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TOPICS
• Signal and System(definitions)
• Continuous-Time Signal
• Discrete-Time Signal
• Signal Processing
• Basic Elements of Signal Processing
• Classification of Signals
• Basic Signal Operations(amplitude and time scaling)
1
2
• Signal:
A signal is defined as a function of one or more variables
which conveys information on the nature of a physical
phenomenon. The value of the function can be a real
valued scalar quantity, a complex valued quantity, or
perhaps a vector.
• System:
A system is defined as an entity that manipulates one or
more signals to accomplish a function, thereby yielding
new signals.
3
• Continuos-Time Signal:
A signal x(t) is said to be a continuous time signal if it is
defined for all time t.
• Discrete-Time Signal:
A discrete time signal x[nT] has values specified only at
discrete points in time.
• Signal Processing:
A system characterized by the type of operation that it
performs on the signal. For example, if the operation is
linear, the system is called linear. If the operation is non-
linear, the system is said to be non-linear, and so forth.
Such operations are usually referred to as “Signal
Processing”.
4
Basic Elements of a Signal Processing
System
Analog
Signal Processor
Analog input
signal
Analog output
signal
Analog Signal Processing
Digital
Signal Processor
A/D
converter
D/A
converter
Digital Signal Processing
Analog
input
signal
Analog
output
signal
5
Classification of Signals
•Deterministic Signals
A deterministic signal behaves in a fixed known way with
respect to time. Thus, it can be modeled by a known
function of time t for continuous time signals, or a known
function of a sampler number n, and sampling spacing T
for discrete time signals.
• Random or Stochastic Signals:
In many practical situations, there are signals that either
cannot be described to any reasonable degree of accuracy
by explicit mathematical formulas, or such a description is
too complicated to be of any practical use. The lack of
such a relationship implies that such signals evolve in time
in an unpredictable manner. We refer to these signals as
random.
6
Even and Odd Signals
A continuous time signal x(t) is said to an even signal if it
satisfies the condition
x(-t) = x(t) for all t
The signal x(t) is said to be an odd signal if it satisfies the
condition
x(-t) = -x(t)
In other words, even signals are symmetric about the
vertical axis or time origin, whereas odd signals are
antisymmetric about the time origin. Similar remarks
apply to discrete-time signals.
Example:
even
odd odd
7
Periodic Signals
A continuous signal x(t) is periodic if and only if there
exists a T > 0 such that
x(t + T) = x(t)
where T is the period of the signal in units of time.
f = 1/T is the frequency of the signal in Hz. W = 2/T is the
angular frequency in radians per second.
The discrete time signal x[nT] is periodic if and only if
there exists an N > 0 such that
x[nT + N] = x[nT]
where N is the period of the signal in number of sample
spacings.
Example:
0 0.2 0.4
Frequency = 5 Hz or 10 rad/s
8
Continuous Time Sinusoidal Signals
A simple harmonic oscillation is mathematically
described as
x(t) = Acos(wt + )
This signal is completely characterized by three
parameters:
A = amplitude, w = 2f = frequency in rad/s, and  =
phase in radians.
A T=1/f
9
Discrete Time Sinusoidal Signals
A discrete time sinusoidal signal may be expressed as
x[n] = Acos(wn + ) - < n < 
Properties:
• A discrete time sinusoid is periodic only if its frequency is a rational
number.
• Discrete time sinusoids whose frequencies are separated by
an integer multiple of 2 are identical.
• The highest rate of oscillation in a discrete time sinusoid is
attained when w =  ( or w = - ), or equivalently f = 1/2 (or f = -
1/2).
0 2 4 6 8 10
-1
0
1
10
Energy and Power Signals
•A signal is referred to as an energy signal, if and only if
the total energy of the signal satisfies the condition
0 < E < 
•On the other hand, it is referred to as a power signal, if
and only if the average power of the signal satisfies the
condition
0 < P < 
•An energy signal has zero average power, whereas a power
signal has infinite energy.
•Periodic signals and random signals are usually viewed as
power signals, whereas signals that are both deterministic and
non-periodic are energy signals.
11
Basic Operations on Signals
(a) Operations performed on dependent
variables
1. Amplitude Scaling:
let x(t) denote a continuous time signal. The signal y(t)
resulting from amplitude scaling applied to x(t) is
defined by
y(t) = cx(t)
where c is the scale factor.
