform in discrete-time systems play a similar role as the Laplace
transform in continuous-time systems
3
z-Transform
• The z-transform is the most general concept for the transformation of discrete-time series.
• The Laplace transform is the more general concept for the transformation of continuous
time processes.
4
TRANSFORM
The Transforms
5
The Laplace transform of a function f(t):
∫
∞
−
=
0
)()( dtetfsF st
The one-sided z-transform of a function x(n):
∑
∞
=
−
=
0
)()(
n
n
znxzX
The two-sided z-transform of a function x(n):
∑
∞
−∞=
−
=
n
n
znxzX )()(
• z-transform comes about same way as CTFT (Continuous Time Fourier Transform) in
which the variable is
Laplace Transform
►CTFT is generalized to Laplace Transform by going from
j σ + j
C.T.F.T L.T
Where , s = σ + j ; σ = real part
6
ω
ω generalized to
ω ω
ω
Motivation For C.T.F.T To L.T
j σ + j
CTFT L.T
Where , s = σ + j ;
σ = real part
This enlarges the capability of the transform to handle much wider class of
signal and system .This was the motivation for going to Laplace transform
from Continuous time fourier transform.
7
ω ω
ω
• In the similar manner z transform is generalized from D.T.F.T ( Discrete Time
Fourier Transform ) .
…………………(1)
• D.T.F.T of the sequence x(n) is given by eqation no . (1)
8
∑
∞
−∞=
−
n
nj
enx ω
)()(nx
D.T.F.T
∑
∞
−∞=
−
=
n
nj
enxX ω
ω )()(
• Here we notice that variable in this D.T.F.T obtained in eq. no. 1. is
9
ωj
e−
ωj
er.
ωj
e generalized to
Magnitude =1 Here we
introduce ‘r’
• Where r may be 1
If r = 1 : D.T.F.T
If r not equal to 1 : New transform : z-transform
• In Laplace transform we worked on the j realization to .We worked
on rectangular coordinates.
• Whereas in z- transform we work in polar coordinates. We specify complex
by its distance from the origin which is ‘r’ and angle it makes with the +ve
real axis i.e ‘ ‘.
10
ω σ + jω
ωj
e
ω
Z = ejω
ω
• In eq.1 if we give a new name say ‘z’.
• If we wish to generalize D.T.F.T into a new transform then is replaced by z
• Then
• The z- transform reduces to the Fourier transform when the magnitude of the
transform variable z is unity.
11
ωj
er.
ωj
e
∑
∞
−∞=
−
=
n
nj
enxX ω
ω )()(
∑
∞
−∞=
−
=
n
n
znxzX )()(
POLES AND ZEROS
12
• When X(z) is a rational function, i.e., a ration of polynomials in z, then:
 The roots of the numerator polynomial are referred to as the zeros of X(z), and
 The roots of the denominator polynomial are referred to as the poles of X(z).
• Note that no poles of X(z) can occur within the region of convergence since the z-
transform does not converge at a pole.
• Furthermore, the region of convergence is bounded by poles.
REGION OF CONVERGENCE
13
• The z-transform of x(n) can be viewed as the Fourier transform of x(n) multiplied by
an exponential sequence r-n
, and the z-transform may converge even when the
Fourier transform does not.
• By redefining convergence, it is possible that the Fourier transform may converge
when the z-transform does not.
• For the Fourier transform to converge, the sequence must have finite energy, or:
∞<∑
∞
−∞=
−
n
n
rnx )(
CONVERGENCE, CONTINUED
14
∑
∞
−∞=
−
=
n
n
znxzX )()(
• The power series for the z-transform is called a Laurent series:
• The Laurent series, and therefore the z-transform, represents an analytic function at
every point inside the region of convergence, and therefore the z-transform and all
its derivatives must be continuous functions of z inside the region of convergence.
• In general, the Laurent series will converge in an annular region of the z-plane.
EXAMPLE
15
)()( nuanx n
=
The z-transform is given by:
∑∑
∞
=
−
∞
−∞=
−
==
0
1
)()()(
n
n
n
nn
azznuazX
Which converges to:
azfor
az
z
az
zX >
−
=
−
= −1
1
1
)(
Clearly, X(z) has a zero at z = 0 and a pole at z = a.
×
a
Region of convergence
16
• Stable System : A system is said to be stable if
∞<∑
∞
−∞=k
kh )(
Which means that a bounded input will not yield an unbounded output.
•Causal System : A causal system is one in which changes in output do not
precede changes in input. In other words,
[ ] [ ] .for)()(then
for)()(If
021
021
nnnxTnxT
nnnxnx
<=
≤=
Linear, shift-invariant systems are causal if h(n) = 0 for n < 0.
PROPERTIES OF ROC
17
• The region of convergence (ROC) for a given DT transfer function is a disk or annulus which
contains no poles. In general, the ROC is not unique, and the particular ROC in any given
case depends on whether the system is causal or anti-causal.
• If the ROC includes the unit circle, then the system is bounded-input, bounded-output
(BIBO) stable.
• If the ROC extends outward from the pole with the largest (but not infinite) magnitude,
then the system has a right-sided impulse response.
• If the ROC extends outward from the pole with the largest magnitude and there is
no pole at infinity, then the system is causal.
• If the ROC extends inward from the pole with the smallest (nonzero) magnitude,
then the system is anti-causal.
18
• If you need stability then the ROC must contain the unit circle.
• If you need a causal system then the ROC must contain infinity and
the system function will be a right-sided sequence.
19
• If you need an anti-causal system then the ROC must contain the origin and the system
function will be a left-sided sequence.
20
• If you need both, stability and causality, all the poles of the system function
must be inside the unit circle. The unique x[n] can then be found
21
z-Transform Of Common Sequence
22
23
PROPERTIES AND THEOREMS
 Multiplication by a Constant
 Linearity of the z Transform
 Multiplication by ak
 Shifting Theorem
 Complex Translation Theorem
 Initial Value Theorem
 Final Value Theorem
Multiplication by a constant
If X(z) is the z transform of x(n), then
Z [ax(n)] = a Z[x(n)] = a X(z)
where a is a constant.
To prove this, note that by definition
Z [ax(n)] =
24
∑∑
∞
=
−
∞
=
−
==
00
)()()(
n
n
n
n
zaXznxaznax
Linearity of the z transform
The z transform possesses an important property: linearity. This means
that, if f(n) and g(n) are z-transformable and α and β are scalars, then
x(n) formed by a linear combination
x(n) = αf(n) + βg(n)
has the z transform
X(z) = αF(z) + βG(z)
where F(z) and G(z) are the z transforms of f(n) and g(n), respectively.
25
26
Multiplication By Ak
If X(z) is the z transform of x(k), then the z transform of ak
x(n) can be given by X(a-1
z):
Z[ak
x(n)] = X(a-1
z)
This can be proved as follows:
Z[an
x(n)] =
= X(a-1
z)
∑∑
∞
=
−−
∞
=
−
=
0
1
0
))(()(
n
n
n
nn
zanxznxa
27
Shifting Theorem
Also call real translation theorem. If x(t) = 0 for t < 0 and x(t) has the z transform X(z), then
Z[x(t-nT)] = z-n
X(z)
and
Z[x(t+nT)] =
n = zero or a positive integer



