SlideShare une entreprise Scribd logo
1  sur  8
Page 1
Lecture 3
Systems and Classification of Systems
Systems
A system is an interconnection of components that transforms an input signal into an
output signal. We can therefore view a system as a mapping (or
transformation) from an input function onto an output function.
A. Continuous-time and Discrete-time systems:
If the input (x) and output (y) are continuous-time (CT)signals, then the systemis called
a continuous-time system. If the input (x) and output (y) are discrete-time (DT) signals
or sequence, then the system is called a discrete-time system. Referring to the above
Figs
y(t) = H x(t)= H u(t) for continuous-time system
y[n] = H x[n]= H u[n] for discrete-time system
Hybrid system may have CT and DT input and output signals.
B. Linear and NonlinearSystems
A system is linear if it satisfies the principle of superposition (additivity and
homogeneity)
That is, the response(y) of a linear system to a weighted sum of inputs (x) equal to the
same weighted sum of output signals.
Page 2
Example
Example
Page 3
Example
Example
Page 4
Any system that does not satisfy the superposition principle is classified as nonlinear
system. Example of nonlinear systems are
A system is nonlinear if it has
 Nonlinear elements
 Nonzero initial condition
 Internal sources
C. Time-invariant and Time-varying Systems
A system is called time-invariant or fixed, if a time-shift (delay or advance) in the input
signal causes the same time shift in the out-put signal. That is its input-output
relationship does not change with time, i.e., if H [x(t)] = y(t), then
H [x(t-T)] = y(t-T) for any value of T
For example, the system described by y(t) =
x(t)+A x(t-T)
Page 5
is time-invariant if A and T are constants.
For a discrete-time system, the system is time-variant if
H [x(n-k)] = y(n- ) for any value of k
In the time-invariant systems the shape of the response y(t) depends only on the shape
of the input x(t) and not on the time when it is applied. When one more coefficients are
function of time, the system is called time-varying system.
Example
Example
Page 6
Example
Page 7
D. Linear Time-invariant Systems
If the system is linear and also time-invariant, then it is called a linear time-invariant
(LTI) system.
E. Systems with Memory and without Memory
A system is said to be memory-less if the output at any time depends on only the input
at that time. Otherwise, the system is said to have memory.
Example
(i) Memory-less system → resistive system
(ii) System with memory → capacitive or inductive
system given by
F. Instantaneous system and Dynamic system
Systems may be modeled by instantaneous (Non dynamic) linear relationships such as
y(t) = Ax(t)+B
Where A and B are constants, or a nonlinear relationship such as y(t)
= Ax2(t)+Bx(t)+C
Instantaneous systems are referred to as memory-less since the output y(t) depends only
on the instantaneous value of x(t).
The discrete-time signal described by y[n] = 2x[n] is memory-less, since the value of
y[n] at time n depends only on the present value of the input x[n].
Dynamic Systems
Continuous-time systems are often modeled by linear time-invariant differential
equation. In general the input-output relationship may be given by
Page 8
The coefficients of the above differential equation are the parameters of the physical
system. Dynamic systems are systems with memory. For example an inductor has
memory, since the current in an inductor given by
depends on all past values of the voltage v(t). The memory of an inductor extends into
the infinite past.
G. Causaland NoncausalSystems
A system is called causal if its output y(t) at an arbitrary time t = to, depends ononly the
input x(t) for t ≤ to,. That is, the output of a causal system at the present time depends
on only the present and/or past values of the input, not on its future values. Thus, in a
causal system, it is not possible to obtain an output before an input is applied to the
system. A system is called noncausal if it is not causal. Examples of noncausal systems
are
y(t) = x (t+1) y[n]=x[n]
Note that all memoryless systems are causal, but not vice versa.

Contenu connexe

Tendances

Lecture 10 11-signal_flow_graphs
Lecture 10 11-signal_flow_graphsLecture 10 11-signal_flow_graphs
Lecture 10 11-signal_flow_graphs
Saifullah Memon
 
state space modeling of electrical system
state space modeling of electrical systemstate space modeling of electrical system
state space modeling of electrical system
Mirza Baig
 
Digital Signal Processing Tutorial: Chapt 4 design of digital filters (FIR)
Digital Signal Processing Tutorial: Chapt 4 design of digital filters (FIR) Digital Signal Processing Tutorial: Chapt 4 design of digital filters (FIR)
Digital Signal Processing Tutorial: Chapt 4 design of digital filters (FIR)
Chandrashekhar Padole
 
Digital control systems
Digital control systemsDigital control systems
Digital control systems
avenkatram
 
Chapter 6m
Chapter 6mChapter 6m
Chapter 6m
wafaa_A7
 

Tendances (20)

Lecture 10 11-signal_flow_graphs
Lecture 10 11-signal_flow_graphsLecture 10 11-signal_flow_graphs
Lecture 10 11-signal_flow_graphs
 