In a similar manner to the above equation, for discrete
time signals we write
y[nT] = cx[nT]
x(t)
2x(t)
12
2. Addition:
Let x1 [n] and x2[n] denote a pair of discrete time signals.
The signal y[n] obtained by the addition of x1[n] + x2[n]
is defined as
y[n] = x1[n] + x2[n]
Example: audio mixer
3. Multiplication:
Let x1[n] and x2[n] denote a pair of discrete-time signals.
The signal y[n] resulting from the multiplication of the
x1[n] and x2[n] is defined by
y[n] = x1[n].x2[n]
Example: AM Radio Signal
13
(b) Operations performed on independent
variable
• Time Scaling:
Let y(t) is a compressed version of x(t). The signal y(t)
obtained by scaling the independent variable, time t, by
a factor k is defined by
y(t) = x(kt)
– if k > 1, the signal y(t) is a compressed version of
x(t).
– If, on the other hand, 0 < k < 1, the signal y(t) is an
expanded (stretched) version of x(t).
14
Example of time scaling
0 5 10 15
0
0.1
0.2
0.3
0.4
0.5
0.6
0.7
0.8
0.9
1
exp(-2t)
exp(-t)
exp(-0.5t)
Expansion and compression of the signal
e-t.
15
-3 -2 -1 0 1 2 3
0
5
10
x[n]
-1.5 -1 -0.5 0 0.5 1 1.5
0
5
10
x[0.5n]
-6 -4 -2 0 2 4 6
0
5
x[2n]
n
Time scaling of discrete time systems
16
Time Reversal
• This operation reflects the signal about t = 0
and thus reverses the signal on the time scale.
0 1 2 3 4 5
0
5
x[n]
n
0 1 2 3 4 5
-5
0
x[-n]
n
17
Time Shift
A signal may be shifted in time by replacing the
independent variable n by n-k, where k is an
integer. If k is a positive integer, the time shift
results in a delay of the signal by k units of time. If
k is a negative integer, the time shift results in an
advance of the signal by |k| units in time.
x[n
]
x[n+3]
x[n-3]
n

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Signal and System, CT Signal DT Signal, Signal Processing(amplitude and time scaling)

  • 1. TOPICS • Signal and System(definitions) • Continuous-Time Signal • Discrete-Time Signal • Signal Processing • Basic Elements of Signal Processing • Classification of Signals • Basic Signal Operations(amplitude and time scaling) 1
  • 2. 2 • Signal: A signal is defined as a function of one or more variables which conveys information on the nature of a physical phenomenon. The value of the function can be a real valued scalar quantity, a complex valued quantity, or perhaps a vector. • System: A system is defined as an entity that manipulates one or more signals to accomplish a function, thereby yielding new signals.
  • 3. 3 • Continuos-Time Signal: A signal x(t) is said to be a continuous time signal if it is defined for all time t. • Discrete-Time Signal: A discrete time signal x[nT] has values specified only at discrete points in time. • Signal Processing: A system characterized by the type of operation that it performs on the signal. For example, if the operation is linear, the system is called linear. If the operation is non- linear, the system is said to be non-linear, and so forth. Such operations are usually referred to as “Signal Processing”.
  • 4. 4 Basic Elements of a Signal Processing System Analog Signal Processor Analog input signal Analog output signal Analog Signal Processing Digital Signal Processor A/D converter D/A converter Digital Signal Processing Analog input signal Analog output signal
  • 5. 5 Classification of Signals •Deterministic Signals A deterministic signal behaves in a fixed known way with respect to time. Thus, it can be modeled by a known function of time t for continuous time signals, or a known function of a sampler number n, and sampling spacing T for discrete time signals. • Random or Stochastic Signals: In many practical situations, there are signals that either cannot be described to any reasonable degree of accuracy by explicit mathematical formulas, or such a description is too complicated to be of any practical use. The lack of such a relationship implies that such signals evolve in time in an unpredictable manner. We refer to these signals as random.
