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ENGR 3324: Signals and Systems
Ch6
Continuous-Time Signal Analysis
Engineering and Physics
University of Central Oklahoma
Dr. Mohamed Bingabr
Outline
• Introduction
• Fourier Series (FS) representation of
Periodic Signals.
• Trigonometric and Exponential Form of FS.
• Gibbs Phenomenon.
• Parseval’s Theorem.
• Simplifications Through Signal Symmetry.
• LTIC System Response to Periodic Inputs.
Sinusoidal Wave and phase
x(t) = Asin(t) = Asin(250t)
x(t)
A
t
T0 = 20 msec
x(t-0.0025)= Asin(250[t-0.0025])
= Asin(250t-0.25)= Asin(250t-45o)
A
t
td = 2.5 msec
Time delay td = 25 msec correspond to phase shift =45o
Representation of Quantity using Basis
• Any number can be represented as a
linear sum of the basis number {1, 10,
100, 1000}
Ex: 10437 =10(1000) + 4(100) + 3(10) +7(1)
• Any 3-D vector can be represented as a
linear sum of the basis vectors {[1 0 0],
[0 1 0], [0 0 1]}
Ex: [2 4 5]= 2 [1 0 0] + 4[0 1 0]+ 5[0 0 1]
Basis Functions for Time Signal
• Any periodic signal x(t) with fundamental frequency
0 can be represented by a linear sum of the basis
functions {1, cos(0t), cos(20t),…, cos(n0t),
sin(0t), sin(20t),…, sin(n0t)}
Ex:
x(t) =1+ cos(2t)+ 2cos(2 2t)+ 0.5sin(23t)+ 3sin(2t)
x(t) =1+ cos(2t)+ 2cos(2 2t)+ 3sin(2t)+ 0.5sin(23t)
+
+
+
=
Purpose of the Fourier Series (FS)
FS is used to find the frequency components and
their strengths for a given periodic signal x(t).
The Three forms of Fourier Series
• Trigonometric Form
• Compact Trigonometric (Polar) Form.
• Complex Exponential Form.
Trigonometric Form
• It is simply a linear combination of sines and
cosines at multiples of its fundamental
frequency, f0=1/T.
n 1
n 1
xt a0 an cos2f 0 nt bn sin 2f 0 nt
• a0 counts for any dc offset in x(t).
• a0, an, and bn are called the trigonometric
Fourier Series Coefficients.
• The nth harmonic frequency is nf0.
Trigonometric Form
• How to evaluate the Fourier Series Coefficients
(FSC) of x(t)?
n 1
n 1
xt a0 an cos2nf 0t bn sin 2nf 0t
To find a0 integrate both side of the equation over a full period
1
a0 xt dt
T0 T0
Trigonometric Form
n 1
n 1
xt a0 an cos2nf 0t bn sin 2nf 0t
To find an multiply both side by cos(2mf0t) and then integrate
over a full period, m =1,2,…,n,…
2
an xt cos2nf 0t dt
T0 T0
To find bn multiply both side by sin(2mf0t) and then integrate
over a full period, m =1,2,…,n,…
2
bn xt sin 2nf 0t dt
T0 T0
Example
f t a0 an cos2nt bn sin 2nt
f(t)
1
n 1
e-t/2
0
• Fundamental period
T0 =
• Fundamental
frequency
f0 = 1/T0 = 1/ Hz
0 = 2/T0 = 2 rad/s
a0
an
1
2
0
0
2
2
e dt e 1 0.504
e
t
2
t
2
2
cos2nt dt 0.504
2
1 16n
8n
bn e sin 2nt dt 0.504
2
0
1 16n
an and bn decrease in amplitude as n .
2
t
2
2
cos2nt 4n sin 2nt
f t 0.5041
2
n 1 1 16n
To what value does the FS converge at the point of discontinuity?
