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“Introduction to Signals & Systems”
By:-
Pawan Kumar Jangid (2013UEE1166)
Sunil Kumar Yadav (2013UEE1176)
Manish Kumar Bagara (2013UEE1180)
Chandan Kumar (2013UEE1203)
Subject:- Network, Signal & Systems
Introduction to Signals
• A Signal is the function of one or more independent
variables that carries some information to represent a
physical phenomenon.
• A continuous-time signal, also called an analog signal, is
defined along a continuum of time.
A discrete-time signal is defined at discrete
times.
Elementary Signals
Sinusoidal & Exponential Signals
• Sinusoids and exponentials are important in signal and
system analysis because they arise naturally in the
solutions of the differential equations.
• Sinusoidal Signals can expressed in either of two ways :
cyclic frequency form- A sin 2Пfot = A sin(2П/To)t
radian frequency form- A sin ωot
ωo= 2Пfo= 2П/To
To= Time Period of the Sinusoidal Wave
Sinusoidal & Exponential Signals Contd.
x(t) = A sin (2Пfot+ θ)
= A sin (ωot+ θ)
x(t) = Aeat Real Exponential
= Aejωt =̥
A[cos (ωot) +j sin (ωot)] ComplexExponential
θ = Phase of sinusoidal wave
A = amplitude of a sinusoidal or exponential signal
fo= fundamental cyclic frequency of sinusoidal signal
ωo= radian frequency
Sinusoidal signal
Unit Step Function
( )
1 , 0
u 1/ 2 , 0
0 , 0
t
t t
t
>

= =
 <
Precise Graph Commonly-Used Graph
Signum Function
( ) ( )
1 , 0
sgn 0 , 0 2u 1
1 , 0
t
t t t
t
> 
 
= = = − 
 − < 
Precise Graph Commonly-Used Graph
The signum function, is closely related to the unit-step
function.
Unit Ramp Function
( ) ( ) ( )
, 0
ramp u u
0 , 0
t
t t
t d t t
t
λ λ
−∞
> 
= = = 
≤ 
∫
•The unit ramp function is the integral of the unit step function.
•It is called the unit ramp function because for positive t, its
slope is one amplitude unit per time.
Rectangular Pulse or Gate Function
Rectangular pulse, ( )
1/ , / 2
0 , / 2
a
a t a
t
t a
δ
 <
= 
>
Unit Impulse Function
( )
( )
As approaches zero, g approaches a unit
step andg approaches a unit impulse
a t
t′
So unit impulse function is the derivative of the unit step
function or unit step is the integral of the unit impulse
function
Functions that approach unit step and unit impulse
Representation of Impulse Function
The area under an impulse is called its strength or weight. It is
represented graphically by a vertical arrow. An impulse with a
strength of one is called a unit impulse.
Properties of the Impulse Function
( ) ( ) ( )0 0g gt t t dt tδ
∞
−∞
− =∫
The Sampling Property
( )( ) ( )0 0
1
a t t t t
a
δ δ− = −
The Scaling Property
The Replication Property
g(t)⊗ δ(t) = g (t)
Unit Impulse Train
The unit impulse train is a sum of infinitely uniformly-
spaced impulses and is given by
( ) ( ) , an integerT
n
t t nT nδ δ
∞
=−∞
= −∑
The Unit Rectangle Function
The unit rectangle or gate signal can be represented as combination
of two shifted unit step signals as shown
The Unit Triangle Function
A triangular pulse whose height and area are both one but its base
width is not, is called unit triangle function. The unit triangle is
related to the unit rectangle through an operation called
convolution.
Sinc Function
( )
( )sin
sinc
t
t
t
π
π
=
Discrete-Time Signals
• Sampling is the acquisition of the values of a
continuous-time signal at discrete points in time
• x(t) is a continuous-time signal, x[n] is a discrete-
time signal
[ ] ( )x x where is the time between sampless sn nT T=
Discrete Time Exponential and
Sinusoidal Signals
• DT signals can be defined in a manner analogous to their
continuous-time counter part
x[n] = A sin (2Пn/No+θ)
= A sin (2ПFon+ θ)
x[n] = an
n = the discrete time
A = amplitude
θ = phase shifting radians,
No = Discrete Period of the wave
1/N0= Fo= Ωo/2 П = Discrete Frequency
Discrete Time Sinusoidal Signal
Discrete Time Exponential Signal
Discrete Time Sinusoidal Signals
Discrete Time Unit Step Function or
Unit Sequence Function
[ ]
1 , 0
u
0 , 0
n
n
n
≥
= 
<
Discrete Time Unit Ramp Function
[ ] [ ]
, 0
ramp u 1
0 , 0
n
m
n n
n m
n =−∞
≥ 
= = − 
< 
∑
Discrete Time Unit Impulse Function or
Unit Pulse Sequence
[ ]
1 , 0
0 , 0
n
n
n
δ
=
= 
≠
[ ] [ ] for any non-zero, finite integer .n an aδ δ=
Unit Pulse Sequence
• The discrete-time unit impulse is a function in the
ordinary sense in contrast with the continuous-
time unit impulse.
