Normalised Power in a Periodic Waveform and Parseval’s theorem
9.39
The second form of trigonometric Fourier series is shown in the following:
∴
=
+
−
=
=
+
=
=
∞
∑
v t
c
c
n t
c
v c
a
b
v v
o
n
o
n
n
o
o
n
n
n
n
( )
cos(
)
,
w
f
1
2
2
2
where
nn
n
n
n
n
n
v
b
a
v
n
*
| |
tan
, ,
=
=
= −∠
=
−
2
1 2 3
1
…
and
of , for
f
.
∴
=
+
=
∞
∑
P
c
c
n
o
n
n
2
2
1
2
the normalised power of a periodic waveform
v
(
t
),
P
n
, is given by
P
v v
v v
v
v
v
a
a
b
n
n
n
n n
n
o
n
o
n
n
n
=
=
=
=
+
=
+
+
−
=
*
| |
| |
| |
(
)
2
2
2
2
2
2
1
2
2
∞
∞
=
∞
=
∞
=−∞
∞
=−∞
∞
=−∞
∞
∑
∑
∑
∑
∑
∑
=
+
c
c
o
n
n
n
n
n
n
2
2
1
1
2
Though the
multiplication-in-time property easily led us to Parseval’s theorem, it does not help
us to see the significance of this theorem. Neither does it tell us how this total normalised power is
distributed among various frequency components. Hence, we use the trigonometric
Fourier series
v t
c
c
n t
o
n
o
n
n
( )
cos(
)
=
+
−
=
∞
∑
w
f
1
for further appreciation of
P
n
.
Consider a simpler situation in which
v(
t) contains just three components.
v t
c
c
m t
c
k
t
k
m
o
m
o
m
k
o
k
( )
cos(
)
cos(
),
=
+
−
+
−
w
f
w
f
and
are integers
∴
=
+
−
+
−
+
[ ( )]
cos (
)
cos (
)
cos(
v t
c
c
m t
c
k
t
c c
m
o
m
o
m
k
o
k
o m
2
2
2
2
2
2
2
w
f
w
f
w
oo
m
o k
o
k
m k
o
m
o
k
t
c c
k
t
c c
m t
k
t
−
+
−
+
−
−
f
w
f
w
f
w
f
)
cos(
)
cos(
) cos(
)
2
2
∴
=
+
+
+
−
+
[ ( )]
cos (
)
cos (
v t
c
c
c
c
m t
c
k
t
o
m
k
m
o
m
k
o
2
2
2
2
2
2
1
2
1
2
1
2
2
1
2
2
w
f
w
−−
+
−
+
−
+
+
f
w
f
w
f
w
k
o m
o
m
o k
o
k
m k
o
c c
m t
c c
k
t
c c
m k
t
)
cos(
)
cos(
)
cos[(
)
2
2
−−
+
+
−
−
−
(
)]
cos[(
)
(
)]
f
f
w
f
f
m
k
m k
o
m
k
c c
m k
t
k and
m are integers. Thus, if
k
≠
m, the frequencies
m
w
o
,
k
w
o
, 2
m
w
o,
2
k
w
o
, (
m
-
k)
w
o
and (
m
+
k)
w
o
are
integer multiples of
w
o
. Hence, all the cosine waves in [
v(
t)]
2
will have integer number of cycles in
T s
where
T is the period of
v(
t). Therefore, their average over one
T will be zero.
∴
=
=
+
+
×
=
+
−
∫
P
T
v t
dt
T
c
c
c
T
c
n
o
m
k
T
T
o
1
1
1
2
1
2
1
2
2
2
2
2
0 5
0 5
2
[ ( )]
.
.
cc
c
c
c
c
m
k
o
m
k
2
2
2
2
2
1
2
2
2
+
=
+
+
9.40
Dynamic Circuits with Periodic Inputs – Analysis by Fourier Series
Generalising the result for
infinite term Fourier series,
∴
=
=
+
=
=
∞
−
∑
∫
P
T
v t
dt
c
c
i e P
n
o
n
n
T
T
n
1
2
2
2
2
1
0 5
0 5
[ ( )]
. .,
(
.
.
DC coomponent
rms value of
harmonic component
)
(
)
2
2
1
+
=
∞
∑
n
th
n
(9.10-2)
Since the rms value of a DC component is same as its value, we can express this as
P
n
n
th
n
=
=
∞
∑
(
)
rms value
harmonic component
2
0
(9.10-3)
Square root of this quantity
will give the rms value of v(
t) itself.
rms value of
rms value of
harmonic component
v t
n
th
n
( )
(
)
=
=
2
00
∞
∑
(9.10-4)
The normalised power of a particular harmonic component with amplitude
c
n
when acting alone
will be 0.5
c
n
2
. Equations 9.10-2 shows that it contributes the same amount to the total power even
when it is acting along with other harmonics.
Consider two
arbitrary waveforms v
1
(
t) and
v
2
(
t). Let average of [
v
1
(
t)]
2
and [
v
2
(
t)]
2
over some
interval be
a
1
and
a
2
, respectively. Will the average of [
v
1
(
t)
+
v
2
(
t)]
2
over the same interval be
a
1
+
a
2
?
The answer depends on whether the average of 2
v
1
(
t)
v
2
(
t) in that interval is zero or not. In general, it
is not zero, and average of [
v
1
(
t)
+
v
2
(
t)]
2
is not the same as the sum of averages of [
v
1
(
t)]
2
and [
v
2
(
t)]
2
.
However, if
v
1
(
t) and
v
2
(
t) are two sinusoids with different frequencies and if their frequencies are
integer multiples of some basic frequency, then the average of 2
v
1
(
t)
v
2
(
t) in an interval that is equal to
the period corresponding to the basic frequency is zero.Therefore, if
v(
t) is a mixture of harmonically
related sinusoids and DC, the normalised power contributions from each
component is unaffected
by the presence of other components. Hence, the normalised power of the waveform is the sum of
normalised power of individual components.
Now we understand that each harmonic component in the trigonometric Fourier series of a
waveform contributes to normalised power. We can ascribe the power contributed by a particular
component to its frequency and plot the information against as a line spectrum. This spectral plot is
called
discrete power spectrum. However, it will be a single-sided spectrum since we derived it from
trigonometric Fourier series. Spectral lines will be located at 0,
w
o
, 2
w
o,
3
w
o
etc. and the length of the
spectral line will be proportional to 0.5
c
n
2
. By Parseval’s theorem,
P
T
v t
dt
v v
v v
v
n
n
n
n n
n
n
n
n
=
=
=
=
−
=−∞
∞
=−∞
∞
=−∞
∞
−
∑
∑
∑
1
2
2
0
[ ( )]
| | .
*
..
.
5
0 5
T
T
∫
Therefore, we can draw the two-sided discrete power spectrum by plotting
two lines of height
proportional to
| |
v
n
2
at
n
w
o
and
-
n
w
o
. We had noted earlier that two spectral components located at
±
n
w
o
in the two-sided magnitude and phase spectra based on exponential Fourier series have to be
thought of as an integral unit rather as individual components. Those two components always go
together and form a
real sinusoid.
Similarly, it is understood that the power spectral components
located at
±
n
w
o
in the two-sided power spectrum always go together to make a total contribution
of 2
| |
v
n
2
to
P
n
.
Normalised Power in a Periodic Waveform and Parseval’s theorem
9.41
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