 − ∑
−
=
−
1
0
)()(
n
k
kn
zkTxzXz
28
EXAMPLE
Q. Find the z transforms of unit-step functions that are delayed by 1 sampling period and 4
sampling periods, respectively, as shown in figure (a) and (b) below
29
SOLUTION
Using the shifting theorem ,we have
Z [1(t-T)] = z-1
Z [1(t)] =
Also,
Z [1(t-4T)] = z-4
Z [1(t)] =
(Note that z-1
represents a delay of 1 sampling period T, regardless of the value of T.)
1
1
1
1
11
1
−
−
−
−
−
=
− z
z
z
z
1
4
1
4
11
1
−
−
−
−
−
=
− z
z
z
z
30
Q. Obtain the z transform of
Solution: Referring to Equation (2. 18), we have
Z [x(k-1)] = z-1
X(z)
The z transform of ak
is
Z[ak
] =
and so
Z [f(a)] = Z[ak-1
] =
where k = 1,2,3, ....



≤
=
=
−
0,0
....,3,2,1,
)(
1
k
ka
af
k
1
1
1
−
− az
1
1
1
1
11
1
−
−
−
−
−
=
− az
z
az
z
31
Complex Translation Theorem
If x(t) has the z transform X(z), then the z transform of e-at
x(t) can be given by X(z eat
).
To prove
Z [e-at
x(t)]
Thus, we see that replacing z in X(z) by z eat
gives the z transform of e- at
x(t).
)(
))((
)(
0
0
aT
k
kaT
k
kakT
zeX
zekTx
zekTx
=
=
=
∑
∑
∞
=
−
∞
=
−−
32
EXAMPLE
Q. By using the complex translation theorem, obtain the z transforms of:
1. e-at
sin ωt and
2. e-at
cosωt, respectively,
33
Solution
1. We know that
Z [sin ωt ] =
Using the complex translation theorem
Z
21
1
cos21
sin
−−
−
+− zTz
Tz
ω
ω
221
1
cos21
sin
]sin[ −−−−
−−
−
+−
=
zeTze
Tze
te aTaT
aT
at
ω
ω
ω
34
Solution
2. We know that
Z [cos ωt ]
Using the complex translation theorem
Z[e-at
cos ωt ]
21
1
cos21
cos1
−−
−
+−
−
=
zTz
Tz
ω
ω
221
1
cos21
cos1
−−−−
−−
+−
−
=
zeTze
Tze
aTaT
aT
ω
ω
35
Initial Value Theorem
• If x(t) has the z transform X(z) and if exists, then the initial value x(0) of x(t) or x(k) is
given by
• The initial value theorem is convenient for checking z transform calculations for possible
errors. Since x(0) is usually known, a check of the initial value by can easily spot
errors in X(z), if any exist.
)(lim zX
z ∞→
)(lim)0( zX
z
x
∞→
=
)(lim zX
z ∞→
36
EXAMPLE
Q. Determine the initial value x(0) if the z transform of x(t) is given by
By using the initial value theorem, we find
Referring to Example 2-2, notice that this X(z) was the z transform of
and thus x(0) = 0, which agrees with the result obtained earlier.
)1)(1(
)1(
)( 11
1
−−−
−−
−−
−
=
zez
ze
zX T
T
0
)1)(1(
)1(
lim)0( 11
1
=
−−
−
= −−−
−−
∞→ zez
ze
x T
T
z
t
etx −
−= 1)(
37
Final Value Theorem
• The final value of x(n), that is, the value of x(n) as approaches infinity, can be given by
(2. 27)
)]()1[(lim)(lim 1
1
zXznx
zn
−
→∞→
−=
38
EXAMPLE
Q. Determine the final value of
by using the final value theorem.
• By applying the final value theorem to the given X(z), we obtain
)(∞x
0,
1
1
1
1
)( 11
>
−
−
−
= −−−
a
zez
zX aT
[ ])()1(lim)( 1
1
zXzx
z
−
→
−=∞












−
−
−
−= −−−
−
→ 11
1
1 1
1
1
1
)1(lim
zez
z aTz
1
1
1
1lim 1
1
1
=





−
−
−= −−
−
→ ze
z
aTz
APPLICATION
39
• A closed-loop (or feedback) control system is shown in Figure.
• If you can describe your plant and your controller using linear difference equations, and if
the coefficients of the equations don't change from sample to sample, then your controller
and plant are linear and shift-invariant, and you can use the z transform.
40
• Suppose xn = output of the plant at sample time n
un = command to the DAC at sample time n
a and b = constants set by the design of the plant
• You can solve the behavior equation of the plant over time.
• Furthermore you can also investigate what happens when you add feedback to
the system.
• The z transform allows you to do both of these things.
• Deals with many common feedback control problems using continuous-time control.
• Also used in sampled-time control situations to deal with linear shift-invariant difference
equations.
TRANSFER FUNCTION
• The function H(Z) is called the “Transfer Function" of the system – it shows how the input
signal is transformed into the output signal.
H(Z)=Y(Z)/X(Z)
•  In Z domain, the Transfer Function of a system isn't affected by the nature of the input
signal, nor does it vary with time.
• We can predict the behavior of the motor using H(Z).
• Let's say we want to see what the motor will do if x goes from 0 to 1 at time n = 0, and
stays there forever. This is called the ‘unit step function’ and the Z-Transform of the unit
step response is H(Z)=Z/(Z-1).
• Thus we can know everything about the system behavior and avoid undesirable
situations.
SOFTWARE
• You can write software from the Z-Transform with utter ease.
• Like, if you have a Transfer Function of a system, then the software turns it into
a Z-domain equation which can then be converted into a difference
equation which in turn can be turned into a software very quickly.
• This saves the manual work and a software for a plant can be produced within
seconds.
INVERSE Z-TRANSFORM
44
The inverse z-transform can be derived by using Cauchy’s integral theorem. Start with
the z-transform
∑
∞
−∞=
−
=
n
n
znxzX )()(
Multiply both sides by zk-1
and integrate with a contour integral for which the contour
of integration encloses the origin and lies entirely within the region of convergence of
X(z):
transform.-zinversetheis)()(
2
1
2
1
)(
)(
2
1
)(
2
1
1
1
11
nxdzzzX
i
dzz
i
nx
dzznx
i
dzzzX
i
C
k
n C
kn
C n
kn
C
k
=
=
=
∫
∑ ∫
∫ ∑∫
−
∞
−∞=
−+−
∞
−∞=
−+−−
π
π
ππ
z-TRANSFORM IMPLEMENTATION USING MATLAB
45
MATLAB Code For Finding z-TRANSFORM
• MATLAB Symbolic Toolbox gives the z-transform of a function .
• MATLAB program for Z-Transform
Program Code
% z-Transform %
clc;
close all;
clear all;
syms 'n';
syms 'z';
x=input('Input the sequence to be converted');
a=symsum((x*(z^(-n))),n,0,2);
disp(‘z-Transform of the given sequence is ');
disp(a); 
46
Example of Output
•Input the sequence to be converted    [1 2 3 4]
•z-Transform of the given sequence is 
[ 1+1/z+1/z^2,  2+2/z+2/z^2,  3+3/z+3/z^2,  4+4/z+4/z^2]
47
MATLAB Code For Finding z-inverse Transform
48
• Output obtained : 1 4 5 -6 -32
• Therefore x (0) = 1, x(1) = = 4, x(2) 5, x(3) = -6, x(4) = -32
49
MATLAB Code For Pole And Zero Plot
• Pole-zero Diagram The MATLAB function “z-plane” can display the pole-zero
• Program Code
%Plotting zeros and poles of z-transform
clc;
close all;
clear all;
disp('For plotting poles and zeros');
b=input('Input the numerator polynomial coefficients');
a=input('Input the denominator polynomial coefficients');
[b,a]=eqtflength(b,a);
[z,p,k]=tf2zp(b,a);
zplane(z,p);
disp('zeros');
disp(z);
disp('poles');
disp(p);
disp('k');
disp(k);
50
• Example of Output
For plotting poles and zeros
Input the numerator polynomial coefficients[1 2 3 4]
Input the denominator polynomial coefficients[1 2 3]
zeros
  -1.6506          
  -0.1747 + 1.5469i
  -0.1747 - 1.5469i
poles
        0          
  -1.0000 + 1.4142i
  -1.0000 - 1.4142i
k
     1
51
THANK YOU