• It has a sampling property.
• It has no scaling property i.e.
δ[n]= δ[an] for any non-zero finite integer ‘a’
Operations of Signals
• Sometime a given mathematical function may
completely describe a signal .
• Different operations are required for different
purposes of arbitrary signals.
• The operations on signals can be
Time Shifting
Time Scaling
Time Inversion or Time Folding
Time Shifting
• The original signal x(t) is shifted by an
amount tₒ.
• X(t)X(t-to) Signal Delayed Shift to the
right
Time Shifting Contd.
• X(t)X(t+to) Signal Advanced Shift
to the left
Time Scaling
• For the given function x(t), x(at) is the time
scaled version of x(t)
• For a 1,period of function x(t) reduces and˃
function speeds up. Graph of the function
shrinks.
• For a 1, the period of the x(t) increases˂
and the function slows down. Graph of the
function expands.
Time scaling Contd.
Example: Given x(t) and we are to find y(t) = x(2t).
The period of x(t) is 2 and the period of y(t) is 1,
Time scaling Contd.
• Given y(t),
– find w(t) = y(3t)
and v(t) = y(t/3).
Time Reversal
• Time reversal is also called time folding
• In Time reversal signal is reversed with
respect to time i.e.
y(t) = x(-t) is obtained for the given
function
Time reversal Contd.
0 0, an integern n n n→ +Time shifting
Operations of Discrete Time
Functions
Operations of Discrete Functions Contd.
Scaling; Signal Compression
n Kn→ K an integer > 1
Classification of Signals
• Deterministic & Non Deterministic Signals
• Periodic & A periodic Signals
• Even & Odd Signals
• Energy & Power Signals
Deterministic & Non Deterministic Signals
Deterministic signals
• Behavior of these signals is predictable w.r.t time
• There is no uncertainty with respect to its value at any
time.
• These signals can be expressed mathematically.
For example x(t) = sin(3t) is deterministic signal.
Deterministic & Non Deterministic Signals
Contd.
Non Deterministic or Random signals
• Behavior of these signals is random i.e. not predictable
w.r.t time.
• There is an uncertainty with respect to its value at any
time.
• These signals can’t be expressed mathematically.
• For example Thermal Noise generated is non
deterministic signal.
Periodic and Non-periodic Signals
• Given x(t) is a continuous-time signal
• x (t) is periodic iff x(t) = x(t+Tₒ) for any T and any integer n
• Example
– x(t) = A cos(ωt)
– x(t+Tₒ) = A cos[ω(t+Tₒ)] = A cos(ωt+ωTₒ)= A cos(ωt+2π)
= A cos(ωt)
– Note: Tₒ =1/fₒ ; ω=2πfₒ
Periodic and Non-periodic Signals
Contd.
• For non-periodic signals
x(t) ≠ x(t+Tₒ)
• A non-periodic signal is assumed to have a
period T = ∞
• Example of non periodic signal is an
exponential signal
Important Condition of Periodicity for
Discrete Time Signals
• A discrete time signal is periodic if
x(n) = x(n+N)
• For satisfying the above condition the
frequency of the discrete time signal should
be ratio of two integers
i.e. fₒ = k/N
Sum of periodic Signals
• X(t) = x1(t) + X2(t)
• X(t+T) = x1(t+m1T1) + X2(t+m2T2)
• m1T1=m2T2 = Tₒ = Fundamental period
• Example: cos(tπ/3)+sin(tπ/4)
– T1=(2π)/(π/3)=6; T2 =(2π)/(π/4)=8;
– T1/T2=6/8 = ¾ = (rational number) = m2/m1
– m1T1=m2T2  Find m1 and m2
– 6.4 = 3.8 = 24 = Tₒ
Sum of periodic Signals – may not
always be periodic!
T1=(2π)/(1)= 2π; T2 =(2π)/(sqrt(2));
T1/T2= sqrt(2);
– Note: T1/T2 = sqrt(2) is an irrational number
– X(t) is aperiodic
tttxtxtx 2sincos)()()( 21 +=+=
Even and Odd Signals
Even Functions Odd Functions
gt()=g−t() gt()=−g−t()
Even and Odd Parts of Functions
( )
( ) ( )g g
The of a function is g
2
e
t t
t
+ −
=even part
( )
( ) ( )g g
The of a function is g
2
o
t t
t
− −
=odd part
A function whose even part is zero, is odd and a function
whose odd part is zero, is even.