Dirichlet Conditions
•
A periodic signal x(t), has a Fourier series if
it satisfies the following conditions:
1. x(t) is absolutely integrable over any period,
namely
x(t ) dt
T0
2. x(t) has only a finite number of maxima and
minima over any period
3. x(t) has only a finite number of
discontinuities over any period
Compact Trigonometric Form
• Using single sinusoid,
xt
C0
dc component
Cn cos2nf 0t n
n 1
nth harmonic
C0 a0
• Cn , and n are related to the trigonometric coefficients an
and bn as:
Cn an bn
2
2
and
bn
n tan
an
1
The above relationships are obtained from the
trigonometric identity
a cos(x) + b sin(x) = c cos(x + )
Role of Amplitude in Shaping Waveform
xt C0 Cn cos2nf 0t n
n 1
Role of the Phase in Shaping a
Periodic Signal
xt C0 Cn cos2nf 0t n
n 1
Compact Trigonometric
f t C0 Cn cos2nt n
f(t)
n 1
1
a0 0.504
e-t/2
0
2
an 0.504
2
1 16n
8n
bn 0.504
2
1 16n
C0 ao 0.504
• Fundamental period
T0 =
• Fundamental frequency
f0 = 1/T0 = 1/ Hz
0 = 2/T0 = 2 rad/s
f t 0.504 0.504
n 1
2
Cn a b 0.504
2
1 16n
1 bn
tan 1 4n
n tan
an
2
n
2
1 16n
2
2
n
cos 2nt tan 1 4n
Line Spectra of x(t)
• The amplitude spectrum of x(t) is defined
as the plot of the magnitudes |Cn|
versus
• The phase spectrum of x(t) is defined as
the plot of the angles Cn phase(Cn )
versus
• This results in line spectra
• Bandwidth the difference between the
highest and lowest frequencies of the
spectral components of a signal.
Line Spectra
f(t)
2
Cn 0.504
2
1
16
n
C0 0.504
1
e-t/2
n tan 1 4n
0
f t 0.504 0.504
n 1
2
1 16n
2
cos 2nt tan 1 4n
f(t)=0.504 + 0.244 cos(2t-75.96o) + 0.125 cos(4t-82.87o) +
o) + 0.063 cos(8t-86.24o) + …
0.084
cos(6t-85.24
C
n
n
0.504
0.244
0.125
0.084
0
2
4
6
0.063
8
10
-/2
Line Spectra
f t 0.504 0.504
n 1
2
1 16n 2
cos 2nt tan 1 4n
f(t)=0.504 + 0.244 cos(2t-75.96o) + 0.125 cos(4t-82.87o) +
o) + 0.063 cos(8t-86.24o) + …
0.084
cos(6t-85.24
C
n
n
0.504
0.244
0.125
0.084
0
2
4
6
0.063
8
10
-/2
HW8_Ch6: 6.1-1 (a,d), 6.1-3, 6.1-7(a, b, c)
Exponential Form
• x(t) can be expressed as
xt
j 2f 0 nt
D
e
n
n
j 2f 0 nt
To find Dn multiply both side by e
over a full period, m =1,2,…,n,…
and then integrate
1
Dn xt e j 2f 0 nt dt , n 0, 1, 2,....
To To
Dn is a complex quantity in general Dn=|Dn|ej
D-n = Dn*
|Dn|=|D-n|
Even
Dn = -
D-n
Odd
D0 is called the constant or dc component of x(t)
Line Spectra of x(t) in the Exponential
Form
• The line spectra for the exponential form has
negative frequencies because of the
mathematical nature of the complex exponent.
x(t ) ... | D 2 | e j 2 e j 20t | D1 | e j1 e j0t D0
| D1 | e j1 e j0t | D2 | e j 2 e j 20t ...
x(t ) C0 C1 cos(0t 1 ) C2 cos( 20t 2 ) ...
|Dn| = 0.5 Cn
Dn =
Cn
Example
Find the exponential Fourier Series for the squarepulse periodic signal.
f(t)
/2
1
1
jnt
Dn
e
dt
2 / 2
sin n / 2
0.5sinc( n / 2)
n
1
D0
2
n even
0
Dn
1 / n n odd
0
n
for all n 3,7,11,15,
n 3,7,11,15,
2
/2
/2
2
• Fundamental period
T0 = 2
• Fundamental frequency
f0 = 1/T0 = 1/2 Hz
0 = 2/T0 = 1 rad/s
Exponential Line Spectra
|Dn|
1
1
Dn
1
1
Example
The compact trigonometric Fourier Series
coefficients for the square-pulse periodic signal.
f(t)
1
C0
2
0 n even
Cn 2
n odd
n
0 for all n 3,7,11,15,
n
n 3,7,11,15,
1
2
/2
/2
2
Relationships between the Coefficients
of the Different Forms
Dn 0.5an jbn
D n D n 0.5an jbn
Dn 0.5Cn n 0.5Cn e
D0 a0 C0
j n
Relationships between the Coefficients
of the Different Forms
an Dn D n 2 ReDn
bk j Dn D n 2 ImDn
an Cn cos n
bn Cn sin n
a0 D0 c0
Relationships between the Coefficients
of the Different Forms
Cn an bn
2
2
bn
n tan
an
Cn 2 Dn
1
n Dn
C0 a0 D0
Example
Find the exponential Fourier Series and sketch the
corresponding spectra for the impulse train shown
below. From this result sketch the trigonometric
spectrum and write the trigonometric Fourier Series.
