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Signals and SystemsSignals and Systems
6552111 Signals and Systems6552111 Signals and Systems
Sopapun Suwansawang
Lecture #1
1
Lecture #1
Elementary Signals and Systems
Week#1-2
SignalsSignals
Signals are functions of independent variables that
carry information.
FUNCTIONS OF TIME AS SIGNALS
6552111 Signals and Systems6552111 Signals and Systems
Sopapun Suwansawang 2
Figure : Domain, co-domain, and range of a real function of continuous time.
)(tfv =
SignalsSignals
For example:
Electrical signals voltages and currents
in a circuit
Acoustic signals audio or speech
6552111 Signals and Systems6552111 Signals and Systems
Acoustic signals audio or speech
signals (analog or digital)
Video signals intensity variations in an
image
Biological signals sequence of bases in
a gene
Sopapun Suwansawang 3
There are two types of signals:
Continuous-time signals (CT) are functions
of a continuous variable (time).
Discrete-time signals (DT) are functions of
6552111 Signals and Systems6552111 Signals and Systems
SignalsSignals
Discrete-time signals (DT) are functions of
a discrete variable; that is, they are
defined only for integer values of the
independent variable (time steps).
4Sopapun Suwansawang
CT and DT SignalsCT and DT Signals
6552111 Signals and Systems6552111 Signals and Systems
CT DT
5Sopapun Suwansawang
Signal such as :)(tx ),...(),...,(),( 10 ntxtxtx
or in a shorter form as :
,...,...,,
],...[],...,1[],0[
10 nxxx
nxxx
or
where we understand that
6552111 Signals and Systems6552111 Signals and Systems
)(][ nn txnxx ==
and 's are called samples and the time interval
between them is called the sampling interval. When
nx
CT and DT SignalsCT and DT Signals
6Sopapun Suwansawang
between them is called the sampling interval. When
the sampling intervals are equal (uniform sampling),
then
n
)()(][ snTtn nTxtxnxx
s
=== =
where the constant is the sampling intervalsT
6552111 Signals and Systems6552111 Signals and Systems



<
≥
=
0,0
0,8.0
)(
t
t
tx
t



<
≥
=
0,0
0,8.0
][
n
n
nx
n
CT and DT SignalsCT and DT Signals
7Sopapun Suwansawang
)(tx
t
0
1
0
1
][nx
n
1 2 3 4 5
A discrete-time signal x[n] can be defined in two
ways:
1. We can specify a rule for calculating the nth
value of the sequence. (see Example 1)
6552111 Signals and Systems6552111 Signals and Systems
CT and DT SignalsCT and DT Signals
value of the sequence. (see Example 1)
2. We can also explicitly list the values of the
sequence. (see Example 2)
8Sopapun Suwansawang
6552111 Signals and Systems6552111 Signals and Systems
DT SignalsDT Signals




≥
== 




 0
][
2
1
n
xnx
n
n
Example 1
9Sopapun Suwansawang


 <

00 n
...},
8
1
,
4
1
,
2
1
,1{}{ =nx
6552111 Signals and Systems6552111 Signals and Systems
DT SignalsDT Signals
Example 1: Continue
10Sopapun Suwansawang
DT SignalsDT Signals
6552111 Signals and Systems6552111 Signals and Systems
Example 2
11Sopapun Suwansawang
DT SignalsDT Signals
6552111 Signals and Systems6552111 Signals and Systems
The sequence can be written as
Example 2 : continue
,...}0,0,2,0,1,0,1,2,2,1,0,0{...,}{ =nx
12Sopapun Suwansawang
}2,0,1,0,1,2,2,1{}{ =nx
We use the arrow to denote the n = 0 term. We shall use the
convention that if no arrow is indicated, then the first term
corresponds to n = 0 and all the values of the sequence are
zero for n < 0.
Example 3 Given the continuous-time signal
specified by
DT SignalsDT Signals
6552111 Signals and Systems6552111 Signals and Systems


 ≤≤−−
=
otherwise
tt
tx
0
111
)(
Determine the resultant discrete-time sequence
obtained by uniform sampling of x(t) with a
sampling interval of 0.25 s
13Sopapun Suwansawang


otherwise0
Solve :
Ts=0.25 s,
Ts=1 s,
DT SignalsDT Signals
6552111 Signals and Systems6552111 Signals and Systems