Various Combinations of even and odd
functions
Function type Sum Difference Product Quotient
Both even Even Even Even Even
Both odd Odd Odd Even Even
Even and odd Neither Neither Odd Odd
Product of Two Even Functions
Product of Even and Odd Functions
Product of Even and Odd Functions Contd.
Product of an Even Function and an Odd Function
Product of an Even Function and an Odd Function
Product of Even and Odd Functions Contd.
Product of Two Odd Functions
Product of Even and Odd Functions Contd.
Derivatives and Integrals of Functions
Function type Derivative Integral
Even Odd Odd + constant
Odd Even Even
Discrete Time Even and Odd Signals
[ ]
[ ] [ ]g g
g
2
e
n n
n
+ −
= [ ]
[ ] [ ]g g
g
2
o
n n
n
− −
=
[ ] [ ]g gn n= − [ ] [ ]g gn n= − −
Combination of even and odd
function for DT Signals
Function type Sum Difference Product Quotient
Both even Even Even Even Even
Both odd Odd Odd Even Even
Even and odd Even or Odd Even or odd Odd Odd
Products of DT Even and Odd
Functions
Two Even Functions
Products of DT Even and Odd
Functions Contd.
An Even Function and an Odd Function
Proof Examples
• Prove that product of two even
signals is even.
• Prove that product of two odd
signals is odd.
• What is the product of an even
signal and an odd signal? Prove
it!
)()()(
)()()(
)()()(
21
21
21
txtxtx
txtxtx
txtxtx
=×
=−×−=−
→×=
Eventx
txtxtx
txtxtx
txtxtx
←−
=−=−×
=−×−=−
→×=
)(
)()()(
)()()(
)()()(
21
21
21
Change t -t
Products of DT Even and Odd
Functions Contd.
Two Odd Functions
Energy and Power Signals
Energy Signal
• A signal with finite energy and zero power is called
Energy Signal i.e.for energy signal
0<E<∞ and P =0
• Signal energy of a signal is defined as the area
under the square of the magnitude of the signal.
• The units of signal energy depends on the unit of the
signal.
( )
2
x xE t dt
∞
−∞
= ∫
Energy and Power Signals Contd.
Power Signal
• Some signals have infinite signal energy. In that
caseit is more convenient to deal with average
signal power.
• For power signals
0<P<∞ and E = ∞
• Average power of the signal is given by
( )
/ 2
2
x
/ 2
1
lim x
T
T
T
P t dt
T→∞
−
= ∫
Energy and Power Signals Contd.
• For a periodic signal x(t) the average signal
power is
• T is any period of the signal.
• Periodic signals are generally power signals.
( )
2
x
1
x
T
P t dt
T
= ∫
Signal Energy and Power for DT
Signal
•The signal energy of a for a discrete time signal x[n] is
[ ]
2
x x
n
E n
∞
=−∞
= ∑
•A discrtet time signal with finite energy and zero
power is called Energy Signal i.e.for energy signal
0<E<∞ and P =0
Signal Energy and Power for DT
Signal Contd.
The average signal power of a discrete time power signal
x[n] is
[ ]
1
2
x
1
lim x
2
N
N
n N
P n
N
−
→∞
=−
= ∑
[ ]
2
x
1
x
n N
P n
N =
= ∑
For a periodic signal x[n] the average signal power is
The notation means the sum over any set of
consecutive 's exactly in length.
n N
n N
=
 
 ÷
 ÷
 
∑
What is System?
• Systems process input signals to produce output
signals
• A system is combination of elements that
manipulates one or more signals to accomplish a
function and produces some output.
system output
signal
input
signal
Examples of Systems
– A circuit involving a capacitor can be viewed as a
system that transforms the source voltage (signal) to the
voltage (signal) across the capacitor
– A communication system is generally composed of three
sub-systems, the transmitter, the channel and the
receiver. The channel typically attenuates and adds
noise to the transmitted signal which must be processed
by the receiver
– Biomedical system resulting in biomedical signal
processing
– Control systems
System - Example
• Consider an RL series circuit
– Using a first order equation:
dt
tdi
LRtitVVtV
dt
tdi
LtV
LR
L
)(
)()()(
)(
)(
+⋅=+=
=
LV(t)
R
Mathematical Modeling of Continuous
Systems
Most continuous time systems represent how continuous
signals are transformed via differential equations.