More Related Content

What's hot

Chapter2 - Linear Time-Invariant System
Chapter2 - Linear Time-Invariant SystemChapter2 - Linear Time-Invariant System
Chapter2 - Linear Time-Invariant SystemAttaporn Ninsuwan
 
Discrete Fourier Transform
Discrete Fourier TransformDiscrete Fourier Transform
Discrete Fourier TransformAbhishek Choksi
 
discrete time signals and systems
 discrete time signals and systems  discrete time signals and systems
discrete time signals and systems Zlatan Ahmadovic
 
Discreate time system and z transform
Discreate time system and z transformDiscreate time system and z transform
Discreate time system and z transformVIKAS KUMAR MANJHI
 
Dcs lec02 - z-transform
Dcs   lec02 - z-transformDcs   lec02 - z-transform
Dcs lec02 - z-transformAmr E. Mohamed
 
Dsp U Lec05 The Z Transform
Dsp U   Lec05 The Z TransformDsp U   Lec05 The Z Transform
Dsp U Lec05 The Z Transformtaha25
 
Signal classification of signal
Signal classification of signalSignal classification of signal
Signal classification of signal001Abhishek1
 
Fir filter design using windows
Fir filter design using windowsFir filter design using windows
Fir filter design using windowsSarang Joshi
 
Z TRANSFORM PROPERTIES AND INVERSE Z TRANSFORM
Z TRANSFORM PROPERTIES AND INVERSE Z TRANSFORMZ TRANSFORM PROPERTIES AND INVERSE Z TRANSFORM
Z TRANSFORM PROPERTIES AND INVERSE Z TRANSFORMTowfeeq Umar
 
fourier transforms
fourier transformsfourier transforms
fourier transformsUmang Gupta
 
Laplace Transformation & Its Application
Laplace Transformation & Its ApplicationLaplace Transformation & Its Application
Laplace Transformation & Its ApplicationChandra Kundu
 
3.Frequency Domain Representation of Signals and Systems
3.Frequency Domain Representation of Signals and Systems3.Frequency Domain Representation of Signals and Systems
3.Frequency Domain Representation of Signals and SystemsINDIAN NAVY
 
inverse z-transform ppt
inverse z-transform pptinverse z-transform ppt
inverse z-transform pptmihir jain
 
Digital control systems (dcs) lecture 18-19-20
Digital control systems (dcs) lecture 18-19-20Digital control systems (dcs) lecture 18-19-20
Digital control systems (dcs) lecture 18-19-20Ali Rind
 
Digital electronics logic families
Digital electronics logic familiesDigital electronics logic families
Digital electronics logic familiesBLESSINAR0
 
Application of fourier series
Application of fourier seriesApplication of fourier series
Application of fourier seriesGirish Dhareshwar
 

What's hot (20)

Z Transform
Z TransformZ Transform
Z Transform
 
Chapter2 - Linear Time-Invariant System
Chapter2 - Linear Time-Invariant SystemChapter2 - Linear Time-Invariant System
Chapter2 - Linear Time-Invariant System
 
Discrete Fourier Transform
Discrete Fourier TransformDiscrete Fourier Transform
Discrete Fourier Transform
 
OPERATIONS ON SIGNALS
OPERATIONS ON SIGNALSOPERATIONS ON SIGNALS
OPERATIONS ON SIGNALS
 
discrete time signals and systems
 discrete time signals and systems  discrete time signals and systems
discrete time signals and systems
 
Sampling theorem
Sampling theoremSampling theorem
Sampling theorem
 
Discreate time system and z transform
Discreate time system and z transformDiscreate time system and z transform
Discreate time system and z transform
 
Dcs lec02 - z-transform
Dcs   lec02 - z-transformDcs   lec02 - z-transform
Dcs lec02 - z-transform
 
Dsp U Lec05 The Z Transform
Dsp U   Lec05 The Z TransformDsp U   Lec05 The Z Transform
Dsp U Lec05 The Z Transform
 
Signal classification of signal
Signal classification of signalSignal classification of signal
Signal classification of signal
 
Fir filter design using windows
Fir filter design using windowsFir filter design using windows
Fir filter design using windows
 
Z transform
Z transformZ transform
Z transform
 
Z TRANSFORM PROPERTIES AND INVERSE Z TRANSFORM
Z TRANSFORM PROPERTIES AND INVERSE Z TRANSFORMZ TRANSFORM PROPERTIES AND INVERSE Z TRANSFORM
Z TRANSFORM PROPERTIES AND INVERSE Z TRANSFORM
 
fourier transforms
fourier transformsfourier transforms
fourier transforms
 
Laplace Transformation & Its Application
Laplace Transformation & Its ApplicationLaplace Transformation & Its Application
Laplace Transformation & Its Application
 
3.Frequency Domain Representation of Signals and Systems
3.Frequency Domain Representation of Signals and Systems3.Frequency Domain Representation of Signals and Systems
3.Frequency Domain Representation of Signals and Systems
 
inverse z-transform ppt
inverse z-transform pptinverse z-transform ppt
inverse z-transform ppt
 
Digital control systems (dcs) lecture 18-19-20
Digital control systems (dcs) lecture 18-19-20Digital control systems (dcs) lecture 18-19-20
Digital control systems (dcs) lecture 18-19-20
 
