SlideShare a Scribd company logo
1 of 16
The Inverse z-Transform
In science one tries to tell people, in such a way
as to be understood by everyone, something
that no one ever knew before.
But in poetry, it's the exact opposite.
Paul Dirac
Content and Figures are from Discrete-Time Signal Processing, 2e by Oppenheim, Shafer, and Buck, ©1999-2000 Prentice Hall Inc.
351M Digital Signal Processing 2
The Inverse Z-Transform
• Formal inverse z-transform is based on a Cauchy integral
• Less formal ways sufficient most of the time
– Inspection method
– Partial fraction expansion
– Power series expansion
• Inspection Method
– Make use of known z-transform pairs such as
– Example: The inverse z-transform of
[ ] az
az1
1
nua 1
Zn
>
−
 →← −
( ) [ ] [ ]nu
2
1
nx
2
1
z
z
2
1
1
1
zX
n
1






=→>
−
=
−
351M Digital Signal Processing 3
Inverse Z-Transform by Partial Fraction Expansion
• Assume that a given z-transform can be expressed as
• Apply partial fractional expansion
• First term exist only if M>N
– Br is obtained by long division
• Second term represents all first order poles
• Third term represents an order s pole
– There will be a similar term for every high-order pole
• Each term can be inverse transformed by inspection
( )
∑
∑
=
−
=
−
= N
0k
k
k
M
0k
k
k
za
zb
zX
( )
( )∑∑∑ =
−
≠=
−
−
=
−
−
+
−
+=
s
1m
m1
i
m
N
ik,1k
1
k
k
NM
0r
r
r
zd1
C
zd1
A
zBzX
351M Digital Signal Processing 4
Partial Fractional Expression
• Coefficients are given as
• Easier to understand with examples
( )
( )∑∑∑ =
−
≠=
−
−
=
−
−
+
−
+=
s
1m
m1
i
m
N
ik,1k
1
k
k
NM
0r
r
r
zd1
C
zd1
A
zBzX
( ) ( ) kdz
1
kk zXzd1A =
−
−=
( ) ( )
( ) ( )[ ] 1
idw
1s
ims
ms
ms
i
m wXwd1
dw
d
d!ms
1
C
−
=
−
−
−
−






−
−−
=
351M Digital Signal Processing 5
Example: 2nd
Order Z-Transform
– Order of numerator is smaller than denominator (in terms of z-1
)
– No higher order pole
( )
2
1
z:ROC
z
2
1
1z
4
1
1
1
zX
11
>






−





−
=
−−
( )






−
+






−
=
−− 1
2
1
1
z
2
1
1
A
z
4
1
1
A
zX
( ) 1
4
1
2
1
1
1
zXz
4
1
1A 1
4
1
z
1
1 −=














−
=





−= −
=
−
( ) 2
2
1
4
1
1
1
zXz
2
1
1A 1
2
1
z
1
2 =














−
=





−= −
=
−
351M Digital Signal Processing 6
Example Continued
• ROC extends to infinity
– Indicates right sided sequence
( )
2
1
z
z
2
1
1
2
z
4
1
1
1
zX
11
>






−
+






−
−
=
−−
[ ] [ ] [ ]nu
4
1
-nu
2
1
2nx
nn












=
351M Digital Signal Processing 7
Example #2
• Long division to obtain Bo
( ) ( )
( )
1z
z1z
2
1
1
z1
z
2
1
z
2
3
1
zz21
zX
11
21
21
21
>
−





−
+
=
+−
++
=
−−
−
−−
−−
1z5
2z3z
2
1z2z1z
2
3
z
2
1
1
12
1212
−
+−
+++−
−
−−
−−−−
( )
( )11
1
z1z
2
1
1
z51
2zX
−−
−
−





−
+−
+=
( ) 1
2
1
1
z1
A
z
2
1
1
A
2zX −
− −
+
−
+=
( ) 9zXz
2
1
1A
2
1
z
1
1 −=





−=
=
−
( ) ( ) 8zXz1A
1z
1
2 =−=
=
−
351M Digital Signal Processing 8
Example #2 Continued
• ROC extends to infinity
– Indicates right-sides sequence
( ) 1z
z1
8
z
2
1
1
9
2zX 1
1
>
−
+
−
−= −
−
[ ] [ ] [ ] [ ]n8u-nu
2
1
9n2nx
n