=
↑
,...0,25.0,5.0,75.0,1,75.0,5.0,25.0,0...,][nx



= ,...0,1,0...,][nxTs=1 s,
14Sopapun Suwansawang





=
↑
,...0,1,0...,][nx
Analog signals
6552111 Signals and Systems6552111 Signals and Systems
Analog and Digital SignalsAnalog and Digital Signals
If a continuous-time signal x(t) can take on any
value in the continuous interval (-∞∞∞∞ , +∞∞∞∞), then
the continuous-time signal x(t) is called an analog
Digital signals
A signal x[n] can take on only a finite number of
distinct values, then we call this signal a digital
signal.
15Sopapun Suwansawang
the continuous-time signal x(t) is called an analog
signal.
CT and DT
6552111 Signals and Systems6552111 Signals and Systems
Digital SignalsDigital Signals
16Sopapun Suwansawang
CT
Binary signal Multi-level signal
6552111 Signals and Systems6552111 Signals and Systems
Digital SignalsDigital Signals
17Sopapun Suwansawang
Intuitively, a signal is periodic when it repeats
itself.
A continuous-time signal x(t) is periodic if there
exists a positive real T for which
6552111 Signals and Systems6552111 Signals and Systems
Periodic SignalsPeriodic Signals
for all t and any integer m.The fundamental period
T0 of x(t) is the smallest positive value of T
18Sopapun Suwansawang
)()( mTtxtx +=
0
0
2
ω
π
=T
Fundamental frequency
6552111 Signals and Systems6552111 Signals and Systems
Periodic SignalsPeriodic Signals
0
0
1
T
f = Hz
Fundamental angular frequency
19Sopapun Suwansawang
0
00
2
2
T
f
π
πω == rad/sec
A discrete-time signal x[n] is periodic if there
exists a positive integer N for which
6552111 Signals and Systems6552111 Signals and Systems
Periodic SignalsPeriodic Signals
][][ mNnxnx +=
for all n and any integer m.The fundamental period N0 of
x[n] is the smallest positive integer N
20Sopapun Suwansawang
0
0
2
Ω
=
π
N
Any sequence which is not periodic is
called a non-periodic (or aperiodic)
sequence.
6552111 Signals and Systems6552111 Signals and Systems
NonperiodicNonperiodic SignalsSignals
21Sopapun Suwansawang
6552111 Signals and Systems6552111 Signals and Systems
Periodic SignalsPeriodic Signals
CT
22Sopapun Suwansawang
DT
Example 3 Find the fundamental frequency
in figure below.
6552111 Signals and Systems6552111 Signals and Systems
Periodic SignalsPeriodic Signals
23Sopapun Suwansawang
Hz
T
f
4
11
0
0 ==.sec40 =T
(sec.)
Exercise Determine whether or not each of the
following signals is periodic. If a signal is periodic,
determine its fundamental period.
6552111 Signals and Systems6552111 Signals and Systems
Periodic SignalsPeriodic Signals
ttx )
4
cos()(.1
π
+=
24Sopapun Suwansawang
nnnx
nnx
enx
tttx
tttx
nj
4
sin
3
cos][.6
4
1
cos][.5
][.4
2sincos)(.3
4
sin
3
cos)(.2
4
)4/(
ππ
ππ
π
+=
=
=
+=
+=
Solve EX.1
6552111 Signals and Systems6552111 Signals and Systems
Periodic SignalsPeriodic Signals
1
4
cos)
4
cos()( 00 =→