Digital electronics logic families
Digital electronics logic familiesDigital electronics logic families
Digital electronics logic families
 
Application of fourier series
Application of fourier seriesApplication of fourier series
Application of fourier series
 

Viewers also liked

Applications of Z transform
Applications of Z transformApplications of Z transform
Applications of Z transformAakankshaR
 
Digital Signal Processing Tutorial:Chapt 2 z transform
Digital Signal Processing Tutorial:Chapt 2 z transformDigital Signal Processing Tutorial:Chapt 2 z transform
Digital Signal Processing Tutorial:Chapt 2 z transformChandrashekhar Padole
 
Dsp U Lec06 The Z Transform And Its Application
Dsp U   Lec06 The Z Transform And Its ApplicationDsp U   Lec06 The Z Transform And Its Application
Dsp U Lec06 The Z Transform And Its Applicationtaha25
 
DSP_FOEHU - Lec 06 - The z-Transform
DSP_FOEHU - Lec 06 - The z-TransformDSP_FOEHU - Lec 06 - The z-Transform
DSP_FOEHU - Lec 06 - The z-TransformAmr E. Mohamed
 
An Efficient DSP Based Implementation of a Fast Convolution Approach with non...
An Efficient DSP Based Implementation of a Fast Convolution Approach with non...An Efficient DSP Based Implementation of a Fast Convolution Approach with non...
An Efficient DSP Based Implementation of a Fast Convolution Approach with non...a3labdsp
 
Neural nets: How regular expressions brought about deep learning
Neural nets: How regular expressions brought about deep learningNeural nets: How regular expressions brought about deep learning
Neural nets: How regular expressions brought about deep learningMatthew
 
Convolution techiniques for dummies like me
Convolution techiniques for dummies like meConvolution techiniques for dummies like me
Convolution techiniques for dummies like meKhan Nazir
 
Manegerial planing &amp; descion making
Manegerial planing &amp; descion makingManegerial planing &amp; descion making
Manegerial planing &amp; descion makingShimelis Birhanu
 
Deep Belief nets
Deep Belief netsDeep Belief nets
Deep Belief netsbutest
 
discrete time signals and systems
 discrete time signals and systems discrete time signals and systems
discrete time signals and systemsZlatan Ahmadovic
 
Control System Theory &amp; Design: Notes
Control System Theory &amp; Design: NotesControl System Theory &amp; Design: Notes
Control System Theory &amp; Design: Notesismail_hameduddin
 

Viewers also liked (20)

z transforms
z transformsz transforms
z transforms
 
Applications of Z transform
Applications of Z transformApplications of Z transform
Applications of Z transform
 
Z transform
 Z transform Z transform
Z transform
 
Digital Signal Processing Tutorial:Chapt 2 z transform
Digital Signal Processing Tutorial:Chapt 2 z transformDigital Signal Processing Tutorial:Chapt 2 z transform
Digital Signal Processing Tutorial:Chapt 2 z transform
 
Z transform ROC eng.Math
Z transform ROC eng.MathZ transform ROC eng.Math
Z transform ROC eng.Math
 
inverse z transform
inverse z transforminverse z transform
inverse z transform
 
One sided z transform
One sided z transformOne sided z transform
One sided z transform
 
Dsp U Lec06 The Z Transform And Its Application
Dsp U   Lec06 The Z Transform And Its ApplicationDsp U   Lec06 The Z Transform And Its Application
Dsp U Lec06 The Z Transform And Its Application
 
DSP_FOEHU - Lec 06 - The z-Transform
DSP_FOEHU - Lec 06 - The z-TransformDSP_FOEHU - Lec 06 - The z-Transform
DSP_FOEHU - Lec 06 - The z-Transform
 
MOOC
MOOCMOOC
MOOC
 
An Efficient DSP Based Implementation of a Fast Convolution Approach with non...
An Efficient DSP Based Implementation of a Fast Convolution Approach with non...An Efficient DSP Based Implementation of a Fast Convolution Approach with non...
An Efficient DSP Based Implementation of a Fast Convolution Approach with non...
 
Jay z ppt
Jay z pptJay z ppt
Jay z ppt
 
Neural nets: How regular expressions brought about deep learning
Neural nets: How regular expressions brought about deep learningNeural nets: How regular expressions brought about deep learning
Neural nets: How regular expressions brought about deep learning
 
Analog properties and Z-transform
Analog properties and Z-transformAnalog properties and Z-transform
Analog properties and Z-transform
 
Convolution techiniques for dummies like me
Convolution techiniques for dummies like meConvolution techiniques for dummies like me
Convolution techiniques for dummies like me
 
Manegerial planing &amp; descion making
Manegerial planing &amp; descion makingManegerial planing &amp; descion making
Manegerial planing &amp; descion making
 
FRENCH L' ALPHABET
FRENCH L' ALPHABETFRENCH L' ALPHABET
FRENCH L' ALPHABET
 
Deep Belief nets
Deep Belief netsDeep Belief nets
Deep Belief nets
 
discrete time signals and systems
 discrete time signals and systems discrete time signals and systems
discrete time signals and systems
 
Control System Theory &amp; Design: Notes
Control System Theory &amp; Design: NotesControl System Theory &amp; Design: Notes
Control System Theory &amp; Design: Notes
 

Similar to Z transfrm ppt

ADSP (17 Nov)week8.ppt
ADSP (17 Nov)week8.pptADSP (17 Nov)week8.ppt
ADSP (17 Nov)week8.pptAhmadZafar60
 
digital control Chapter 2 slide
digital control Chapter 2 slidedigital control Chapter 2 slide
digital control Chapter 2 slideasyrafjpk
 
"Z" TRANSFORM TOPIC REVIEW
"Z" TRANSFORM  TOPIC REVIEW"Z" TRANSFORM  TOPIC REVIEW
"Z" TRANSFORM TOPIC REVIEWSharmanya Korde
 
Frequency Analysis using Z Transform.pptx
Frequency Analysis  using Z Transform.pptxFrequency Analysis  using Z Transform.pptx
Frequency Analysis using Z Transform.pptxDrPVIngole
 
dsp dsp by Dr. k Udaya kumar power point
dsp dsp by Dr. k Udaya kumar power pointdsp dsp by Dr. k Udaya kumar power point
dsp dsp by Dr. k Udaya kumar power pointAnujKumar734472
 
Digital Signal Processing and the z-transform
Digital Signal Processing and the  z-transformDigital Signal Processing and the  z-transform
Digital Signal Processing and the z-transformRowenaDulay1
 
The inverse Z-Transform.pdf
The inverse Z-Transform.pdfThe inverse Z-Transform.pdf
The inverse Z-Transform.pdfAbirDey9
 
Z transform
Z transformZ transform
Z transformnirav34
 
Best to be presented z-transform
Best to be presented   z-transformBest to be presented   z-transform
Best to be presented z-transformKaransinh Parmar
 