−δ=
351M Digital Signal Processing 9
Inverse Z-Transform by Power Series Expansion
• The z-transform is power series
• In expanded form
• Z-transforms of this form can generally be inversed easily
• Especially useful for finite-length series
• Example
( ) [ ]∑
∞
−∞=
−
=
n
n
znxzX
( ) [ ] [ ] [ ] [ ] [ ]  ++++−+−+= −− 2112
z2xz1x0xz1xz2xzX
( ) ( )( )
12
1112
z
2
1
1z
2
1
z
z1z1z
2
1
1zzX
−
−−−
+−−=
−+





−=
[ ] [ ] [ ] [ ] [ ]1n
2
1
n1n
2
1
2nnx −δ+δ−+δ−+δ=
[ ]









=
=
=−
−=−
−=
=
2n0
1n
2
1
0n1
1n
2
1
2n1
nx
351M Digital Signal Processing 10
Z-Transform Properties: Linearity
• Notation
• Linearity
– Note that the ROC of combined sequence may be larger than
either ROC
– This would happen if some pole/zero cancellation occurs
– Example:
• Both sequences are right-sided
• Both sequences have a pole z=a
• Both have a ROC defined as |z|>|a|
• In the combined sequence the pole at z=a cancels with a zero at z=a
• The combined ROC is the entire z plane except z=0
• We did make use of this property already, where?
[ ] ( ) x
Z
RROCzXnx = →←
[ ] [ ] ( ) ( ) 21 xx21
Z
21 RRROCzbXzaXnbxnax ∩=+ →←+
[ ] [ ] [ ]N-nua-nuanx nn
=
351M Digital Signal Processing 11
Z-Transform Properties: Time Shifting
• Here no is an integer
– If positive the sequence is shifted right
– If negative the sequence is shifted left
• The ROC can change the new term may
– Add or remove poles at z=0 or z=∞
• Example
[ ] ( ) x
nZ
o RROCzXznnx o
= →←− −
( )
4
1
z
z
4
1
1
1
zzX
1
1
>












−
=
−
−
[ ] [ ]1-nu
4
1
nx
1-n






=
351M Digital Signal Processing 12
Z-Transform Properties: Multiplication by Exponential
• ROC is scaled by |zo|
• All pole/zero locations are scaled
• If zo is a positive real number: z-plane shrinks or expands
• If zo is a complex number with unit magnitude it rotates
• Example: We know the z-transform pair
• Let’s find the z-transform of
[ ] ( ) xoo
Zn
o RzROCz/zXnxz = →←
[ ] 1z:ROC
z-1
1
nu 1-
Z
> →←
[ ] ( ) [ ] ( ) [ ] ( ) [ ]nure
2
1
nure
2
1
nuncosrnx
njnj
o
n oo ω−ω
+=ω=
( ) rz
zre1
2/1
zre1
2/1
zX 1j1j oo
>
−
+
−
= −ω−−ω
351M Digital Signal Processing 13
Z-Transform Properties: Differentiation
• Example: We want the inverse z-transform of
• Let’s differentiate to obtain rational expression
• Making use of z-transform properties and ROC
[ ] ( )
x
Z
RROC
dz
zdX
znnx =− →←
( ) ( ) azaz1logzX 1
>+= −
( ) ( )
1
1
1
2
az1
1
az
dz
zdX
z
az1
az
dz
zdX
−
−
−
−
+
=−⇒
+
−
=
[ ] ( ) [ ]1nuaannx
1n
−−=
−
[ ] ( ) [ ]1nu
n
a
1nx
n
1n
−−=
−
351M Digital Signal Processing 14
Z-Transform Properties: Conjugation
• Example
[ ] ( ) x
**Z*
RROCzXnx = →←
( ) [ ]
( ) [ ] [ ]
( ) [ ] ( ) [ ] [ ]{ }nxZznxznxzX
znxznxzX
znxzX
n
n
n
n
n
n
n
n
n
n
∗
∞
−∞=
−∗
∞
−∞=
∗∗∗∗
∞
−∞=
∗
∗
∞
−∞=
−∗
∞
−∞=
−
===
=