+=+= ω
π
ω
π
tttx
ππ 22
25Sopapun Suwansawang
π
π
ω
π
2
1
22
0
0 ===T
x(t) is periodic with fundamental period T0 = 2π.
Solve EX.2
6552111 Signals and Systems6552111 Signals and Systems
Periodic SignalsPeriodic Signals
)()(
4
sin
3
cos)( 21 txtxtttx +=+=
ππ
( ) .6
2
cos3/cos)( 111 ==→==
π
ωπ Ttttxwhere
26Sopapun Suwansawang
( )
.8
4/
2
sin)4/sin()(
.6
3/
cos3/cos)(
222
111
==→==
==→==
π
π
ωπ
π
ωπ
Ttttx
Ttttxwhere
numberrationalais
T
T
4
3
8
6
2
1 ==
x(t) is periodic with fundamental period T0 = 4T1=3T2=24.
Note : Least Common Multiplier of (6,8) is 24
6552111 Signals and Systems6552111 Signals and Systems
Even and Odd Signals:Even and Odd Signals:
A signal x(t) or x[n] is referred to as an even signal if
][][
)()(
nxnx
txtx
−=
−=
27Sopapun Suwansawang
A signal x(t) or x[n] is referred to as an odd signal if
][][
)()(
nxnx
txtx
−=−
−=−
6552111 Signals and Systems6552111 Signals and Systems
Even and Odd Signals:Even and Odd Signals:
28Sopapun Suwansawang
Any signal x(t) or x[n] can be expressed as a
sum of two signals, one of which is even and
one of which is odd.That is,
6552111 Signals and Systems6552111 Signals and Systems
Even and Odd Signals:Even and Odd Signals:
)()()( txtxtx oe +=
29Sopapun Suwansawang
][][][ nxnxnx oe
oe
+=
{ }
{ }][][
2
1
][
)()(
2
1
)(
nxnxnx
txtxtx
e
e
−+=
−+= { }
{ }][][
2
1
][
)()(
2
1
)(
nxnxnx
txtxtx
o
o
−−=
−−=
even part odd part
6552111 Signals and Systems6552111 Signals and Systems
Even and Odd Signals:Even and Odd Signals:
Example 4 Find the even and odd components of
the signals shown in figure below
30Sopapun Suwansawang
Solve even part { })()()(2 tftftfe −+=
2fe(t)
Example 4 : continue
Odd part
6552111 Signals and Systems6552111 Signals and Systems
Even and Odd Signals:Even and Odd Signals:
{ })()()(2 tftftfo −−=
2fo(t)
31Sopapun Suwansawang
2fo(t)
Example 4 : continue
Check
)()()( tftftf oe +=
6552111 Signals and Systems6552111 Signals and Systems
Even and Odd Signals:Even and Odd Signals:
{ })()(
2
1
)( tftftfo −−={ },)()(
2
1
)( tftftfe −+=
32
)()()( tftftf oe +=
Sopapun Suwansawang
2
fo(t)
fe(t)
Note that the product of two even signals or of
two odd signals is an even signal and that the
product of an even signal and an odd signal is an
odd signal.
(even)(even)=even
6552111 Signals and Systems6552111 Signals and Systems
Even and Odd Signals:Even and Odd Signals:
(even)(even)=even
(even)(odd)=odd
(odd)(even)=odd
(odd)(odd)=even
33Sopapun Suwansawang
Example 5 Show that the product of two even
signals or of two odd signals is an even signal
and that the product of an even and an odd
signaI is an odd signal.
6552111 Signals and Systems6552111 Signals and Systems
Even and Odd Signals:Even and Odd Signals:
Let )()()( txtxtx =
34Sopapun Suwansawang
Let )()()( 21 txtxtx =
If x1(t) and x2(t) are both even, then
)()()()()()( 2121 txtxtxtxtxtx ==−−=−
If x1(t) and x2(t) are both even, then
)()()())()(()()()( 212121 txtxtxtxtxtxtxtx ==−−=−−=−
A deterministic signal is a signal in which each
value of the signal is fixed and can be
determined by a mathematical expression, rule,
or table. Because of this the future values of the
signal can be calculated from past values with
6552111 Signals and Systems6552111 Signals and Systems
Deterministic and Random Signals:Deterministic and Random Signals:
signal can be calculated from past values with
complete confidence.
A random signal has a lot of uncertainty about
its behavior. The future values of a random
signal cannot be accurately predicted and can
usually only be guessed based on the averages
of sets of signals
35Sopapun Suwansawang
6552111 Signals and Systems6552111 Signals and Systems
Deterministic and Random Signals:Deterministic and Random Signals:
Deterministic