E.g. RC circuit
System indicating car velocity
)(
1
)(
1)(
tv
RC
tv
RCdt
tdv
sc
c
=+
)()(
)(
tftv
dt
tdv
m =+ ρ
Mathematical Modeling of Discrete
Time Systems
Most discrete time systems represent how discrete signals are
transformed via difference equations
e.g. bank account, discrete car velocity system
][]1[01.1][ nxnyny +−=
][]1[][ nf
m
nv
m
m
nv
∆+
∆
=−
∆+
−
ρρ
Types of Systems
• Causal & Anticausal
• Linear & Non Linear
• Time Variant &Time-invariant
• Stable & Unstable
• Static & Dynamic
• Invertible & Inverse Systems
Causal & Noncausal Systems
• Causal system : A system is said to be causal if
the present value of the output signal depends only
on the present and/or past values of the input
signal.
• Example: y[n]=x[n]+1/2x[n-1]
Causal & Noncausal Systems Contd.
• Noncausal system : A system is said to be
Noncausal if the present value of the output
signal depends only on the future values of
the input signal.
• Example: y[n]=x[n+1]+1/2x[n-1]
Linear & Non Linear Systems
• A system is said to be linear if it satisfies the
principle of superposition
• For checking the linearity of the given system,
firstly we check the response due to linear
combination of inputs
• Then we combine the two outputs linearly in the
same manner as the inputs are combined and again
total response is checked
• If response in step 2 and 3 are the same,the system
is linear othewise it is non linear.
Time Invariant and Time Variant
Systems
• A system is said to be time invariant if a time
delay or time advance of the input signal leads to a
identical time shift in the output signal.
0
0 0
( ) { ( )}
{ { ( )}} { ( )}
i
t t
y t H x t t
H S x t HS x t
= −
= =
0
0
0 0
( ) { ( )}
{ { ( )}} { ( )}
t
t t
y t S y t
S H x t S H x t
=
= =
Stable & Unstable Systems
• A system is said to be bounded-input bounded-
output stable (BIBO stable) iff every bounded
input results in a bounded output.
i.e.
| ( ) | | ( ) |x yt x t M t y t M∀ ≤ < ∞ → ∀ ≤ < ∞
Stable & Unstable Systems Contd.
Example
- y[n]=1/3(x[n]+x[n-1]+x[n-2])
1
[ ] [ ] [ 1] [ 2]
3
1
(| [ ]| | [ 1]| | [ 2]|)
3
1
( )
3
x x x x
y n x n x n x n
x n x n x n
M M M M
= + − + −
≤ + − + −
≤ + + =
Stable & Unstable Systems Contd.
Example: The system represented by
y(t) = A x(t) is unstable ; A 1˃
Reason: let us assume x(t) = u(t), then at
every instant u(t) will keep on multiplying
with A and hence it will not be bonded.
Static & Dynamic Systems
• A static system is memoryless system
• It has no storage devices
• its output signal depends on present values of the
input signal
• For example
Static & Dynamic Systems Contd.
• A dynamic system possesses memory
• It has the storage devices
• A system is said to possess memory if its output
signal depends on past values and future values of
the input signal
Example: Static or Dynamic?
Example: Static or Dynamic?
Answer:
• The system shown above is RC circuit
• R is memoryless
• C is memory device as it stores charge
because of which voltage across it can’t
change immediately
• Hence given system is dynamic or memory
system
Invertible & Inverse Systems
• If a system is invertible it has an Inverse System
• Example: y(t)=2x(t)
– System is invertible must have inverse, that is:
– For any x(t) we get a distinct output y(t)
– Thus, the system must have an Inverse
• x(t)=1/2 y(t)=z(t)
y(t)
System
Inverse
System
x(t) x(t)
y(t)=2x(t)System
(multiplier)
Inverse
System
(divider)
x(t) x(t)
LTI Systems
• LTI Systems are completely characterized by its
unit sample response
• The output of any LTI System is a convolution of
the input signal with the unit-impulse response,
i.e.