=
=
∑∑
∑∑
∑
351M Digital Signal Processing 15
Z-Transform Properties: Time Reversal
• ROC is inverted
• Example:
• Time reversed version of
[ ] ( )
x
Z
R
1
ROCz/1Xnx = →←−
[ ] [ ]nuanx n
−= −
[ ]nuan
( ) 1
11-
1-1
az
za-1
za-
az1
1
zX −
−
−
<=
−
=
351M Digital Signal Processing 16
Z-Transform Properties: Convolution
• Convolution in time domain is multiplication in z-domain
• Example:Let’s calculate the convolution of
• Multiplications of z-transforms is
• ROC: if |a|<1 ROC is |z|>1 if |a|>1 ROC is |z|>|a|
• Partial fractional expansion of Y(z)
[ ] [ ] ( ) ( ) 2x1x21
Z
21 RR:ROCzXzXnxnx ∩ →←∗
[ ] [ ] [ ] [ ]nunxandnuanx 2
n
1 ==
( ) az:ROC
az1
1
zX 11 >
−
= −
( ) 1z:ROC
z1
1
zX 12 >
−
= −
( ) ( ) ( )
( )( )1121
z1az1
1
zXzXzY −−
−−
==
( ) 1z:ROCasume
az1
1
z1
1
a1
1
zY 11
>





−
−
−−
= −−
[ ] [ ] [ ]( )nuanu
a1
1
ny 1n+
−
−
=

More Related Content

What's hot

discrete time signals and systems
 discrete time signals and systems  discrete time signals and systems
discrete time signals and systems
Zlatan Ahmadovic
 

What's hot (20)

Z transform ROC eng.Math
Z transform ROC eng.MathZ transform ROC eng.Math
Z transform ROC eng.Math
 
Dcs lec02 - z-transform
Dcs   lec02 - z-transformDcs   lec02 - z-transform
Dcs lec02 - z-transform
 
Z Transform
Z TransformZ Transform
Z Transform
 
DSP_2018_FOEHU - Lec 03 - Discrete-Time Signals and Systems
DSP_2018_FOEHU - Lec 03 - Discrete-Time Signals and SystemsDSP_2018_FOEHU - Lec 03 - Discrete-Time Signals and Systems
DSP_2018_FOEHU - Lec 03 - Discrete-Time Signals and Systems
 
Z transform
Z transformZ transform
Z transform
 
Fourier transform
Fourier transformFourier transform
Fourier transform
 
Z transforms and their applications
Z transforms and their applicationsZ transforms and their applications
Z transforms and their applications
 
discrete time signals and systems
 discrete time signals and systems  discrete time signals and systems
discrete time signals and systems
 
Discrete Time Systems & its classifications
Discrete Time Systems & its classificationsDiscrete Time Systems & its classifications
Discrete Time Systems & its classifications
 
Chapter5 - The Discrete-Time Fourier Transform
Chapter5 - The Discrete-Time Fourier TransformChapter5 - The Discrete-Time Fourier Transform
Chapter5 - The Discrete-Time Fourier Transform
 
Z transform
Z transformZ transform
Z transform
 
Properties of dft
Properties of dftProperties of dft
Properties of dft
 
EC8352-Signals and Systems - Laplace transform
EC8352-Signals and Systems - Laplace transformEC8352-Signals and Systems - Laplace transform
EC8352-Signals and Systems - Laplace transform
 
signal & system inverse z-transform
signal & system inverse z-transformsignal & system inverse z-transform
signal & system inverse 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
 
Z Transform
Z TransformZ Transform
Z Transform
 
Reference for z and inverse z transform
Reference for z and inverse z transformReference for z and inverse z transform
Reference for z and inverse z transform
 
Z transform Day 1
Z transform Day 1Z transform Day 1
Z transform Day 1
 
Overview of sampling
Overview of samplingOverview of sampling
Overview of sampling
 
Chapter2 - Linear Time-Invariant System
Chapter2 - Linear Time-Invariant SystemChapter2 - Linear Time-Invariant System
Chapter2 - Linear Time-Invariant System
 

Viewers also liked

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
Chandrashekhar Padole
 
Discreate time system and z transform
Discreate time system and z transformDiscreate time system and z transform
Discreate time system and z transform
VIKAS KUMAR MANJHI
 
Demonstration of a z transformation of a normal distribution
Demonstration of a z transformation of a normal distributionDemonstration of a z transformation of a normal distribution
Demonstration of a z transformation of a normal distribution
kkong
 
Digital signal processing
Digital signal processingDigital signal processing
Digital signal processing
Living Online
 
Fractal antennas ppt
Fractal antennas pptFractal antennas ppt
Fractal antennas ppt
Ruth Jency
 

Viewers also liked (20)