36Sopapun Suwansawang
Random
RightRight--Handed and LeftHanded and Left--Handed SignalsHanded Signals
A right-handed signal and left-handed signal are
those signals whose value is zero between a
given variable and positive or negative infinity.
Mathematically speaking,
A right-handed signal is defined as any signal
6552111 Signals and Systems6552111 Signals and Systems
A right-handed signal is defined as any signal
where f(t) = 0 for
A left-handed signal is defined as any signal
where f(t) = 0 for
37Sopapun Suwansawang
∞<< 1tt
−∞>> 1tt
RightRight--Handed and LeftHanded and Left--Handed SignalsHanded Signals
6552111 Signals and Systems6552111 Signals and Systems
Right-Handed
1t
38Sopapun Suwansawang
Left-Handed
1
1t
Causal vs.Anticausal vs. NoncausalCausal vs.Anticausal vs. Noncausal
Causal signals are signals that are zero for
all negative time.
Anticausal signals are signals that are zero
for all positive time.
6552111 Signals and Systems6552111 Signals and Systems
for all positive time.
Noncausal signals are signals that have
nonzero values in both positive and
negative time.
39Sopapun Suwansawang
Causal vs.Anticausal vs. NoncausalCausal vs.Anticausal vs. Noncausal
6552111 Signals and Systems6552111 Signals and Systems
Causal
40Sopapun Suwansawang
Anticausal
Noncausal
Energy and Power SignalsEnergy and Power Signals
6552111 Signals and Systems6552111 Signals and Systems
Consider :
41Sopapun Suwansawang
Rti
R
tv
titvtp
)(
)(
)()()(
2
2
=
=
⋅=
∫∫
∫
∞
∞−
∞
∞−
∞
∞−
==
=
)()()()(
1
)(
22
tdtitdtv
R
dttpE
Power Energy
Total energy E and average power P on a per-ohm
basis are
Energy and Power SignalsEnergy and Power Signals
6552111 Signals and Systems6552111 Signals and Systems
dttiE ∫
∞
∞−
= )(2
Joules
42Sopapun Suwansawang
dtti
T
P
T
TT
∫
−∞→
∞−
= )(
2
1 2
lim Watts
For an arbitrary continuous-time signal x(t), the
normalized energy content E of x(t) is defined as
∫∫
−∞→
∞
∞−
==
T
TT
dttxdttxE
22
)()( lim
Energy and Power SignalsEnergy and Power Signals
6552111 Signals and Systems6552111 Signals and Systems
The normalized average power P of x(t) is
defined as
43
−∞→∞− TT
∫
−∞→
=
T
TT
dttx
T
P
2
)(
2
1
lim
Sopapun Suwansawang
Similarly, for a discrete-time signal x[n],
the normalized energy content E of x[n] is defined
as
Energy and Power SignalsEnergy and Power Signals
6552111 Signals and Systems6552111 Signals and Systems
∑∑
−=∞→
∞
−∞=
==
N
NnNn
nxnxE
22
][lim][
The normalized average power P of x[n] is defined
as
44Sopapun Suwansawang
−=∞→−∞= NnNn
∑
−=∞→ +
=
N
NnN
nx
N
P
2
][
12
1
lim
x(t) (or x[n]) is said to be an energy signal (or
sequence) if and only if 0 < E < ∞∞∞∞, and P = 0.
x(t) (or x[n]) is said to be a power signal (or
sequence) if and only if 0 < P < ∞∞∞∞, thus
implying that E = ∞∞∞∞.
Energy and Power SignalsEnergy and Power Signals
6552111 Signals and Systems6552111 Signals and Systems
implying that E = ∞∞∞∞.
Note that a periodic signal is a power signal if
its energy content per period is finite, and then
the average power of this signal need only be
calculated over a period.
45Sopapun Suwansawang
∫=
0
0
2
0
)(
1
T
dttx
T
P
Exercise Determine whether the following
signals are energy signals, power signals, or
neither.
1.
Energy and Power SignalsEnergy and Power Signals
6552111 Signals and Systems6552111 Signals and Systems
)cos()( 0 θω += tAtx1.
2.
3.
46Sopapun Suwansawang
)cos()( 0 θω += tAtx
tj
eAtx 0
)( ω
=
)()( 3
tuetv t−
=
Solve Ex.1
The signal x(t) is periodic with T0=2π/ω0.
Energy and Power SignalsEnergy and Power Signals
6552111 Signals and Systems6552111 Signals and Systems
dttA
T
dttx
T
P
TT
∫∫ +==
00
0
0
22
00
2
0
)(cos
1
)(
1
θω
)cos()( 0 θω += tAtx
47Sopapun Suwansawang
0000
dtt
T
A
P
T
∫ ++=
0
0
0
0
2
)22cos(1(
2
1
θω