Z transform
 Z transform Z transform
Z transform
 
state space modeling of electrical system
state space modeling of electrical systemstate space modeling of electrical system
state space modeling of electrical system
 
Chapter3 - Fourier Series Representation of Periodic Signals
Chapter3 - Fourier Series Representation of Periodic SignalsChapter3 - Fourier Series Representation of Periodic Signals
Chapter3 - Fourier Series Representation of Periodic Signals
 
EC8352- Signals and Systems - Unit 2 - Fourier transform
EC8352- Signals and Systems - Unit 2 - Fourier transformEC8352- Signals and Systems - Unit 2 - Fourier transform
EC8352- Signals and Systems - Unit 2 - Fourier transform
 
Traffic light Controller Design
Traffic light Controller DesignTraffic light Controller Design
Traffic light Controller Design
 
Digital Signal Processing Tutorial: Chapt 4 design of digital filters (FIR)
Digital Signal Processing Tutorial: Chapt 4 design of digital filters (FIR) Digital Signal Processing Tutorial: Chapt 4 design of digital filters (FIR)
Digital Signal Processing Tutorial: Chapt 4 design of digital filters (FIR)
 
convolution
convolutionconvolution
convolution
 
Linear modulation
Linear modulation Linear modulation
Linear modulation
 
signal and system Lecture 1
signal and system Lecture 1signal and system Lecture 1
signal and system Lecture 1
 
Digital control systems
Digital control systemsDigital control systems
Digital control systems
 
555 timer-digital-clock
555 timer-digital-clock555 timer-digital-clock
555 timer-digital-clock
 
Chapter 6m
Chapter 6mChapter 6m
Chapter 6m
 
Pulse Code Modulation
Pulse Code Modulation Pulse Code Modulation
Pulse Code Modulation
 
5. convolution and correlation of discrete time signals
5. convolution and correlation of discrete time signals 5. convolution and correlation of discrete time signals
5. convolution and correlation of discrete time signals
 
Ec8352 signals and systems 2 marks with answers
Ec8352 signals and systems   2 marks with answersEc8352 signals and systems   2 marks with answers
Ec8352 signals and systems 2 marks with answers
 
UNIT-IV.pptx
UNIT-IV.pptxUNIT-IV.pptx
UNIT-IV.pptx
 
Dcs lec03 - z-analysis of discrete time control systems
Dcs   lec03 - z-analysis of discrete time control systemsDcs   lec03 - z-analysis of discrete time control systems
Dcs lec03 - z-analysis of discrete time control systems
 
Fourier Series for Continuous Time & Discrete Time Signals
Fourier Series for Continuous Time & Discrete Time SignalsFourier Series for Continuous Time & Discrete Time Signals
Fourier Series for Continuous Time & Discrete Time Signals
 
Convolutional Codes And Their Decoding
Convolutional Codes And Their DecodingConvolutional Codes And Their Decoding
Convolutional Codes And Their Decoding
 

En vedette (7)

Radar Systems for NTU, 1 Nov 2014
Radar Systems for NTU, 1 Nov 2014Radar Systems for NTU, 1 Nov 2014
Radar Systems for NTU, 1 Nov 2014
 
Signal processing for underwater acoustic communications
Signal processing for underwater acoustic communicationsSignal processing for underwater acoustic communications
Signal processing for underwater acoustic communications
 
Speaker recognition using MFCC
Speaker recognition using MFCCSpeaker recognition using MFCC
Speaker recognition using MFCC
 
Fundamentals of Signals and systems (Ganesh Rao Signals and systems)
Fundamentals of Signals and systems (Ganesh Rao Signals and systems)Fundamentals of Signals and systems (Ganesh Rao Signals and systems)
Fundamentals of Signals and systems (Ganesh Rao Signals and systems)
 
Signals and Systems Notes
Signals and Systems Notes Signals and Systems Notes
Signals and Systems Notes
 
Components of a Pulse Radar System
Components of a Pulse Radar SystemComponents of a Pulse Radar System
Components of a Pulse Radar System
 
Speech Recognition System By Matlab
Speech Recognition System By MatlabSpeech Recognition System By Matlab
Speech Recognition System By Matlab
 

Similaire à signal and system Lecture 3

Similaire à signal and system Lecture 3 (20)

Signals & Systems PPT
Signals & Systems PPTSignals & Systems PPT
Signals & Systems PPT
 
ssppt-170414031953.pdf
ssppt-170414031953.pdfssppt-170414031953.pdf
ssppt-170414031953.pdf
 
Digital signal System
Digital signal SystemDigital signal System
Digital signal System
 
Signal & System Assignment
Signal & System Assignment Signal & System Assignment
Signal & System Assignment
 