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
 
Discreate time system and z transform
Discreate time system and z transformDiscreate time system and z transform
Discreate time system and z transform
 
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
 
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
 
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
 
Demonstration of a z transformation of a normal distribution
Demonstration of a z transformation of a normal distributionDemonstration of a z transformation of a normal distribution
Demonstration of a z transformation of a normal distribution
 
21 5 ztransform
21 5 ztransform21 5 ztransform
21 5 ztransform
 
21 2 ztransform
21 2 ztransform21 2 ztransform
21 2 ztransform
 
One sided z transform
One sided z transformOne sided z transform
One sided z transform
 
Types of system
Types of system Types of system
Types of system
 
Chapter5 system analysis
Chapter5 system analysisChapter5 system analysis
Chapter5 system analysis
 
Stats 3rd nine week chapter 5 review powerpoint
Stats 3rd nine week chapter 5 review powerpointStats 3rd nine week chapter 5 review powerpoint
Stats 3rd nine week chapter 5 review powerpoint
 
Impulse response
Impulse responseImpulse response
Impulse response
 
Lab no.07
Lab no.07Lab no.07
Lab no.07
 
Digital signal processing
Digital signal processingDigital signal processing
Digital signal processing
 
Analog properties and Z-transform
Analog properties and Z-transformAnalog properties and Z-transform
Analog properties and Z-transform
 
Control System Theory &amp; Design: Notes
Control System Theory &amp; Design: NotesControl System Theory &amp; Design: Notes
Control System Theory &amp; Design: Notes
 
Fractal antennas ppt
Fractal antennas pptFractal antennas ppt
Fractal antennas ppt
 

Similar to Z TRANSFORM PROPERTIES AND INVERSE Z TRANSFORM

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
AnujKumar734472
 

Similar to Z TRANSFORM PROPERTIES AND INVERSE Z TRANSFORM (20)

1633 the inverse z-transform
1633 the inverse z-transform1633 the inverse z-transform
1633 the inverse z-transform
 
Lecture8
Lecture8Lecture8
Lecture8
 
DSP_2018_FOEHU - Lec 04 - The z-Transform
DSP_2018_FOEHU - Lec 04 - The z-TransformDSP_2018_FOEHU - Lec 04 - The z-Transform
DSP_2018_FOEHU - Lec 04 - The z-Transform
 
Transformasi z
Transformasi zTransformasi z
Transformasi z
 
lecture8.ppt
lecture8.pptlecture8.ppt
lecture8.ppt
 
Ch3_Z-transform.pdf
Ch3_Z-transform.pdfCh3_Z-transform.pdf
Ch3_Z-transform.pdf
 
ch3-4
ch3-4ch3-4
ch3-4
 
Signal3
Signal3Signal3
Signal3
 
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
 
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...
 
Signals and systems3 ppt
Signals and systems3 pptSignals and systems3 ppt
Signals and systems3 ppt
 
Manual solucoes ex_extras
Manual solucoes ex_extrasManual solucoes ex_extras
Manual solucoes ex_extras
 
Manual solucoes ex_extras
Manual solucoes ex_extrasManual solucoes ex_extras
Manual solucoes ex_extras
 
Manual solucoes ex_extras
Manual solucoes ex_extrasManual solucoes ex_extras
Manual solucoes ex_extras
 
z transform.pptx
z transform.pptxz transform.pptx
z transform.pptx
 
Properties of z transform day 2
Properties of z transform day 2Properties of z transform day 2
Properties of z transform day 2
 
Z transform
Z transformZ transform
Z transform
 
3 d transformations
3 d transformations3 d transformations
3 d transformations
 
5.4_Inverse Z Transform.pptx
5.4_Inverse Z Transform.pptx5.4_Inverse Z Transform.pptx
5.4_Inverse Z Transform.pptx
 

Recently uploaded

XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
ssuser89054b
 
AKTU Computer Networks notes --- Unit 3.pdf
AKTU Computer Networks notes ---  Unit 3.pdfAKTU Computer Networks notes ---  Unit 3.pdf
AKTU Computer Networks notes --- Unit 3.pdf
ankushspencer015
 
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
9953056974 Low Rate Call Girls In Saket, Delhi NCR
 