Z trasnform & Inverse Z-transform in matlab
Z trasnform & Inverse Z-transform in matlabZ trasnform & Inverse Z-transform in matlab
Z trasnform & Inverse Z-transform in matlabHasnain Yaseen
 
Signals and systems3 ppt
Signals and systems3 pptSignals and systems3 ppt
Signals and systems3 pptEngr umar
 
Z Transform, Causal, Anti-Causal and Two sided sequence, Region of Convergenc...
Z Transform, Causal, Anti-Causal and Two sided sequence, Region of Convergenc...Z Transform, Causal, Anti-Causal and Two sided sequence, Region of Convergenc...
Z Transform, Causal, Anti-Causal and Two sided sequence, Region of Convergenc...Waqas Afzal
 

Similar to Z transfrm ppt (20)

ADSP (17 Nov)week8.ppt
ADSP (17 Nov)week8.pptADSP (17 Nov)week8.ppt
ADSP (17 Nov)week8.ppt
 
ADSP (17 Nov).ppt
ADSP (17 Nov).pptADSP (17 Nov).ppt
ADSP (17 Nov).ppt
 
ch3-4
ch3-4ch3-4
ch3-4
 
digital control Chapter 2 slide
digital control Chapter 2 slidedigital control Chapter 2 slide
digital control Chapter 2 slide
 
"Z" TRANSFORM TOPIC REVIEW
"Z" TRANSFORM  TOPIC REVIEW"Z" TRANSFORM  TOPIC REVIEW
"Z" TRANSFORM TOPIC REVIEW
 
Frequency Analysis using Z Transform.pptx
Frequency Analysis  using Z Transform.pptxFrequency Analysis  using Z Transform.pptx
Frequency Analysis using Z Transform.pptx
 
dsp dsp by Dr. k Udaya kumar power point
dsp dsp by Dr. k Udaya kumar power pointdsp dsp by Dr. k Udaya kumar power point
dsp dsp by Dr. k Udaya kumar power point
 
Digital Signal Processing and the z-transform
Digital Signal Processing and the  z-transformDigital Signal Processing and the  z-transform
Digital Signal Processing and the z-transform
 
The inverse Z-Transform.pdf
The inverse Z-Transform.pdfThe inverse Z-Transform.pdf
The inverse Z-Transform.pdf
 
Z transform
Z transformZ transform
Z transform
 
z transform.pptx
z transform.pptxz transform.pptx
z transform.pptx
 
Digital signal processing part2
Digital signal processing part2Digital signal processing part2
Digital signal processing part2
 
Transforms
TransformsTransforms
Transforms
 
Best to be presented z-transform
Best to be presented   z-transformBest to be presented   z-transform
Best to be presented z-transform
 
Z trasnform & Inverse Z-transform in matlab
Z trasnform & Inverse Z-transform in matlabZ trasnform & Inverse Z-transform in matlab
Z trasnform & Inverse Z-transform in matlab
 
Z transform
Z transformZ transform
Z transform
 
Signal3
Signal3Signal3
Signal3
 
Signals and systems3 ppt
Signals and systems3 pptSignals and systems3 ppt
Signals and systems3 ppt
 
14210111030
1421011103014210111030
14210111030
 
Z Transform, Causal, Anti-Causal and Two sided sequence, Region of Convergenc...
Z Transform, Causal, Anti-Causal and Two sided sequence, Region of Convergenc...Z Transform, Causal, Anti-Causal and Two sided sequence, Region of Convergenc...
Z Transform, Causal, Anti-Causal and Two sided sequence, Region of Convergenc...
 

Recently uploaded

Unleashing the Power of the SORA AI lastest leap
Unleashing the Power of the SORA AI lastest leapUnleashing the Power of the SORA AI lastest leap
Unleashing the Power of the SORA AI lastest leapRishantSharmaFr
 
Unit 1 - Soil Classification and Compaction.pdf
Unit 1 - Soil Classification and Compaction.pdfUnit 1 - Soil Classification and Compaction.pdf
Unit 1 - Soil Classification and Compaction.pdfRagavanV2
 
Call Girls Wakad Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Wakad Call Me 7737669865 Budget Friendly No Advance BookingCall Girls Wakad Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Wakad Call Me 7737669865 Budget Friendly No Advance Bookingroncy bisnoi
 
Generative AI or GenAI technology based PPT
Generative AI or GenAI technology based PPTGenerative AI or GenAI technology based PPT
Generative AI or GenAI technology based PPTbhaskargani46
 
Double rodded leveling 1 pdf activity 01
Double rodded leveling 1 pdf activity 01Double rodded leveling 1 pdf activity 01
Double rodded leveling 1 pdf activity 01KreezheaRecto
 
UNIT - IV - Air Compressors and its Performance
UNIT - IV - Air Compressors and its PerformanceUNIT - IV - Air Compressors and its Performance
UNIT - IV - Air Compressors and its Performancesivaprakash250
 
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXssuser89054b
 
Thermal Engineering Unit - I & II . ppt
Thermal Engineering  Unit - I & II . pptThermal Engineering  Unit - I & II . ppt
Thermal Engineering Unit - I & II . pptDineshKumar4165
 
University management System project report..pdf
University management System project report..pdfUniversity management System project report..pdf
University management System project report..pdfKamal Acharya
 
Thermal Engineering -unit - III & IV.ppt
Thermal Engineering -unit - III & IV.pptThermal Engineering -unit - III & IV.ppt
Thermal Engineering -unit - III & IV.pptDineshKumar4165
 
Call Girls Pimpri Chinchwad Call Me 7737669865 Budget Friendly No Advance Boo...
Call Girls Pimpri Chinchwad Call Me 7737669865 Budget Friendly No Advance Boo...Call Girls Pimpri Chinchwad Call Me 7737669865 Budget Friendly No Advance Boo...
Call Girls Pimpri Chinchwad Call Me 7737669865 Budget Friendly No Advance Boo...roncy bisnoi
 
Navigating Complexity: The Role of Trusted Partners and VIAS3D in Dassault Sy...
Navigating Complexity: The Role of Trusted Partners and VIAS3D in Dassault Sy...Navigating Complexity: The Role of Trusted Partners and VIAS3D in Dassault Sy...
Navigating Complexity: The Role of Trusted Partners and VIAS3D in Dassault Sy...Arindam Chakraborty, Ph.D., P.E. (CA, TX)
 
data_management_and _data_science_cheat_sheet.pdf
data_management_and _data_science_cheat_sheet.pdfdata_management_and _data_science_cheat_sheet.pdf
data_management_and _data_science_cheat_sheet.pdfJiananWang21
 
Double Revolving field theory-how the rotor develops torque
Double Revolving field theory-how the rotor develops torqueDouble Revolving field theory-how the rotor develops torque
Double Revolving field theory-how the rotor develops torqueBhangaleSonal
 
VIP Call Girls Palanpur 7001035870 Whatsapp Number, 24/07 Booking
VIP Call Girls Palanpur 7001035870 Whatsapp Number, 24/07 BookingVIP Call Girls Palanpur 7001035870 Whatsapp Number, 24/07 Booking
VIP Call Girls Palanpur 7001035870 Whatsapp Number, 24/07 Bookingdharasingh5698
 