Properties of Convolution
Commutative Property
][*][][*][ nxnhnhnx =
Distributive Property
])[*][(])[*][(
])[][(*][
21
21
nhnxnhnx
nhnhnx
+
=+
Associative Property
][*])[*][(
][*])[*][(
][*][*][
12
21
21
nhnhnx
nhnhnx
nhnhnx
=
=
Useful Properties of (DT) LTI Systems
• Causality:
• Stability:
Bounded Input ↔ Bounded Output
00][ <= nnh
∞<∑
∞
−∞=k
kh ][
∞<−≤−=
∞<≤
∑∑
∞
−∞=
∞
−∞= kk
knhxknhkxny
xnx
][][][][
][for
max
max
Malviya National institute of
Technology,jaipur
THANKS

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2. signal & systems beyonds

  • 1. “Introduction to Signals & Systems” By:- Pawan Kumar Jangid (2013UEE1166) Sunil Kumar Yadav (2013UEE1176) Manish Kumar Bagara (2013UEE1180) Chandan Kumar (2013UEE1203) Subject:- Network, Signal & Systems
  • 2. Introduction to Signals • A Signal is the function of one or more independent variables that carries some information to represent a physical phenomenon. • A continuous-time signal, also called an analog signal, is defined along a continuum of time.
  • 3. A discrete-time signal is defined at discrete times.
  • 4. Elementary Signals Sinusoidal & Exponential Signals • Sinusoids and exponentials are important in signal and system analysis because they arise naturally in the solutions of the differential equations. • Sinusoidal Signals can expressed in either of two ways : cyclic frequency form- A sin 2Пfot = A sin(2П/To)t radian frequency form- A sin ωot ωo= 2Пfo= 2П/To To= Time Period of the Sinusoidal Wave
  • 5. Sinusoidal & Exponential Signals Contd. x(t) = A sin (2Пfot+ θ) = A sin (ωot+ θ) x(t) = Aeat Real Exponential = Aejωt =̥ A[cos (ωot) +j sin (ωot)] ComplexExponential θ = Phase of sinusoidal wave A = amplitude of a sinusoidal or exponential signal fo= fundamental cyclic frequency of sinusoidal signal ωo= radian frequency Sinusoidal signal
  • 6. Unit Step Function ( ) 1 , 0 u 1/ 2 , 0 0 , 0 t t t t >  = =  < Precise Graph Commonly-Used Graph
  • 7. Signum Function ( ) ( ) 1 , 0 sgn 0 , 0 2u 1 1 , 0 t t t t t >    = = = −   − <  Precise Graph Commonly-Used Graph The signum function, is closely related to the unit-step function.
  • 8. Unit Ramp Function ( ) ( ) ( ) , 0 ramp u u 0 , 0 t t t t d t t t λ λ −∞ >  = = =  ≤  ∫ •The unit ramp function is the integral of the unit step function. •It is called the unit ramp function because for positive t, its slope is one amplitude unit per time.
  • 9. Rectangular Pulse or Gate Function Rectangular pulse, ( ) 1/ , / 2 0 , / 2 a a t a t t a δ  < =  >
  • 10. Unit Impulse Function ( ) ( ) As approaches zero, g approaches a unit step andg approaches a unit impulse a t t′ So unit impulse function is the derivative of the unit step function or unit step is the integral of the unit impulse function Functions that approach unit step and unit impulse
  • 11. Representation of Impulse Function The area under an impulse is called its strength or weight. It is represented graphically by a vertical arrow. An impulse with a strength of one is called a unit impulse.
  • 12. Properties of the Impulse Function ( ) ( ) ( )0 0g gt t t dt tδ ∞ −∞ − =∫ The Sampling Property ( )( ) ( )0 0 1 a t t t t a δ δ− = − The Scaling Property The Replication Property g(t)⊗ δ(t) = g (t)
  • 13. Unit Impulse Train The unit impulse train is a sum of infinitely uniformly- spaced impulses and is given by ( ) ( ) , an integerT n t t nT nδ δ ∞ =−∞ = −∑
  • 14. The Unit Rectangle Function The unit rectangle or gate signal can be represented as combination of two shifted unit step signals as shown
  • 15. The Unit Triangle Function A triangular pulse whose height and area are both one but its base width is not, is called unit triangle function. The unit triangle is related to the unit rectangle through an operation called convolution.