T (t )
Solution
0
Dn 1 / T0
1
T0 (t )
T0
jn0t
e
n
Cn 2 | Dn | 2 / T0
C0 | D0 | 1 / T0
1
T0 (t )
T0
1 2 cos( n0t )
n 1
-2T0 -T0
T0
2T0
Rectangular Pulse Train Example
Clearly x(t) satisfies the Dirichlet conditions.
x(t)
1
2
/2
/2
The compact trigonometric form is
2
1 2
( n 1) / 2
x(t ) cos nt (1)
1
2 n 1 n
2
n odd
Does the Fourier series converge to x(t) at every point?
Gibbs Phenomenon
• Given an odd positive integer N, define the
N-th partial sum of the previous series
1 N 2
( n 1) / 2
x N (t ) cos nt (1)
1
2 n 1 n
2
n odd
• According to Fourier’s theorem, it should be
lim | xN (t ) x(t ) | 0
N
Gibbs Phenomenon – Cont’d
x3 (t )
x9 (t )
Gibbs Phenomenon – Cont’d
x21 (t )
x45 (t )
overshoot: about 9 % of the signal magnitude
(present even if N )
Parseval’s Theorem
• Let x(t) be a periodic signal with period T
• The average power P of the signal is defined as
1
P
T
T /2
T / 2
2
x(t ) dt
• Expressing the signal as
xt C0 Cn cos( n0t n )
n 1
it is also
P C0 0.5Cn
2
n 1
2
P D 2 Dn
2
0
n 1
2
Simplifications Through Signal Symmetry
• If x (t) is EVEN: It must contain DC and
Cosine Terms. Hence bn = 0, and Dn =
an/2.
• If x(t) is ODD: It must contain ONLY
Sines Terms. Hence a0 = an = 0, and
Dn=-jbn/2.
LTIC System Response to Periodic
Inputs
e
j 0 t
H(s)
H(j)
H ( j0 )e j0t
A periodic signal x(t) with period T0 can be expressed as
x(t )
jn0 t
D
e
n
n
For a linear system
x(t )
jn0 t
D
e
n
n
H(s)
H(j)
y (t )
jn0t
D
H
(
jn
)
e
n
0
n
Fourier Series Analysis of DC Power
Supply
A full-wave rectifier is used to obtain a dc signal from a
sinusoid sin(t). The rectified signal x(t) is applied to the
input of a lowpass RC filter, which suppress the timevarying component and yields a dc component with
some residual ripple. Find the filter output y(t). Find
also the dc output and the rms value of the ripple
voltage.
R=15
sint
Full-wave
rectifier
x(t)
C=1/5 F
y(t)
Fourier Series Analysis of Full-Wave
Rectifier
2
Dn
(1 4n 2 )
D0 2 /
2
j 2 nt
x(t )
e
2
(
1
4
n
)
n
1
H ( j )
3 j 1
y (t )
D H ( jn )e
n
n
0
jn0t
PDC 4 / 2
Pripple 2 | Dn |2
n 1
Dn
2
(1 4n ) 36n 1
2
2
Pripple 0.0025
ripple rms Pripple 0.05
2
j 2 nt
y (t )
e
2
Ripple rms is only 5%
(
1
4
n
)( j 6n 1)
n
of the input amplitude
HW9_Ch6: 6.3-1(a,d), 6.3-5, 6.3-7, 6.3-11, 6.4-1, 6.4-3
Fourier Series Analysis of Full-Wave
Rectifier- Matlab Code
clear all
t=0:1/1000:3*pi;
for i=1:100
n=i;
yp=(2*exp(j*2*n*t))/(pi*(1-4*n^2)*(j*6*n+1));
This Matlab code will
n=-i;
plot y(t) for -100 n
yn=(2*exp(j*2*n*t))/(pi*(1-4*n^2)*(j*6*n+1));
100 and find the ripple
y(i,:)=yp+yn;
power according to the
end
equations below
yf = 2/pi + sum(y);
2
j 2 nt
y (t )
e
plot(t,yf, t, (2/pi)*ones(1,length(yf)))
2
(
1
4
n
)( j 6n 1)
n
axis([0 3*pi 0 1]);
Pripple 2 | Dn |2 0.0025
Power=0;
for n=1:50
Power(n) = abs(2/(pi*(1-4*n^2)*(j*6*n+1)));
end
TotalPower = 2*sum((Power.^2));
figure; stem( Power(1,1:20));
n 1