++= ∫ ∫ dttdt
T
A
P
T T0 0
0
0
00
2
)22(cos1
2
θω
0
2
2
A
= ∞<
Thus, x(t) is power signal.
Energy and Power SignalsEnergy and Power Signals
6552111 Signals and Systems6552111 Signals and Systems
Solve Ex.2 tjAtAeAtx tj
00 sincos)( 0
ωωω
+==
The signal x(t) is periodic with T0=2π/ω0.
Note that periodic signals are, in general, power signals.
∫
T
21
∫
T
21
48Sopapun Suwansawang
∫=
T
x dttx
T
P
0
2
)(
1
∫=
T
tj
dtAe
T 0
2
0
1 ω
2 2
2
0 0
2
1
T T
x
A A
A dt dt T
T T T
P A W
= = = ⋅
=
∫ ∫

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Lecture123

  • 1. Signals and SystemsSignals and Systems 6552111 Signals and Systems6552111 Signals and Systems Sopapun Suwansawang Lecture #1 1 Lecture #1 Elementary Signals and Systems Week#1-2
  • 2. SignalsSignals Signals are functions of independent variables that carry information. FUNCTIONS OF TIME AS SIGNALS 6552111 Signals and Systems6552111 Signals and Systems Sopapun Suwansawang 2 Figure : Domain, co-domain, and range of a real function of continuous time. )(tfv =
  • 3. SignalsSignals For example: Electrical signals voltages and currents in a circuit Acoustic signals audio or speech 6552111 Signals and Systems6552111 Signals and Systems Acoustic signals audio or speech signals (analog or digital) Video signals intensity variations in an image Biological signals sequence of bases in a gene Sopapun Suwansawang 3
  • 4. There are two types of signals: Continuous-time signals (CT) are functions of a continuous variable (time). Discrete-time signals (DT) are functions of 6552111 Signals and Systems6552111 Signals and Systems SignalsSignals Discrete-time signals (DT) are functions of a discrete variable; that is, they are defined only for integer values of the independent variable (time steps). 4Sopapun Suwansawang
  • 5. CT and DT SignalsCT and DT Signals 6552111 Signals and Systems6552111 Signals and Systems CT DT 5Sopapun Suwansawang Signal such as :)(tx ),...(),...,(),( 10 ntxtxtx or in a shorter form as : ,...,...,, ],...[],...,1[],0[ 10 nxxx nxxx or
  • 6. where we understand that 6552111 Signals and Systems6552111 Signals and Systems )(][ nn txnxx == and 's are called samples and the time interval between them is called the sampling interval. When nx CT and DT SignalsCT and DT Signals 6Sopapun Suwansawang between them is called the sampling interval. When the sampling intervals are equal (uniform sampling), then n )()(][ snTtn nTxtxnxx s === = where the constant is the sampling intervalsT
  • 7. 6552111 Signals and Systems6552111 Signals and Systems    < ≥ = 0,0 0,8.0 )( t t tx t    < ≥ = 0,0 0,8.0 ][ n n nx n CT and DT SignalsCT and DT Signals 7Sopapun Suwansawang )(tx t 0 1 0 1 ][nx n 1 2 3 4 5
  • 8. A discrete-time signal x[n] can be defined in two ways: 1. We can specify a rule for calculating the nth value of the sequence. (see Example 1) 6552111 Signals and Systems6552111 Signals and Systems CT and DT SignalsCT and DT Signals value of the sequence. (see Example 1) 2. We can also explicitly list the values of the sequence. (see Example 2) 8Sopapun Suwansawang
  • 9. 6552111 Signals and Systems6552111 Signals and Systems DT SignalsDT Signals     ≥ ==       0 ][ 2 1 n xnx n n Example 1 9Sopapun Suwansawang    <  00 n ...}, 8 1 , 4 1 , 2 1 ,1{}{ =nx
  • 10. 6552111 Signals and Systems6552111 Signals and Systems DT SignalsDT Signals Example 1: Continue 10Sopapun Suwansawang
  • 11. DT SignalsDT Signals 6552111 Signals and Systems6552111 Signals and Systems Example 2 11Sopapun Suwansawang
  • 12. DT SignalsDT Signals 6552111 Signals and Systems6552111 Signals and Systems The sequence can be written as Example 2 : continue ,...}0,0,2,0,1,0,1,2,2,1,0,0{...,}{ =nx 12Sopapun Suwansawang }2,0,1,0,1,2,2,1{}{ =nx We use the arrow to denote the n = 0 term. We shall use the convention that if no arrow is indicated, then the first term corresponds to n = 0 and all the values of the sequence are zero for n < 0.