Online banking management system project.pdf
Online banking management system project.pdfOnline banking management system project.pdf
Online banking management system project.pdfKamal Acharya
 
ONLINE FOOD ORDER SYSTEM PROJECT REPORT.pdf
ONLINE FOOD ORDER SYSTEM PROJECT REPORT.pdfONLINE FOOD ORDER SYSTEM PROJECT REPORT.pdf
ONLINE FOOD ORDER SYSTEM PROJECT REPORT.pdfKamal Acharya
 

Recently uploaded (20)

Unleashing the Power of the SORA AI lastest leap
Unleashing the Power of the SORA AI lastest leapUnleashing the Power of the SORA AI lastest leap
Unleashing the Power of the SORA AI lastest leap
 
Unit 1 - Soil Classification and Compaction.pdf
Unit 1 - Soil Classification and Compaction.pdfUnit 1 - Soil Classification and Compaction.pdf
Unit 1 - Soil Classification and Compaction.pdf
 
Call Girls Wakad Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Wakad Call Me 7737669865 Budget Friendly No Advance BookingCall Girls Wakad Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Wakad Call Me 7737669865 Budget Friendly No Advance Booking
 
Generative AI or GenAI technology based PPT
Generative AI or GenAI technology based PPTGenerative AI or GenAI technology based PPT
Generative AI or GenAI technology based PPT
 
Double rodded leveling 1 pdf activity 01
Double rodded leveling 1 pdf activity 01Double rodded leveling 1 pdf activity 01
Double rodded leveling 1 pdf activity 01
 
UNIT - IV - Air Compressors and its Performance
UNIT - IV - Air Compressors and its PerformanceUNIT - IV - Air Compressors and its Performance
UNIT - IV - Air Compressors and its Performance
 
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
 
Thermal Engineering Unit - I & II . ppt
Thermal Engineering  Unit - I & II . pptThermal Engineering  Unit - I & II . ppt
Thermal Engineering Unit - I & II . ppt
 
University management System project report..pdf
University management System project report..pdfUniversity management System project report..pdf
University management System project report..pdf
 
Thermal Engineering -unit - III & IV.ppt
Thermal Engineering -unit - III & IV.pptThermal Engineering -unit - III & IV.ppt
Thermal Engineering -unit - III & IV.ppt
 
Call Girls Pimpri Chinchwad Call Me 7737669865 Budget Friendly No Advance Boo...
Call Girls Pimpri Chinchwad Call Me 7737669865 Budget Friendly No Advance Boo...Call Girls Pimpri Chinchwad Call Me 7737669865 Budget Friendly No Advance Boo...
Call Girls Pimpri Chinchwad Call Me 7737669865 Budget Friendly No Advance Boo...
 
Navigating Complexity: The Role of Trusted Partners and VIAS3D in Dassault Sy...
Navigating Complexity: The Role of Trusted Partners and VIAS3D in Dassault Sy...Navigating Complexity: The Role of Trusted Partners and VIAS3D in Dassault Sy...
Navigating Complexity: The Role of Trusted Partners and VIAS3D in Dassault Sy...
 
(INDIRA) Call Girl Aurangabad Call Now 8617697112 Aurangabad Escorts 24x7
(INDIRA) Call Girl Aurangabad Call Now 8617697112 Aurangabad Escorts 24x7(INDIRA) Call Girl Aurangabad Call Now 8617697112 Aurangabad Escorts 24x7
(INDIRA) Call Girl Aurangabad Call Now 8617697112 Aurangabad Escorts 24x7
 
data_management_and _data_science_cheat_sheet.pdf
data_management_and _data_science_cheat_sheet.pdfdata_management_and _data_science_cheat_sheet.pdf
data_management_and _data_science_cheat_sheet.pdf
 
Double Revolving field theory-how the rotor develops torque
Double Revolving field theory-how the rotor develops torqueDouble Revolving field theory-how the rotor develops torque
Double Revolving field theory-how the rotor develops torque
 
Call Girls in Ramesh Nagar Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
Call Girls in Ramesh Nagar Delhi 💯 Call Us 🔝9953056974 🔝 Escort ServiceCall Girls in Ramesh Nagar Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
Call Girls in Ramesh Nagar Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
 
VIP Call Girls Palanpur 7001035870 Whatsapp Number, 24/07 Booking
VIP Call Girls Palanpur 7001035870 Whatsapp Number, 24/07 BookingVIP Call Girls Palanpur 7001035870 Whatsapp Number, 24/07 Booking
VIP Call Girls Palanpur 7001035870 Whatsapp Number, 24/07 Booking
 
Online banking management system project.pdf
Online banking management system project.pdfOnline banking management system project.pdf
Online banking management system project.pdf
 
ONLINE FOOD ORDER SYSTEM PROJECT REPORT.pdf
ONLINE FOOD ORDER SYSTEM PROJECT REPORT.pdfONLINE FOOD ORDER SYSTEM PROJECT REPORT.pdf
ONLINE FOOD ORDER SYSTEM PROJECT REPORT.pdf
 
(INDIRA) Call Girl Bhosari Call Now 8617697112 Bhosari Escorts 24x7
(INDIRA) Call Girl Bhosari Call Now 8617697112 Bhosari Escorts 24x7(INDIRA) Call Girl Bhosari Call Now 8617697112 Bhosari Escorts 24x7
(INDIRA) Call Girl Bhosari Call Now 8617697112 Bhosari Escorts 24x7
 