Lec-1.pdf
Lec-1.pdfLec-1.pdf
Lec-1.pdf
 
Digital signal processing
Digital signal processingDigital signal processing
Digital signal processing
 
Impulse response and step response.ppt
Impulse response and step response.pptImpulse response and step response.ppt
Impulse response and step response.ppt
 
Basic System Properties.ppt
Basic System Properties.pptBasic System Properties.ppt
Basic System Properties.ppt
 
Lcs2
Lcs2Lcs2
Lcs2
 
signals and systems
signals and systemssignals and systems
signals and systems
 
Lect2-SignalProcessing (1).pdf
Lect2-SignalProcessing (1).pdfLect2-SignalProcessing (1).pdf
Lect2-SignalProcessing (1).pdf
 
Discrete Time Systems & its classifications
Discrete Time Systems & its classificationsDiscrete Time Systems & its classifications
Discrete Time Systems & its classifications
 
ssppt-170414031953.pptx
ssppt-170414031953.pptxssppt-170414031953.pptx
ssppt-170414031953.pptx
 
lecture4signals-181130200508.pptx
lecture4signals-181130200508.pptxlecture4signals-181130200508.pptx
lecture4signals-181130200508.pptx
 
Lecture 4: Classification of system
Lecture 4: Classification of system Lecture 4: Classification of system
Lecture 4: Classification of system
 
Signals and Systems.pptx
Signals and Systems.pptxSignals and Systems.pptx
Signals and Systems.pptx
 
Signals and Systems.pptx
Signals and Systems.pptxSignals and Systems.pptx
Signals and Systems.pptx
 
df_lesson_01.ppt
df_lesson_01.pptdf_lesson_01.ppt
df_lesson_01.ppt
 
Lecture 1
Lecture 1Lecture 1
Lecture 1
 
lecture3_2.pdf
lecture3_2.pdflecture3_2.pdf
lecture3_2.pdf
 

Plus de iqbal ahmad (11)

Probability, random variables and random signal principles 2nd ed. p. peebles
Probability, random variables and random signal principles 2nd ed.   p. peeblesProbability, random variables and random signal principles 2nd ed.   p. peebles
Probability, random variables and random signal principles 2nd ed. p. peebles
 
signal and system Dirac delta functions (1)
signal and system Dirac delta functions (1)signal and system Dirac delta functions (1)
signal and system Dirac delta functions (1)
 
signal and system solution Quiz2
signal and system solution Quiz2signal and system solution Quiz2
signal and system solution Quiz2
 
Hw1 solution
Hw1 solutionHw1 solution
Hw1 solution
 
signal and system Hw2 solution
signal and system Hw2 solutionsignal and system Hw2 solution
signal and system Hw2 solution
 
Programming lab 1 lecture
Programming lab 1 lectureProgramming lab 1 lecture
Programming lab 1 lecture
 
Capacitors and inductors
Capacitors and inductorsCapacitors and inductors
Capacitors and inductors
 
Second order ena notes
Second order ena notesSecond order ena notes
Second order ena notes
 
First order ena notes
First order ena notesFirst order ena notes
First order ena notes
 
microprocessor Lec 02 mic
microprocessor Lec 02 micmicroprocessor Lec 02 mic
microprocessor Lec 02 mic
 
microprocessor Lec 01 mic
microprocessor Lec 01 micmicroprocessor Lec 01 mic
microprocessor Lec 01 mic
 

Dernier

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
dharasingh5698
 
Call Girls In Bangalore ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Bangalore ☎ 7737669865 🥵 Book Your One night StandCall Girls In Bangalore ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Bangalore ☎ 7737669865 🥵 Book Your One night Stand
amitlee9823
 
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
ssuser89054b
 
notes on Evolution Of Analytic Scalability.ppt
notes on Evolution Of Analytic Scalability.pptnotes on Evolution Of Analytic Scalability.ppt
notes on Evolution Of Analytic Scalability.ppt
MsecMca
 

Dernier (20)

University management System project report..pdf
University management System project report..pdfUniversity management System project report..pdf
University management System project report..pdf
 
Call for Papers - International Journal of Intelligent Systems and Applicatio...
Call for Papers - International Journal of Intelligent Systems and Applicatio...Call for Papers - International Journal of Intelligent Systems and Applicatio...
Call for Papers - International Journal of Intelligent Systems and Applicatio...
 
Thermal Engineering-R & A / C - unit - V
Thermal Engineering-R & A / C - unit - VThermal Engineering-R & A / C - unit - V
Thermal Engineering-R & A / C - unit - V
 
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
 
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...
 
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
 
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
 
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
 
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
 
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...
 