  • 6. 6 Even and Odd Signals A continuous time signal x(t) is said to an even signal if it satisfies the condition x(-t) = x(t) for all t The signal x(t) is said to be an odd signal if it satisfies the condition x(-t) = -x(t) In other words, even signals are symmetric about the vertical axis or time origin, whereas odd signals are antisymmetric about the time origin. Similar remarks apply to discrete-time signals. Example: even odd odd
  • 7. 7 Periodic Signals A continuous signal x(t) is periodic if and only if there exists a T > 0 such that x(t + T) = x(t) where T is the period of the signal in units of time. f = 1/T is the frequency of the signal in Hz. W = 2/T is the angular frequency in radians per second. The discrete time signal x[nT] is periodic if and only if there exists an N > 0 such that x[nT + N] = x[nT] where N is the period of the signal in number of sample spacings. Example: 0 0.2 0.4 Frequency = 5 Hz or 10 rad/s
  • 8. 8 Continuous Time Sinusoidal Signals A simple harmonic oscillation is mathematically described as x(t) = Acos(wt + ) This signal is completely characterized by three parameters: A = amplitude, w = 2f = frequency in rad/s, and  = phase in radians. A T=1/f
  • 9. 9 Discrete Time Sinusoidal Signals A discrete time sinusoidal signal may be expressed as x[n] = Acos(wn + ) - < n <  Properties: • A discrete time sinusoid is periodic only if its frequency is a rational number. • Discrete time sinusoids whose frequencies are separated by an integer multiple of 2 are identical. • The highest rate of oscillation in a discrete time sinusoid is attained when w =  ( or w = - ), or equivalently f = 1/2 (or f = - 1/2). 0 2 4 6 8 10 -1 0 1
  • 10. 10 Energy and Power Signals •A signal is referred to as an energy signal, if and only if the total energy of the signal satisfies the condition 0 < E <  •On the other hand, it is referred to as a power signal, if and only if the average power of the signal satisfies the condition 0 < P <  •An energy signal has zero average power, whereas a power signal has infinite energy. •Periodic signals and random signals are usually viewed as power signals, whereas signals that are both deterministic and non-periodic are energy signals.
  • 11. 11 Basic Operations on Signals (a) Operations performed on dependent variables 1. Amplitude Scaling: let x(t) denote a continuous time signal. The signal y(t) resulting from amplitude scaling applied to x(t) is defined by y(t) = cx(t) where c is the scale factor. In a similar manner to the above equation, for discrete time signals we write y[nT] = cx[nT] x(t) 2x(t)
  • 12. 12 2. Addition: Let x1 [n] and x2[n] denote a pair of discrete time signals. The signal y[n] obtained by the addition of x1[n] + x2[n] is defined as y[n] = x1[n] + x2[n] Example: audio mixer 3. Multiplication: Let x1[n] and x2[n] denote a pair of discrete-time signals. The signal y[n] resulting from the multiplication of the x1[n] and x2[n] is defined by y[n] = x1[n].x2[n] Example: AM Radio Signal
  • 13. 13 (b) Operations performed on independent variable • Time Scaling: Let y(t) is a compressed version of x(t). The signal y(t) obtained by scaling the independent variable, time t, by a factor k is defined by y(t) = x(kt) – if k > 1, the signal y(t) is a compressed version of x(t). – If, on the other hand, 0 < k < 1, the signal y(t) is an expanded (stretched) version of x(t).
  • 14. 14 Example of time scaling 0 5 10 15 0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1 exp(-2t) exp(-t) exp(-0.5t) Expansion and compression of the signal e-t.
  • 15. 15 -3 -2 -1 0 1 2 3 0 5 10 x[n] -1.5 -1 -0.5 0 0.5 1 1.5 0 5 10 x[0.5n] -6 -4 -2 0 2 4 6 0 5 x[2n] n Time scaling of discrete time systems
  • 16. 16 Time Reversal • This operation reflects the signal about t = 0 and thus reverses the signal on the time scale. 0 1 2 3 4 5 0 5 x[n] n 0 1 2 3 4 5 -5 0 x[-n] n
  • 17. 17 Time Shift A signal may be shifted in time by replacing the independent variable n by n-k, where k is an integer. If k is a positive integer, the time shift results in a delay of the signal by k units of time. If k is a negative integer, the time shift results in an advance of the signal by |k| units in time. x[n ] x[n+3] x[n-3] n