Z transfrm ppt

  • 2. CONTENTS • z-transform • Region Of Convergence • Properties Of Region Of Convergence • z-transform Of Common Sequence • Properties And Theorems • Application • Inverse z- Transform • z-transform Implementation Using Matlab 2
  • 3. Why z-Transform ? • The z transform is a mathematical tool commonly used for the analysis and synthesis of discrete-time control systems. • The z transform in discrete-time systems play a similar role as the Laplace transform in continuous-time systems 3
  • 4. z-Transform • The z-transform is the most general concept for the transformation of discrete-time series. • The Laplace transform is the more general concept for the transformation of continuous time processes. 4 TRANSFORM
  • 5. The Transforms 5 The Laplace transform of a function f(t): ∫ ∞ − = 0 )()( dtetfsF st The one-sided z-transform of a function x(n): ∑ ∞ = − = 0 )()( n n znxzX The two-sided z-transform of a function x(n): ∑ ∞ −∞= − = n n znxzX )()(
  • 6. • z-transform comes about same way as CTFT (Continuous Time Fourier Transform) in which the variable is Laplace Transform ►CTFT is generalized to Laplace Transform by going from j σ + j C.T.F.T L.T Where , s = σ + j ; σ = real part 6 ω ω generalized to ω ω ω
  • 7. Motivation For C.T.F.T To L.T j σ + j CTFT L.T Where , s = σ + j ; σ = real part This enlarges the capability of the transform to handle much wider class of signal and system .This was the motivation for going to Laplace transform from Continuous time fourier transform. 7 ω ω ω
  • 8. • In the similar manner z transform is generalized from D.T.F.T ( Discrete Time Fourier Transform ) . …………………(1) • D.T.F.T of the sequence x(n) is given by eqation no . (1) 8 ∑ ∞ −∞= − n nj enx ω )()(nx D.T.F.T ∑ ∞ −∞= − = n nj enxX ω ω )()(
  • 9. • Here we notice that variable in this D.T.F.T obtained in eq. no. 1. is 9 ωj e− ωj er. ωj e generalized to Magnitude =1 Here we introduce ‘r’
  • 10. • Where r may be 1 If r = 1 : D.T.F.T If r not equal to 1 : New transform : z-transform • In Laplace transform we worked on the j realization to .We worked on rectangular coordinates. • Whereas in z- transform we work in polar coordinates. We specify complex by its distance from the origin which is ‘r’ and angle it makes with the +ve real axis i.e ‘ ‘. 10 ω σ + jω ωj e ω Z = ejω ω
  • 11. • In eq.1 if we give a new name say ‘z’. • If we wish to generalize D.T.F.T into a new transform then is replaced by z • Then • The z- transform reduces to the Fourier transform when the magnitude of the transform variable z is unity. 11 ωj er. ωj e ∑ ∞ −∞= − = n nj enxX ω ω )()( ∑ ∞ −∞= − = n n znxzX )()(
  • 12. POLES AND ZEROS 12 • When X(z) is a rational function, i.e., a ration of polynomials in z, then:  The roots of the numerator polynomial are referred to as the zeros of X(z), and  The roots of the denominator polynomial are referred to as the poles of X(z). • Note that no poles of X(z) can occur within the region of convergence since the z- transform does not converge at a pole. • Furthermore, the region of convergence is bounded by poles.
  • 13. REGION OF CONVERGENCE 13 • The z-transform of x(n) can be viewed as the Fourier transform of x(n) multiplied by an exponential sequence r-n , and the z-transform may converge even when the Fourier transform does not. • By redefining convergence, it is possible that the Fourier transform may converge when the z-transform does not. • For the Fourier transform to converge, the sequence must have finite energy, or: ∞<∑ ∞ −∞= − n n rnx )(
  • 14. CONVERGENCE, CONTINUED 14 ∑ ∞ −∞= − = n n znxzX )()( • The power series for the z-transform is called a Laurent series: • The Laurent series, and therefore the z-transform, represents an analytic function at every point inside the region of convergence, and therefore the z-transform and all its derivatives must be continuous functions of z inside the region of convergence. • In general, the Laurent series will converge in an annular region of the z-plane.
  • 15. EXAMPLE 15 )()( nuanx n = The z-transform is given by: ∑∑ ∞ = − ∞ −∞= − == 0 1 )()()( n n n nn azznuazX Which converges to: azfor az z az zX > − = − = −1 1 1 )( Clearly, X(z) has a zero at z = 0 and a pole at z = a. × a Region of convergence
  • 16. 16 • Stable System : A system is said to be stable if ∞<∑ ∞ −∞=k kh )( Which means that a bounded input will not yield an unbounded output. •Causal System : A causal system is one in which changes in output do not precede changes in input. In other words, [ ] [ ] .for)()(then for)()(If 021 021 nnnxTnxT nnnxnx <= ≤= Linear, shift-invariant systems are causal if h(n) = 0 for n < 0.
  • 17. PROPERTIES OF ROC 17 • The region of convergence (ROC) for a given DT transfer function is a disk or annulus which contains no poles. In general, the ROC is not unique, and the particular ROC in any given case depends on whether the system is causal or anti-causal. • If the ROC includes the unit circle, then the system is bounded-input, bounded-output (BIBO) stable. • If the ROC extends outward from the pole with the largest (but not infinite) magnitude, then the system has a right-sided impulse response.
  • 18. • If the ROC extends outward from the pole with the largest magnitude and there is no pole at infinity, then the system is causal. • If the ROC extends inward from the pole with the smallest (nonzero) magnitude, then the system is anti-causal. 18
  • 19. • If you need stability then the ROC must contain the unit circle. • If you need a causal system then the ROC must contain infinity and the system function will be a right-sided sequence. 19
  • 20. • If you need an anti-causal system then the ROC must contain the origin and the system function will be a left-sided sequence. 20
  • 21. • If you need both, stability and causality, all the poles of the system function must be inside the unit circle. The unique x[n] can then be found 21
  • 22. z-Transform Of Common Sequence 22
  • 23. 23 PROPERTIES AND THEOREMS  Multiplication by a Constant  Linearity of the z Transform  Multiplication by ak  Shifting Theorem  Complex Translation Theorem  Initial Value Theorem  Final Value Theorem
  • 24. Multiplication by a constant If X(z) is the z transform of x(n), then Z [ax(n)] = a Z[x(n)] = a X(z) where a is a constant. To prove this, note that by definition Z [ax(n)] = 24 ∑∑ ∞ = − ∞ = − == 00 )()()( n n n n zaXznxaznax
  • 25. Linearity of the z transform The z transform possesses an important property: linearity. This means that, if f(n) and g(n) are z-transformable and α and β are scalars, then x(n) formed by a linear combination x(n) = αf(n) + βg(n) has the z transform X(z) = αF(z) + βG(z) where F(z) and G(z) are the z transforms of f(n) and g(n), respectively. 25
  • 26. 26 Multiplication By Ak If X(z) is the z transform of x(k), then the z transform of ak x(n) can be given by X(a-1 z): Z[ak x(n)] = X(a-1 z) This can be proved as follows: Z[an x(n)] = = X(a-1 z) ∑∑ ∞ = −− ∞ = − = 0 1 0 ))(()( n n n nn zanxznxa