  • 13. Example 3 Given the continuous-time signal specified by DT SignalsDT Signals 6552111 Signals and Systems6552111 Signals and Systems    ≤≤−− = otherwise tt tx 0 111 )( Determine the resultant discrete-time sequence obtained by uniform sampling of x(t) with a sampling interval of 0.25 s 13Sopapun Suwansawang   otherwise0
  • 14. Solve : Ts=0.25 s, Ts=1 s, DT SignalsDT Signals 6552111 Signals and Systems6552111 Signals and Systems      = ↑ ,...0,25.0,5.0,75.0,1,75.0,5.0,25.0,0...,][nx    = ,...0,1,0...,][nxTs=1 s, 14Sopapun Suwansawang      = ↑ ,...0,1,0...,][nx
  • 15. Analog signals 6552111 Signals and Systems6552111 Signals and Systems Analog and Digital SignalsAnalog and Digital Signals If a continuous-time signal x(t) can take on any value in the continuous interval (-∞∞∞∞ , +∞∞∞∞), then the continuous-time signal x(t) is called an analog Digital signals A signal x[n] can take on only a finite number of distinct values, then we call this signal a digital signal. 15Sopapun Suwansawang the continuous-time signal x(t) is called an analog signal.
  • 16. CT and DT 6552111 Signals and Systems6552111 Signals and Systems Digital SignalsDigital Signals 16Sopapun Suwansawang
  • 17. CT Binary signal Multi-level signal 6552111 Signals and Systems6552111 Signals and Systems Digital SignalsDigital Signals 17Sopapun Suwansawang
  • 18. Intuitively, a signal is periodic when it repeats itself. A continuous-time signal x(t) is periodic if there exists a positive real T for which 6552111 Signals and Systems6552111 Signals and Systems Periodic SignalsPeriodic Signals for all t and any integer m.The fundamental period T0 of x(t) is the smallest positive value of T 18Sopapun Suwansawang )()( mTtxtx += 0 0 2 ω π =T
  • 19. Fundamental frequency 6552111 Signals and Systems6552111 Signals and Systems Periodic SignalsPeriodic Signals 0 0 1 T f = Hz Fundamental angular frequency 19Sopapun Suwansawang 0 00 2 2 T f π πω == rad/sec
  • 20. A discrete-time signal x[n] is periodic if there exists a positive integer N for which 6552111 Signals and Systems6552111 Signals and Systems Periodic SignalsPeriodic Signals ][][ mNnxnx += for all n and any integer m.The fundamental period N0 of x[n] is the smallest positive integer N 20Sopapun Suwansawang 0 0 2 Ω = π N
  • 21. Any sequence which is not periodic is called a non-periodic (or aperiodic) sequence. 6552111 Signals and Systems6552111 Signals and Systems NonperiodicNonperiodic SignalsSignals 21Sopapun Suwansawang
  • 22. 6552111 Signals and Systems6552111 Signals and Systems Periodic SignalsPeriodic Signals CT 22Sopapun Suwansawang DT
  • 23. Example 3 Find the fundamental frequency in figure below. 6552111 Signals and Systems6552111 Signals and Systems Periodic SignalsPeriodic Signals 23Sopapun Suwansawang Hz T f 4 11 0 0 ==.sec40 =T (sec.)
  • 24. Exercise Determine whether or not each of the following signals is periodic. If a signal is periodic, determine its fundamental period. 6552111 Signals and Systems6552111 Signals and Systems Periodic SignalsPeriodic Signals ttx ) 4 cos()(.1 π += 24Sopapun Suwansawang nnnx nnx enx tttx tttx nj 4 sin 3 cos][.6 4 1 cos][.5 ][.4 2sincos)(.3 4 sin 3 cos)(.2 4 )4/( ππ ππ π += = = += +=
  • 25. Solve EX.1 6552111 Signals and Systems6552111 Signals and Systems Periodic SignalsPeriodic Signals 1 4 cos) 4 cos()( 00 =→      +=+= ω π ω π tttx ππ 22 25Sopapun Suwansawang π π ω π 2 1 22 0 0 ===T x(t) is periodic with fundamental period T0 = 2π.
  • 26. Solve EX.2 6552111 Signals and Systems6552111 Signals and Systems Periodic SignalsPeriodic Signals )()( 4 sin 3 cos)( 21 txtxtttx +=+= ππ ( ) .6 2 cos3/cos)( 111 ==→== π ωπ Ttttxwhere 26Sopapun Suwansawang ( ) .8 4/ 2 sin)4/sin()( .6 3/ cos3/cos)( 222 111 ==→== ==→== π π ωπ π ωπ Ttttx Ttttxwhere numberrationalais T T 4 3 8 6 2 1 == x(t) is periodic with fundamental period T0 = 4T1=3T2=24. Note : Least Common Multiplier of (6,8) is 24