  • 16. Sinc Function ( ) ( )sin sinc t t t π π =
  • 17. Discrete-Time Signals • Sampling is the acquisition of the values of a continuous-time signal at discrete points in time • x(t) is a continuous-time signal, x[n] is a discrete- time signal [ ] ( )x x where is the time between sampless sn nT T=
  • 18. Discrete Time Exponential and Sinusoidal Signals • DT signals can be defined in a manner analogous to their continuous-time counter part x[n] = A sin (2Пn/No+θ) = A sin (2ПFon+ θ) x[n] = an n = the discrete time A = amplitude θ = phase shifting radians, No = Discrete Period of the wave 1/N0= Fo= Ωo/2 П = Discrete Frequency Discrete Time Sinusoidal Signal Discrete Time Exponential Signal
  • 20. Discrete Time Unit Step Function or Unit Sequence Function [ ] 1 , 0 u 0 , 0 n n n ≥ =  <
  • 21. Discrete Time Unit Ramp Function [ ] [ ] , 0 ramp u 1 0 , 0 n m n n n m n =−∞ ≥  = = −  <  ∑
  • 22. Discrete Time Unit Impulse Function or Unit Pulse Sequence [ ] 1 , 0 0 , 0 n n n δ = =  ≠ [ ] [ ] for any non-zero, finite integer .n an aδ δ=
  • 23. Unit Pulse Sequence • The discrete-time unit impulse is a function in the ordinary sense in contrast with the continuous- time unit impulse. • It has a sampling property. • It has no scaling property i.e. δ[n]= δ[an] for any non-zero finite integer ‘a’
  • 24. Operations of Signals • Sometime a given mathematical function may completely describe a signal . • Different operations are required for different purposes of arbitrary signals. • The operations on signals can be Time Shifting Time Scaling Time Inversion or Time Folding
  • 25. Time Shifting • The original signal x(t) is shifted by an amount tₒ. • X(t)X(t-to) Signal Delayed Shift to the right
  • 26. Time Shifting Contd. • X(t)X(t+to) Signal Advanced Shift to the left
  • 27. Time Scaling • For the given function x(t), x(at) is the time scaled version of x(t) • For a 1,period of function x(t) reduces and˃ function speeds up. Graph of the function shrinks. • For a 1, the period of the x(t) increases˂ and the function slows down. Graph of the function expands.
  • 28. Time scaling Contd. Example: Given x(t) and we are to find y(t) = x(2t). The period of x(t) is 2 and the period of y(t) is 1,
  • 29. Time scaling Contd. • Given y(t), – find w(t) = y(3t) and v(t) = y(t/3).
  • 30. Time Reversal • Time reversal is also called time folding • In Time reversal signal is reversed with respect to time i.e. y(t) = x(-t) is obtained for the given function
  • 32. 0 0, an integern n n n→ +Time shifting Operations of Discrete Time Functions
  • 33. Operations of Discrete Functions Contd. Scaling; Signal Compression n Kn→ K an integer > 1
  • 34. Classification of Signals • Deterministic & Non Deterministic Signals • Periodic & A periodic Signals • Even & Odd Signals • Energy & Power Signals
  • 35. Deterministic & Non Deterministic Signals Deterministic signals • Behavior of these signals is predictable w.r.t time • There is no uncertainty with respect to its value at any time. • These signals can be expressed mathematically. For example x(t) = sin(3t) is deterministic signal.
  • 36. Deterministic & Non Deterministic Signals Contd. Non Deterministic or Random signals • Behavior of these signals is random i.e. not predictable w.r.t time. • There is an uncertainty with respect to its value at any time. • These signals can’t be expressed mathematically. • For example Thermal Noise generated is non deterministic signal.
  • 37. Periodic and Non-periodic Signals • Given x(t) is a continuous-time signal • x (t) is periodic iff x(t) = x(t+Tₒ) for any T and any integer n • Example – x(t) = A cos(ωt) – x(t+Tₒ) = A cos[ω(t+Tₒ)] = A cos(ωt+ωTₒ)= A cos(ωt+2π) = A cos(ωt) – Note: Tₒ =1/fₒ ; ω=2πfₒ
  • 38. Periodic and Non-periodic Signals Contd. • For non-periodic signals x(t) ≠ x(t+Tₒ) • A non-periodic signal is assumed to have a period T = ∞ • Example of non periodic signal is an exponential signal
  • 39. Important Condition of Periodicity for Discrete Time Signals • A discrete time signal is periodic if x(n) = x(n+N) • For satisfying the above condition the frequency of the discrete time signal should be ratio of two integers i.e. fₒ = k/N
  • 40. Sum of periodic Signals • X(t) = x1(t) + X2(t) • X(t+T) = x1(t+m1T1) + X2(t+m2T2) • m1T1=m2T2 = Tₒ = Fundamental period • Example: cos(tπ/3)+sin(tπ/4) – T1=(2π)/(π/3)=6; T2 =(2π)/(π/4)=8; – T1/T2=6/8 = ¾ = (rational number) = m2/m1 – m1T1=m2T2  Find m1 and m2 – 6.4 = 3.8 = 24 = Tₒ
  • 41. Sum of periodic Signals – may not always be periodic! T1=(2π)/(1)= 2π; T2 =(2π)/(sqrt(2)); T1/T2= sqrt(2); – Note: T1/T2 = sqrt(2) is an irrational number – X(t) is aperiodic tttxtxtx 2sincos)()()( 21 +=+=
  • 42. Even and Odd Signals Even Functions Odd Functions gt()=g−t() gt()=−g−t()
  • 43. Even and Odd Parts of Functions ( ) ( ) ( )g g The of a function is g 2 e t t t + − =even part ( ) ( ) ( )g g The of a function is g 2 o t t t − − =odd part A function whose even part is zero, is odd and a function whose odd part is zero, is even.