  • 27. 27 Shifting Theorem Also call real translation theorem. If x(t) = 0 for t < 0 and x(t) has the z transform X(z), then Z[x(t-nT)] = z-n X(z) and Z[x(t+nT)] = n = zero or a positive integer     − ∑ − = − 1 0 )()( n k kn zkTxzXz
  • 28. 28 EXAMPLE Q. Find the z transforms of unit-step functions that are delayed by 1 sampling period and 4 sampling periods, respectively, as shown in figure (a) and (b) below
  • 29. 29 SOLUTION Using the shifting theorem ,we have Z [1(t-T)] = z-1 Z [1(t)] = Also, Z [1(t-4T)] = z-4 Z [1(t)] = (Note that z-1 represents a delay of 1 sampling period T, regardless of the value of T.) 1 1 1 1 11 1 − − − − − = − z z z z 1 4 1 4 11 1 − − − − − = − z z z z
  • 30. 30 Q. Obtain the z transform of Solution: Referring to Equation (2. 18), we have Z [x(k-1)] = z-1 X(z) The z transform of ak is Z[ak ] = and so Z [f(a)] = Z[ak-1 ] = where k = 1,2,3, ....    ≤ = = − 0,0 ....,3,2,1, )( 1 k ka af k 1 1 1 − − az 1 1 1 1 11 1 − − − − − = − az z az z
  • 31. 31 Complex Translation Theorem If x(t) has the z transform X(z), then the z transform of e-at x(t) can be given by X(z eat ). To prove Z [e-at x(t)] Thus, we see that replacing z in X(z) by z eat gives the z transform of e- at x(t). )( ))(( )( 0 0 aT k kaT k kakT zeX zekTx zekTx = = = ∑ ∑ ∞ = − ∞ = −−
  • 32. 32 EXAMPLE Q. By using the complex translation theorem, obtain the z transforms of: 1. e-at sin ωt and 2. e-at cosωt, respectively,
  • 33. 33 Solution 1. We know that Z [sin ωt ] = Using the complex translation theorem Z 21 1 cos21 sin −− − +− zTz Tz ω ω 221 1 cos21 sin ]sin[ −−−− −− − +− = zeTze Tze te aTaT aT at ω ω ω
  • 34. 34 Solution 2. We know that Z [cos ωt ] Using the complex translation theorem Z[e-at cos ωt ] 21 1 cos21 cos1 −− − +− − = zTz Tz ω ω 221 1 cos21 cos1 −−−− −− +− − = zeTze Tze aTaT aT ω ω
  • 35. 35 Initial Value Theorem • If x(t) has the z transform X(z) and if exists, then the initial value x(0) of x(t) or x(k) is given by • The initial value theorem is convenient for checking z transform calculations for possible errors. Since x(0) is usually known, a check of the initial value by can easily spot errors in X(z), if any exist. )(lim zX z ∞→ )(lim)0( zX z x ∞→ = )(lim zX z ∞→
  • 36. 36 EXAMPLE Q. Determine the initial value x(0) if the z transform of x(t) is given by By using the initial value theorem, we find Referring to Example 2-2, notice that this X(z) was the z transform of and thus x(0) = 0, which agrees with the result obtained earlier. )1)(1( )1( )( 11 1 −−− −− −− − = zez ze zX T T 0 )1)(1( )1( lim)0( 11 1 = −− − = −−− −− ∞→ zez ze x T T z t etx − −= 1)(
  • 37. 37 Final Value Theorem • The final value of x(n), that is, the value of x(n) as approaches infinity, can be given by (2. 27) )]()1[(lim)(lim 1 1 zXznx zn − →∞→ −=
  • 38. 38 EXAMPLE Q. Determine the final value of by using the final value theorem. • By applying the final value theorem to the given X(z), we obtain )(∞x 0, 1 1 1 1 )( 11 > − − − = −−− a zez zX aT [ ])()1(lim)( 1 1 zXzx z − → −=∞             − − − −= −−− − → 11 1 1 1 1 1 1 )1(lim zez z aTz 1 1 1 1lim 1 1 1 =      − − −= −− − → ze z aTz
  • 39. APPLICATION 39 • A closed-loop (or feedback) control system is shown in Figure. • If you can describe your plant and your controller using linear difference equations, and if the coefficients of the equations don't change from sample to sample, then your controller and plant are linear and shift-invariant, and you can use the z transform.
  • 40. 40 • Suppose xn = output of the plant at sample time n un = command to the DAC at sample time n a and b = constants set by the design of the plant • You can solve the behavior equation of the plant over time. • Furthermore you can also investigate what happens when you add feedback to the system. • The z transform allows you to do both of these things.
  • 41. • Deals with many common feedback control problems using continuous-time control. • Also used in sampled-time control situations to deal with linear shift-invariant difference equations.
  • 42. TRANSFER FUNCTION • The function H(Z) is called the “Transfer Function" of the system – it shows how the input signal is transformed into the output signal. H(Z)=Y(Z)/X(Z) •  In Z domain, the Transfer Function of a system isn't affected by the nature of the input signal, nor does it vary with time. • We can predict the behavior of the motor using H(Z). • Let's say we want to see what the motor will do if x goes from 0 to 1 at time n = 0, and stays there forever. This is called the ‘unit step function’ and the Z-Transform of the unit step response is H(Z)=Z/(Z-1). • Thus we can know everything about the system behavior and avoid undesirable situations.
  • 43. SOFTWARE • You can write software from the Z-Transform with utter ease. • Like, if you have a Transfer Function of a system, then the software turns it into a Z-domain equation which can then be converted into a difference equation which in turn can be turned into a software very quickly. • This saves the manual work and a software for a plant can be produced within seconds.
  • 44. INVERSE Z-TRANSFORM 44 The inverse z-transform can be derived by using Cauchy’s integral theorem. Start with the z-transform ∑ ∞ −∞= − = n n znxzX )()( Multiply both sides by zk-1 and integrate with a contour integral for which the contour of integration encloses the origin and lies entirely within the region of convergence of X(z): transform.-zinversetheis)()( 2 1 2 1 )( )( 2 1 )( 2 1 1 1 11 nxdzzzX i dzz i nx dzznx i dzzzX i C k n C kn C n kn C k = = = ∫ ∑ ∫ ∫ ∑∫ − ∞ −∞= −+− ∞ −∞= −+−− π π ππ
  • 46. MATLAB Code For Finding z-TRANSFORM • MATLAB Symbolic Toolbox gives the z-transform of a function . • MATLAB program for Z-Transform Program Code % z-Transform % clc; close all; clear all; syms 'n'; syms 'z'; x=input('Input the sequence to be converted'); a=symsum((x*(z^(-n))),n,0,2); disp(‘z-Transform of the given sequence is '); disp(a);  46
  • 47. Example of Output •Input the sequence to be converted    [1 2 3 4] •z-Transform of the given sequence is  [ 1+1/z+1/z^2,  2+2/z+2/z^2,  3+3/z+3/z^2,  4+4/z+4/z^2] 47
  • 48. MATLAB Code For Finding z-inverse Transform 48
  • 49. • Output obtained : 1 4 5 -6 -32 • Therefore x (0) = 1, x(1) = = 4, x(2) 5, x(3) = -6, x(4) = -32 49
  • 50. MATLAB Code For Pole And Zero Plot • Pole-zero Diagram The MATLAB function “z-plane” can display the pole-zero • Program Code %Plotting zeros and poles of z-transform clc; close all; clear all; disp('For plotting poles and zeros'); b=input('Input the numerator polynomial coefficients'); a=input('Input the denominator polynomial coefficients'); [b,a]=eqtflength(b,a); [z,p,k]=tf2zp(b,a); zplane(z,p); disp('zeros'); disp(z); disp('poles'); disp(p); disp('k'); disp(k); 50
  • 51. • Example of Output For plotting poles and zeros Input the numerator polynomial coefficients[1 2 3 4] Input the denominator polynomial coefficients[1 2 3] zeros   -1.6506             -0.1747 + 1.5469i   -0.1747 - 1.5469i poles         0             -1.0000 + 1.4142i   -1.0000 - 1.4142i k      1 51