  • 27. 6552111 Signals and Systems6552111 Signals and Systems Even and Odd Signals:Even and Odd Signals: A signal x(t) or x[n] is referred to as an even signal if ][][ )()( nxnx txtx −= −= 27Sopapun Suwansawang A signal x(t) or x[n] is referred to as an odd signal if ][][ )()( nxnx txtx −=− −=−
  • 28. 6552111 Signals and Systems6552111 Signals and Systems Even and Odd Signals:Even and Odd Signals: 28Sopapun Suwansawang
  • 29. Any signal x(t) or x[n] can be expressed as a sum of two signals, one of which is even and one of which is odd.That is, 6552111 Signals and Systems6552111 Signals and Systems Even and Odd Signals:Even and Odd Signals: )()()( txtxtx oe += 29Sopapun Suwansawang ][][][ nxnxnx oe oe += { } { }][][ 2 1 ][ )()( 2 1 )( nxnxnx txtxtx e e −+= −+= { } { }][][ 2 1 ][ )()( 2 1 )( nxnxnx txtxtx o o −−= −−= even part odd part
  • 30. 6552111 Signals and Systems6552111 Signals and Systems Even and Odd Signals:Even and Odd Signals: Example 4 Find the even and odd components of the signals shown in figure below 30Sopapun Suwansawang Solve even part { })()()(2 tftftfe −+= 2fe(t)
  • 31. Example 4 : continue Odd part 6552111 Signals and Systems6552111 Signals and Systems Even and Odd Signals:Even and Odd Signals: { })()()(2 tftftfo −−= 2fo(t) 31Sopapun Suwansawang 2fo(t)
  • 32. Example 4 : continue Check )()()( tftftf oe += 6552111 Signals and Systems6552111 Signals and Systems Even and Odd Signals:Even and Odd Signals: { })()( 2 1 )( tftftfo −−={ },)()( 2 1 )( tftftfe −+= 32 )()()( tftftf oe += Sopapun Suwansawang 2 fo(t) fe(t)
  • 33. Note that the product of two even signals or of two odd signals is an even signal and that the product of an even signal and an odd signal is an odd signal. (even)(even)=even 6552111 Signals and Systems6552111 Signals and Systems Even and Odd Signals:Even and Odd Signals: (even)(even)=even (even)(odd)=odd (odd)(even)=odd (odd)(odd)=even 33Sopapun Suwansawang
  • 34. Example 5 Show that the product of two even signals or of two odd signals is an even signal and that the product of an even and an odd signaI is an odd signal. 6552111 Signals and Systems6552111 Signals and Systems Even and Odd Signals:Even and Odd Signals: Let )()()( txtxtx = 34Sopapun Suwansawang Let )()()( 21 txtxtx = If x1(t) and x2(t) are both even, then )()()()()()( 2121 txtxtxtxtxtx ==−−=− If x1(t) and x2(t) are both even, then )()()())()(()()()( 212121 txtxtxtxtxtxtxtx ==−−=−−=−
  • 35. A deterministic signal is a signal in which each value of the signal is fixed and can be determined by a mathematical expression, rule, or table. Because of this the future values of the signal can be calculated from past values with 6552111 Signals and Systems6552111 Signals and Systems Deterministic and Random Signals:Deterministic and Random Signals: signal can be calculated from past values with complete confidence. A random signal has a lot of uncertainty about its behavior. The future values of a random signal cannot be accurately predicted and can usually only be guessed based on the averages of sets of signals 35Sopapun Suwansawang
  • 36. 6552111 Signals and Systems6552111 Signals and Systems Deterministic and Random Signals:Deterministic and Random Signals: Deterministic 36Sopapun Suwansawang Random
  • 37. RightRight--Handed and LeftHanded and Left--Handed SignalsHanded Signals A right-handed signal and left-handed signal are those signals whose value is zero between a given variable and positive or negative infinity. Mathematically speaking, A right-handed signal is defined as any signal 6552111 Signals and Systems6552111 Signals and Systems A right-handed signal is defined as any signal where f(t) = 0 for A left-handed signal is defined as any signal where f(t) = 0 for 37Sopapun Suwansawang ∞<< 1tt −∞>> 1tt