VIP Call Girls Ankleshwar 7001035870 Whatsapp Number, 24/07 Booking
VIP Call Girls Ankleshwar 7001035870 Whatsapp Number, 24/07 BookingVIP Call Girls Ankleshwar 7001035870 Whatsapp Number, 24/07 Booking
VIP Call Girls Ankleshwar 7001035870 Whatsapp Number, 24/07 Booking
dharasingh5698
 

Recently uploaded (20)

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
 
Vivazz, Mieres Social Housing Design Spain
Vivazz, Mieres Social Housing Design SpainVivazz, Mieres Social Housing Design Spain
Vivazz, Mieres Social Housing Design Spain
 
Booking open Available Pune Call Girls Koregaon Park 6297143586 Call Hot Ind...
Booking open Available Pune Call Girls Koregaon Park  6297143586 Call Hot Ind...Booking open Available Pune Call Girls Koregaon Park  6297143586 Call Hot Ind...
Booking open Available Pune Call Girls Koregaon Park 6297143586 Call Hot Ind...
 
NFPA 5000 2024 standard .
NFPA 5000 2024 standard                                  .NFPA 5000 2024 standard                                  .
NFPA 5000 2024 standard .
 
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
 
AKTU Computer Networks notes --- Unit 3.pdf
AKTU Computer Networks notes ---  Unit 3.pdfAKTU Computer Networks notes ---  Unit 3.pdf
AKTU Computer Networks notes --- Unit 3.pdf
 
Online banking management system project.pdf
Online banking management system project.pdfOnline banking management system project.pdf
Online banking management system project.pdf
 
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
 
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
 
Top Rated Pune Call Girls Budhwar Peth ⟟ 6297143586 ⟟ Call Me For Genuine Se...
Top Rated  Pune Call Girls Budhwar Peth ⟟ 6297143586 ⟟ Call Me For Genuine Se...Top Rated  Pune Call Girls Budhwar Peth ⟟ 6297143586 ⟟ Call Me For Genuine Se...
Top Rated Pune Call Girls Budhwar Peth ⟟ 6297143586 ⟟ Call Me For Genuine Se...
 
Thermal Engineering -unit - III & IV.ppt
Thermal Engineering -unit - III & IV.pptThermal Engineering -unit - III & IV.ppt
Thermal Engineering -unit - III & IV.ppt
 
The Most Attractive Pune Call Girls Budhwar Peth 8250192130 Will You Miss Thi...
The Most Attractive Pune Call Girls Budhwar Peth 8250192130 Will You Miss Thi...The Most Attractive Pune Call Girls Budhwar Peth 8250192130 Will You Miss Thi...
The Most Attractive Pune Call Girls Budhwar Peth 8250192130 Will You Miss Thi...
 
chapter 5.pptx: drainage and irrigation engineering
chapter 5.pptx: drainage and irrigation engineeringchapter 5.pptx: drainage and irrigation engineering
chapter 5.pptx: drainage and irrigation engineering
 
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
 
Water Industry Process Automation & Control Monthly - April 2024
Water Industry Process Automation & Control Monthly - April 2024Water Industry Process Automation & Control Monthly - April 2024
Water Industry Process Automation & Control Monthly - April 2024
 
Thermal Engineering Unit - I & II . ppt
Thermal Engineering  Unit - I & II . pptThermal Engineering  Unit - I & II . ppt
Thermal Engineering Unit - I & II . ppt
 
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
 
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
 
KubeKraft presentation @CloudNativeHooghly
KubeKraft presentation @CloudNativeHooghlyKubeKraft presentation @CloudNativeHooghly
KubeKraft presentation @CloudNativeHooghly
 
VIP Call Girls Ankleshwar 7001035870 Whatsapp Number, 24/07 Booking
VIP Call Girls Ankleshwar 7001035870 Whatsapp Number, 24/07 BookingVIP Call Girls Ankleshwar 7001035870 Whatsapp Number, 24/07 Booking
VIP Call Girls Ankleshwar 7001035870 Whatsapp Number, 24/07 Booking
 