  • 44. Various Combinations of even and odd functions Function type Sum Difference Product Quotient Both even Even Even Even Even Both odd Odd Odd Even Even Even and odd Neither Neither Odd Odd
  • 45. Product of Two Even Functions Product of Even and Odd Functions
  • 46. Product of Even and Odd Functions Contd. Product of an Even Function and an Odd Function
  • 47. Product of an Even Function and an Odd Function Product of Even and Odd Functions Contd.
  • 48. Product of Two Odd Functions Product of Even and Odd Functions Contd.
  • 49. Derivatives and Integrals of Functions Function type Derivative Integral Even Odd Odd + constant Odd Even Even
  • 50. Discrete Time Even and Odd Signals [ ] [ ] [ ]g g g 2 e n n n + − = [ ] [ ] [ ]g g g 2 o n n n − − = [ ] [ ]g gn n= − [ ] [ ]g gn n= − −
  • 51. Combination of even and odd function for DT Signals Function type Sum Difference Product Quotient Both even Even Even Even Even Both odd Odd Odd Even Even Even and odd Even or Odd Even or odd Odd Odd
  • 52. Products of DT Even and Odd Functions Two Even Functions
  • 53. Products of DT Even and Odd Functions Contd. An Even Function and an Odd Function
  • 54. Proof Examples • Prove that product of two even signals is even. • Prove that product of two odd signals is odd. • What is the product of an even signal and an odd signal? Prove it! )()()( )()()( )()()( 21 21 21 txtxtx txtxtx txtxtx =× =−×−=− →×= Eventx txtxtx txtxtx txtxtx ←− =−=−× =−×−=− →×= )( )()()( )()()( )()()( 21 21 21 Change t -t
  • 55. Products of DT Even and Odd Functions Contd. Two Odd Functions
  • 56. Energy and Power Signals Energy Signal • A signal with finite energy and zero power is called Energy Signal i.e.for energy signal 0<E<∞ and P =0 • Signal energy of a signal is defined as the area under the square of the magnitude of the signal. • The units of signal energy depends on the unit of the signal. ( ) 2 x xE t dt ∞ −∞ = ∫
  • 57. Energy and Power Signals Contd. Power Signal • Some signals have infinite signal energy. In that caseit is more convenient to deal with average signal power. • For power signals 0<P<∞ and E = ∞ • Average power of the signal is given by ( ) / 2 2 x / 2 1 lim x T T T P t dt T→∞ − = ∫
  • 58. Energy and Power Signals Contd. • For a periodic signal x(t) the average signal power is • T is any period of the signal. • Periodic signals are generally power signals. ( ) 2 x 1 x T P t dt T = ∫
  • 59. Signal Energy and Power for DT Signal •The signal energy of a for a discrete time signal x[n] is [ ] 2 x x n E n ∞ =−∞ = ∑ •A discrtet time signal with finite energy and zero power is called Energy Signal i.e.for energy signal 0<E<∞ and P =0
  • 60. Signal Energy and Power for DT Signal Contd. The average signal power of a discrete time power signal x[n] is [ ] 1 2 x 1 lim x 2 N N n N P n N − →∞ =− = ∑ [ ] 2 x 1 x n N P n N = = ∑ For a periodic signal x[n] the average signal power is The notation means the sum over any set of consecutive 's exactly in length. n N n N =    ÷  ÷   ∑
  • 61. What is System? • Systems process input signals to produce output signals • A system is combination of elements that manipulates one or more signals to accomplish a function and produces some output. system output signal input signal
  • 62. Examples of Systems – A circuit involving a capacitor can be viewed as a system that transforms the source voltage (signal) to the voltage (signal) across the capacitor – A communication system is generally composed of three sub-systems, the transmitter, the channel and the receiver. The channel typically attenuates and adds noise to the transmitted signal which must be processed by the receiver – Biomedical system resulting in biomedical signal processing – Control systems
  • 63. System - Example • Consider an RL series circuit – Using a first order equation: dt tdi LRtitVVtV dt tdi LtV LR L )( )()()( )( )( +⋅=+= = LV(t) R
  • 64. Mathematical Modeling of Continuous Systems Most continuous time systems represent how continuous signals are transformed via differential equations. E.g. RC circuit System indicating car velocity )( 1 )( 1)( tv RC tv RCdt tdv sc c =+ )()( )( tftv dt tdv m =+ ρ
  • 65. Mathematical Modeling of Discrete Time Systems Most discrete time systems represent how discrete signals are transformed via difference equations e.g. bank account, discrete car velocity system ][]1[01.1][ nxnyny +−= ][]1[][ nf m nv m m nv ∆+ ∆ =− ∆+ − ρρ
  • 66. Types of Systems • Causal & Anticausal • Linear & Non Linear • Time Variant &Time-invariant • Stable & Unstable • Static & Dynamic • Invertible & Inverse Systems
  • 67. Causal & Noncausal Systems • Causal system : A system is said to be causal if the present value of the output signal depends only on the present and/or past values of the input signal. • Example: y[n]=x[n]+1/2x[n-1]
  • 68. Causal & Noncausal Systems Contd. • Noncausal system : A system is said to be Noncausal if the present value of the output signal depends only on the future values of the input signal. • Example: y[n]=x[n+1]+1/2x[n-1]
  • 69. Linear & Non Linear Systems • A system is said to be linear if it satisfies the principle of superposition • For checking the linearity of the given system, firstly we check the response due to linear combination of inputs • Then we combine the two outputs linearly in the same manner as the inputs are combined and again total response is checked • If response in step 2 and 3 are the same,the system is linear othewise it is non linear.