  • 38. RightRight--Handed and LeftHanded and Left--Handed SignalsHanded Signals 6552111 Signals and Systems6552111 Signals and Systems Right-Handed 1t 38Sopapun Suwansawang Left-Handed 1 1t
  • 39. Causal vs.Anticausal vs. NoncausalCausal vs.Anticausal vs. Noncausal Causal signals are signals that are zero for all negative time. Anticausal signals are signals that are zero for all positive time. 6552111 Signals and Systems6552111 Signals and Systems for all positive time. Noncausal signals are signals that have nonzero values in both positive and negative time. 39Sopapun Suwansawang
  • 40. Causal vs.Anticausal vs. NoncausalCausal vs.Anticausal vs. Noncausal 6552111 Signals and Systems6552111 Signals and Systems Causal 40Sopapun Suwansawang Anticausal Noncausal
  • 41. Energy and Power SignalsEnergy and Power Signals 6552111 Signals and Systems6552111 Signals and Systems Consider : 41Sopapun Suwansawang Rti R tv titvtp )( )( )()()( 2 2 = = ⋅= ∫∫ ∫ ∞ ∞− ∞ ∞− ∞ ∞− == = )()()()( 1 )( 22 tdtitdtv R dttpE Power Energy
  • 42. Total energy E and average power P on a per-ohm basis are Energy and Power SignalsEnergy and Power Signals 6552111 Signals and Systems6552111 Signals and Systems dttiE ∫ ∞ ∞− = )(2 Joules 42Sopapun Suwansawang dtti T P T TT ∫ −∞→ ∞− = )( 2 1 2 lim Watts
  • 43. For an arbitrary continuous-time signal x(t), the normalized energy content E of x(t) is defined as ∫∫ −∞→ ∞ ∞− == T TT dttxdttxE 22 )()( lim Energy and Power SignalsEnergy and Power Signals 6552111 Signals and Systems6552111 Signals and Systems The normalized average power P of x(t) is defined as 43 −∞→∞− TT ∫ −∞→ = T TT dttx T P 2 )( 2 1 lim Sopapun Suwansawang
  • 44. Similarly, for a discrete-time signal x[n], the normalized energy content E of x[n] is defined as Energy and Power SignalsEnergy and Power Signals 6552111 Signals and Systems6552111 Signals and Systems ∑∑ −=∞→ ∞ −∞= == N NnNn nxnxE 22 ][lim][ The normalized average power P of x[n] is defined as 44Sopapun Suwansawang −=∞→−∞= NnNn ∑ −=∞→ + = N NnN nx N P 2 ][ 12 1 lim
  • 45. x(t) (or x[n]) is said to be an energy signal (or sequence) if and only if 0 < E < ∞∞∞∞, and P = 0. x(t) (or x[n]) is said to be a power signal (or sequence) if and only if 0 < P < ∞∞∞∞, thus implying that E = ∞∞∞∞. Energy and Power SignalsEnergy and Power Signals 6552111 Signals and Systems6552111 Signals and Systems implying that E = ∞∞∞∞. Note that a periodic signal is a power signal if its energy content per period is finite, and then the average power of this signal need only be calculated over a period. 45Sopapun Suwansawang ∫= 0 0 2 0 )( 1 T dttx T P
  • 46. Exercise Determine whether the following signals are energy signals, power signals, or neither. 1. Energy and Power SignalsEnergy and Power Signals 6552111 Signals and Systems6552111 Signals and Systems )cos()( 0 θω += tAtx1. 2. 3. 46Sopapun Suwansawang )cos()( 0 θω += tAtx tj eAtx 0 )( ω = )()( 3 tuetv t− =
  • 47. Solve Ex.1 The signal x(t) is periodic with T0=2π/ω0. Energy and Power SignalsEnergy and Power Signals 6552111 Signals and Systems6552111 Signals and Systems dttA T dttx T P TT ∫∫ +== 00 0 0 22 00 2 0 )(cos 1 )( 1 θω )cos()( 0 θω += tAtx 47Sopapun Suwansawang 0000 dtt T A P T ∫ ++= 0 0 0 0 2 )22cos(1( 2 1 θω         ++= ∫ ∫ dttdt T A P T T0 0 0 0 00 2 )22(cos1 2 θω 0 2 2 A = ∞< Thus, x(t) is power signal.
  • 48. Energy and Power SignalsEnergy and Power Signals 6552111 Signals and Systems6552111 Signals and Systems Solve Ex.2 tjAtAeAtx tj 00 sincos)( 0 ωωω +== The signal x(t) is periodic with T0=2π/ω0. Note that periodic signals are, in general, power signals. ∫ T 21 ∫ T 21 48Sopapun Suwansawang ∫= T x dttx T P 0 2 )( 1 ∫= T tj dtAe T 0 2 0 1 ω 2 2 2 0 0 2 1 T T x A A A dt dt T T T T P A W = = = ⋅ = ∫ ∫