Z TRANSFORM PROPERTIES AND INVERSE Z TRANSFORM

  • 1. The Inverse z-Transform In science one tries to tell people, in such a way as to be understood by everyone, something that no one ever knew before. But in poetry, it's the exact opposite. Paul Dirac Content and Figures are from Discrete-Time Signal Processing, 2e by Oppenheim, Shafer, and Buck, ©1999-2000 Prentice Hall Inc.
  • 2. 351M Digital Signal Processing 2 The Inverse Z-Transform • Formal inverse z-transform is based on a Cauchy integral • Less formal ways sufficient most of the time – Inspection method – Partial fraction expansion – Power series expansion • Inspection Method – Make use of known z-transform pairs such as – Example: The inverse z-transform of [ ] az az1 1 nua 1 Zn > −  →← − ( ) [ ] [ ]nu 2 1 nx 2 1 z z 2 1 1 1 zX n 1       =→> − = −
  • 3. 351M Digital Signal Processing 3 Inverse Z-Transform by Partial Fraction Expansion • Assume that a given z-transform can be expressed as • Apply partial fractional expansion • First term exist only if M>N – Br is obtained by long division • Second term represents all first order poles • Third term represents an order s pole – There will be a similar term for every high-order pole • Each term can be inverse transformed by inspection ( ) ∑ ∑ = − = − = N 0k k k M 0k k k za zb zX ( ) ( )∑∑∑ = − ≠= − − = − − + − += s 1m m1 i m N ik,1k 1 k k NM 0r r r zd1 C zd1 A zBzX
  • 4. 351M Digital Signal Processing 4 Partial Fractional Expression • Coefficients are given as • Easier to understand with examples ( ) ( )∑∑∑ = − ≠= − − = − − + − += s 1m m1 i m N ik,1k 1 k k NM 0r r r zd1 C zd1 A zBzX ( ) ( ) kdz 1 kk zXzd1A = − −= ( ) ( ) ( ) ( )[ ] 1 idw 1s ims ms ms i m wXwd1 dw d d!ms 1 C − = − − − −       − −− =
  • 5. 351M Digital Signal Processing 5 Example: 2nd Order Z-Transform – Order of numerator is smaller than denominator (in terms of z-1 ) – No higher order pole ( ) 2 1 z:ROC z 2 1 1z 4 1 1 1 zX 11 >       −      − = −− ( )       − +       − = −− 1 2 1 1 z 2 1 1 A z 4 1 1 A zX ( ) 1 4 1 2 1 1 1 zXz 4 1 1A 1 4 1 z 1 1 −=               − =      −= − = − ( ) 2 2 1 4 1 1 1 zXz 2 1 1A 1 2 1 z 1 2 =               − =      −= − = −
  • 6. 351M Digital Signal Processing 6 Example Continued • ROC extends to infinity – Indicates right sided sequence ( ) 2 1 z z 2 1 1 2 z 4 1 1 1 zX 11 >       − +       − − = −− [ ] [ ] [ ]nu 4 1 -nu 2 1 2nx nn             =
  • 7. 351M Digital Signal Processing 7 Example #2 • Long division to obtain Bo ( ) ( ) ( ) 1z z1z 2 1 1 z1 z 2 1 z 2 3 1 zz21 zX 11 21 21 21 > −      − + = +− ++ = −− − −− −− 1z5 2z3z 2 1z2z1z 2 3 z 2 1 1 12 1212 − +− +++− − −− −−−− ( ) ( )11 1 z1z 2 1 1 z51 2zX −− − −      − +− += ( ) 1 2 1 1 z1 A z 2 1 1 A 2zX − − − + − += ( ) 9zXz 2 1 1A 2 1 z 1 1 −=      −= = − ( ) ( ) 8zXz1A 1z 1 2 =−= = −
  • 8. 351M Digital Signal Processing 8 Example #2 Continued • ROC extends to infinity – Indicates right-sides sequence ( ) 1z z1 8 z 2 1 1 9 2zX 1 1 > − + − −= − − [ ] [ ] [ ] [ ]n8u-nu 2 1 9n2nx n       −δ=
  • 9. 351M Digital Signal Processing 9 Inverse Z-Transform by Power Series Expansion • The z-transform is power series • In expanded form • Z-transforms of this form can generally be inversed easily • Especially useful for finite-length series • Example ( ) [ ]∑ ∞ −∞= − = n n znxzX ( ) [ ] [ ] [ ] [ ] [ ]  ++++−+−+= −− 2112 z2xz1x0xz1xz2xzX ( ) ( )( ) 12 1112 z 2 1 1z 2 1 z z1z1z 2 1 1zzX − −−− +−−= −+      −= [ ] [ ] [ ] [ ] [ ]1n 2 1 n1n 2 1 2nnx −δ+δ−+δ−+δ= [ ]          = = =− −=− −= = 2n0 1n 2 1 0n1 1n 2 1 2n1 nx