  • 70. Time Invariant and Time Variant Systems • A system is said to be time invariant if a time delay or time advance of the input signal leads to a identical time shift in the output signal. 0 0 0 ( ) { ( )} { { ( )}} { ( )} i t t y t H x t t H S x t HS x t = − = = 0 0 0 0 ( ) { ( )} { { ( )}} { ( )} t t t y t S y t S H x t S H x t = = =
  • 71. Stable & Unstable Systems • A system is said to be bounded-input bounded- output stable (BIBO stable) iff every bounded input results in a bounded output. i.e. | ( ) | | ( ) |x yt x t M t y t M∀ ≤ < ∞ → ∀ ≤ < ∞
  • 72. Stable & Unstable Systems Contd. Example - y[n]=1/3(x[n]+x[n-1]+x[n-2]) 1 [ ] [ ] [ 1] [ 2] 3 1 (| [ ]| | [ 1]| | [ 2]|) 3 1 ( ) 3 x x x x y n x n x n x n x n x n x n M M M M = + − + − ≤ + − + − ≤ + + =
  • 73. Stable & Unstable Systems Contd. Example: The system represented by y(t) = A x(t) is unstable ; A 1˃ Reason: let us assume x(t) = u(t), then at every instant u(t) will keep on multiplying with A and hence it will not be bonded.
  • 74. Static & Dynamic Systems • A static system is memoryless system • It has no storage devices • its output signal depends on present values of the input signal • For example
  • 75. Static & Dynamic Systems Contd. • A dynamic system possesses memory • It has the storage devices • A system is said to possess memory if its output signal depends on past values and future values of the input signal
  • 76. Example: Static or Dynamic?
  • 77. Example: Static or Dynamic? Answer: • The system shown above is RC circuit • R is memoryless • C is memory device as it stores charge because of which voltage across it can’t change immediately • Hence given system is dynamic or memory system
  • 78. Invertible & Inverse Systems • If a system is invertible it has an Inverse System • Example: y(t)=2x(t) – System is invertible must have inverse, that is: – For any x(t) we get a distinct output y(t) – Thus, the system must have an Inverse • x(t)=1/2 y(t)=z(t) y(t) System Inverse System x(t) x(t) y(t)=2x(t)System (multiplier) Inverse System (divider) x(t) x(t)
  • 79. LTI Systems • LTI Systems are completely characterized by its unit sample response • The output of any LTI System is a convolution of the input signal with the unit-impulse response, i.e.
  • 80. Properties of Convolution Commutative Property ][*][][*][ nxnhnhnx = Distributive Property ])[*][(])[*][( ])[][(*][ 21 21 nhnxnhnx nhnhnx + =+ Associative Property ][*])[*][( ][*])[*][( ][*][*][ 12 21 21 nhnhnx nhnhnx nhnhnx = =
  • 81. Useful Properties of (DT) LTI Systems • Causality: • Stability: Bounded Input ↔ Bounded Output 00][ <= nnh ∞<∑ ∞ −∞=k kh ][ ∞<−≤−= ∞<≤ ∑∑ ∞ −∞= ∞ −∞= kk knhxknhkxny xnx ][][][][ ][for max max
  • 82. Malviya National institute of Technology,jaipur THANKS

Notas del editor

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