Thermal Engineering Unit - I & II . ppt
Thermal Engineering  Unit - I & II . pptThermal Engineering  Unit - I & II . ppt
Thermal Engineering Unit - I & II . ppt
 
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
 
Call Girls Walvekar Nagar Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Walvekar Nagar Call Me 7737669865 Budget Friendly No Advance BookingCall Girls Walvekar Nagar Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Walvekar Nagar Call Me 7737669865 Budget Friendly No Advance Booking
 
Call Girls In Bangalore ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Bangalore ☎ 7737669865 🥵 Book Your One night StandCall Girls In Bangalore ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Bangalore ☎ 7737669865 🥵 Book Your One night Stand
 
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
 
VIP Model Call Girls Kothrud ( Pune ) Call ON 8005736733 Starting From 5K to ...
VIP Model Call Girls Kothrud ( Pune ) Call ON 8005736733 Starting From 5K to ...VIP Model Call Girls Kothrud ( Pune ) Call ON 8005736733 Starting From 5K to ...
VIP Model Call Girls Kothrud ( Pune ) Call ON 8005736733 Starting From 5K to ...
 
Java Programming :Event Handling(Types of Events)
Java Programming :Event Handling(Types of Events)Java Programming :Event Handling(Types of Events)
Java Programming :Event Handling(Types of Events)
 
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
 
notes on Evolution Of Analytic Scalability.ppt
notes on Evolution Of Analytic Scalability.pptnotes on Evolution Of Analytic Scalability.ppt
notes on Evolution Of Analytic Scalability.ppt
 
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...
 

signal and system Lecture 3

  • 1. Page 1 Lecture 3 Systems and Classification of Systems Systems A system is an interconnection of components that transforms an input signal into an output signal. We can therefore view a system as a mapping (or transformation) from an input function onto an output function. A. Continuous-time and Discrete-time systems: If the input (x) and output (y) are continuous-time (CT)signals, then the systemis called a continuous-time system. If the input (x) and output (y) are discrete-time (DT) signals or sequence, then the system is called a discrete-time system. Referring to the above Figs y(t) = H x(t)= H u(t) for continuous-time system y[n] = H x[n]= H u[n] for discrete-time system Hybrid system may have CT and DT input and output signals. B. Linear and NonlinearSystems A system is linear if it satisfies the principle of superposition (additivity and homogeneity) That is, the response(y) of a linear system to a weighted sum of inputs (x) equal to the same weighted sum of output signals.
  • 4. Page 4 Any system that does not satisfy the superposition principle is classified as nonlinear system. Example of nonlinear systems are A system is nonlinear if it has  Nonlinear elements  Nonzero initial condition  Internal sources C. Time-invariant and Time-varying Systems A system is called time-invariant or fixed, if a time-shift (delay or advance) in the input signal causes the same time shift in the out-put signal. That is its input-output relationship does not change with time, i.e., if H [x(t)] = y(t), then H [x(t-T)] = y(t-T) for any value of T For example, the system described by y(t) = x(t)+A x(t-T)
  • 5. Page 5 is time-invariant if A and T are constants. For a discrete-time system, the system is time-variant if H [x(n-k)] = y(n- ) for any value of k In the time-invariant systems the shape of the response y(t) depends only on the shape of the input x(t) and not on the time when it is applied. When one more coefficients are function of time, the system is called time-varying system. Example Example
  • 7. Page 7 D. Linear Time-invariant Systems If the system is linear and also time-invariant, then it is called a linear time-invariant (LTI) system. E. Systems with Memory and without Memory A system is said to be memory-less if the output at any time depends on only the input at that time. Otherwise, the system is said to have memory. Example (i) Memory-less system → resistive system (ii) System with memory → capacitive or inductive system given by F. Instantaneous system and Dynamic system Systems may be modeled by instantaneous (Non dynamic) linear relationships such as y(t) = Ax(t)+B Where A and B are constants, or a nonlinear relationship such as y(t) = Ax2(t)+Bx(t)+C Instantaneous systems are referred to as memory-less since the output y(t) depends only on the instantaneous value of x(t). The discrete-time signal described by y[n] = 2x[n] is memory-less, since the value of y[n] at time n depends only on the present value of the input x[n]. Dynamic Systems Continuous-time systems are often modeled by linear time-invariant differential equation. In general the input-output relationship may be given by
  • 8. Page 8 The coefficients of the above differential equation are the parameters of the physical system. Dynamic systems are systems with memory. For example an inductor has memory, since the current in an inductor given by depends on all past values of the voltage v(t). The memory of an inductor extends into the infinite past. G. Causaland NoncausalSystems A system is called causal if its output y(t) at an arbitrary time t = to, depends ononly the input x(t) for t ≤ to,. That is, the output of a causal system at the present time depends on only the present and/or past values of the input, not on its future values. Thus, in a causal system, it is not possible to obtain an output before an input is applied to the system. A system is called noncausal if it is not causal. Examples of noncausal systems are y(t) = x (t+1) y[n]=x[n] Note that all memoryless systems are causal, but not vice versa.