  • 10. 351M Digital Signal Processing 10 Z-Transform Properties: Linearity • Notation • Linearity – Note that the ROC of combined sequence may be larger than either ROC – This would happen if some pole/zero cancellation occurs – Example: • Both sequences are right-sided • Both sequences have a pole z=a • Both have a ROC defined as |z|>|a| • In the combined sequence the pole at z=a cancels with a zero at z=a • The combined ROC is the entire z plane except z=0 • We did make use of this property already, where? [ ] ( ) x Z RROCzXnx = →← [ ] [ ] ( ) ( ) 21 xx21 Z 21 RRROCzbXzaXnbxnax ∩=+ →←+ [ ] [ ] [ ]N-nua-nuanx nn =
  • 11. 351M Digital Signal Processing 11 Z-Transform Properties: Time Shifting • Here no is an integer – If positive the sequence is shifted right – If negative the sequence is shifted left • The ROC can change the new term may – Add or remove poles at z=0 or z=∞ • Example [ ] ( ) x nZ o RROCzXznnx o = →←− − ( ) 4 1 z z 4 1 1 1 zzX 1 1 >             − = − − [ ] [ ]1-nu 4 1 nx 1-n       =
  • 12. 351M Digital Signal Processing 12 Z-Transform Properties: Multiplication by Exponential • ROC is scaled by |zo| • All pole/zero locations are scaled • If zo is a positive real number: z-plane shrinks or expands • If zo is a complex number with unit magnitude it rotates • Example: We know the z-transform pair • Let’s find the z-transform of [ ] ( ) xoo Zn o RzROCz/zXnxz = →← [ ] 1z:ROC z-1 1 nu 1- Z > →← [ ] ( ) [ ] ( ) [ ] ( ) [ ]nure 2 1 nure 2 1 nuncosrnx njnj o n oo ω−ω +=ω= ( ) rz zre1 2/1 zre1 2/1 zX 1j1j oo > − + − = −ω−−ω
  • 13. 351M Digital Signal Processing 13 Z-Transform Properties: Differentiation • Example: We want the inverse z-transform of • Let’s differentiate to obtain rational expression • Making use of z-transform properties and ROC [ ] ( ) x Z RROC dz zdX znnx =− →← ( ) ( ) azaz1logzX 1 >+= − ( ) ( ) 1 1 1 2 az1 1 az dz zdX z az1 az dz zdX − − − − + =−⇒ + − = [ ] ( ) [ ]1nuaannx 1n −−= − [ ] ( ) [ ]1nu n a 1nx n 1n −−= −
  • 14. 351M Digital Signal Processing 14 Z-Transform Properties: Conjugation • Example [ ] ( ) x **Z* RROCzXnx = →← ( ) [ ] ( ) [ ] [ ] ( ) [ ] ( ) [ ] [ ]{ }nxZznxznxzX znxznxzX znxzX n n n n n n n n n n ∗ ∞ −∞= −∗ ∞ −∞= ∗∗∗∗ ∞ −∞= ∗ ∗ ∞ −∞= −∗ ∞ −∞= − === =      = = ∑∑ ∑∑ ∑
  • 15. 351M Digital Signal Processing 15 Z-Transform Properties: Time Reversal • ROC is inverted • Example: • Time reversed version of [ ] ( ) x Z R 1 ROCz/1Xnx = →←− [ ] [ ]nuanx n −= − [ ]nuan ( ) 1 11- 1-1 az za-1 za- az1 1 zX − − − <= − =
  • 16. 351M Digital Signal Processing 16 Z-Transform Properties: Convolution • Convolution in time domain is multiplication in z-domain • Example:Let’s calculate the convolution of • Multiplications of z-transforms is • ROC: if |a|<1 ROC is |z|>1 if |a|>1 ROC is |z|>|a| • Partial fractional expansion of Y(z) [ ] [ ] ( ) ( ) 2x1x21 Z 21 RR:ROCzXzXnxnx ∩ →←∗ [ ] [ ] [ ] [ ]nunxandnuanx 2 n 1 == ( ) az:ROC az1 1 zX 11 > − = − ( ) 1z:ROC z1 1 zX 12 > − = − ( ) ( ) ( ) ( )( )1121 z1az1 1 zXzXzY −− −− == ( ) 1z:ROCasume az1 1 z1 1 a1 1 zY 11 >      − − −− = −− [ ] [ ] [ ]( )nuanu a1 1 ny 1n+ − − =