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The Fourier Transform
By Prof .Vishnu Narayan Saxena
Prof. Pooja Saxena
FOURIER TRANSFORMS: The Fourier transform is used for converting time domain signal
into frequency domain
TIME DOMAIN PRESENTATION OF SIGNAL
In time domain representation of the signal there is a graph between time and amplitude. In
this time amplitude graph time is taken at the x Axis as an independent variable Whereas
amplitude of the signal is taken at y axis .the time domain representation of the signal gives
an information about the signal that at which time instants what is the amplitude of the
signal or how amplitude of the signal is varying with respect to time but it gives no
information about the Different frequency contents that are presents in the signal.
FREQUENCY DOMAIN REPRESENTATION OF SIGNAL
In frequency domain representation of the signal there is a graph between frequency
and amplitude .In this frequency Amplitude graph The frequency of the signal is taken at
the x axis as independent variable whereas the Amplitude of the signal is taken at y Axis.
The frequency domain representation of the signal tells us that in a given signal what
different frequency components are present and what their respective amplitudes are.
But again frequency domain representation gives no idea that at which time these
frequency components are present. In some applications frequency domain
representation is more important. Or we can say that frequency domain representation
gives more information about any signal (for example in any audio music signal).
As it is clear from fig (1) that time domain representation of signal gives no idea about the
frequency components of signal it simply shows that how the amplitude of the signal is
varying with respect to time whereas frequency domain representation of the signal shows
the different frequency components presents in a signal and their respective amplitudes but
it gives no idea that at which time instants these frequency components presents.
0 1 2 3 4 5 6 7 8 9 10
-200
-100
0
100
200
TIME
AMPLITUDE
0 1 2 3 4 5 6 7 8 9 10
-1000
0
1000
2000
3000
FREQUENCY
AMPLITUDE
TIME DOMAIN REPRESENTATION OF SIGNAL
FREQUENCY DOMAIN REPRESENTATION OF SIGNAL
In the other word we can say in time domain representation of signal the time resolution of
signal is very high but its frequency resolution is zero because it gives no idea about different
frequency components presents in a signal where as in frequency domain representation of
the signal the frequency resolution of the signal is very high but its time resolution is zero
because it gives no idea about time.
Both domain of signal analysis has its own utilities and has its own importance and having
its own sets of advantages and disadvantages.
HOW FOURIER TRANSFORM CONVERT TIME DOMAIN SIGNAL INTO FREQUENCY
DOMAIN:
Suppose x(t) shows the time domain representation of signal and X(f) shows the
frequency domain signal
Where
e2jpift = Cos(2*pi*f*t)+J*Sin(2*pi*f*t) …..(3)
Equation (1) and equation (2) gives Fourier transform and inverse Fourier transform of any
signal the exponential term of equation (1) can be expressed in terms of sine and cosine
function shown by equation (3)
With the help of equation (1) and equation (2) we can convert any time domain signal
into frequency domain signal and frequency domain signal into time domain signal
respectively.
As clear from equation (1) that in Fourier transform the signal is integrated from –
infinity to + infinity over time for
each frequency In the other word we can say that equation 1 take a frequency for example
f1 and search it from –infinity to + infinity over time if it find the f1 frequency components
it simply adds the magnitude of all f1 frequency components.
Again take an another frequency for example f2 and search it from – infinity to + infinity
over time if it find the f2 frequency components it simply adds the magnitude of all f2
frequency components
Again repeat the same process with f3 ,f 4, f 5……. and so on
No matter in time axis where these frequency components exits from – infinity to + infinity
it will effect the result of integration in the same way
particular frequency component exists and what is amplitude of this particular frequency
component and then simply adds them. In this way the Fourier transform calculated the
amplitude of every frequency components presents in a given signal and draw a graph between
frequency and amplitude
Again there are certain disadvantage of frequency domain representation of the signal first
disadvantage is that it gives no idea about time .The frequency transform of any signal simply
tells us that in any given signal what spectral components are present and what are their
respective amplitudes but it gives no idea that in time axis where these frequency components
exists
So again the D.F.T. prove its suitability for the signals which are stationary in nature but this
transform is not suitable for non stationary signal
By stationary signal we simply means the signal in which the frequency does not change with
respect to time or we can say that all frequency components exits for all the time
By non stationary signal we simply mean the signal in which frequency changes with respect to
the time. or in which all the frequency components does not exist for all the time interval .but
some frequencies are exits for some particular
time interval whereas some other frequency components exists for some other time
interval.
To understand the suitability of the DFT only for stationary signal and not for non
stationary signal take the following example suppose there are two signals S1 and S2 the
signal S1 has three frequency components f1,f2 and f3 all the times and suppose the signal
S2 contains the same frequency components f1,f2 and f3 but for the different -different
time interval’s so we can say that these two signals are completely different in nature. But
in spite of it the Fourier transform of these two signals will be the same because these two
signals have the same frequency components of course one signal contains all the
frequency components all the time whereas second signal contains these frequency
components at different time intervals but as we know that Fourier transform has nothing
to do with the time. No matter where these frequency components exits over time the
matter is only that whether they occur or not and what are their amplitudes.
For every frequency Fourier transform check that whether this particular
frequency component present or not present in time from minus infinite to
plus infinite. And if present then how many times this particular frequency
component presents and what is the amplitude of this particular frequency
component and then simply add that particular frequency component and
calculate the amplitude of any particular frequency component.
Again take a second frequency component and check that in time from
minus infinite to plus infinite. And so on .

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Fourier transform

  • 1. The Fourier Transform By Prof .Vishnu Narayan Saxena Prof. Pooja Saxena
  • 2. FOURIER TRANSFORMS: The Fourier transform is used for converting time domain signal into frequency domain TIME DOMAIN PRESENTATION OF SIGNAL In time domain representation of the signal there is a graph between time and amplitude. In this time amplitude graph time is taken at the x Axis as an independent variable Whereas amplitude of the signal is taken at y axis .the time domain representation of the signal gives an information about the signal that at which time instants what is the amplitude of the signal or how amplitude of the signal is varying with respect to time but it gives no information about the Different frequency contents that are presents in the signal.
  • 3. FREQUENCY DOMAIN REPRESENTATION OF SIGNAL In frequency domain representation of the signal there is a graph between frequency and amplitude .In this frequency Amplitude graph The frequency of the signal is taken at the x axis as independent variable whereas the Amplitude of the signal is taken at y Axis. The frequency domain representation of the signal tells us that in a given signal what different frequency components are present and what their respective amplitudes are. But again frequency domain representation gives no idea that at which time these frequency components are present. In some applications frequency domain representation is more important. Or we can say that frequency domain representation gives more information about any signal (for example in any audio music signal).
  • 4. As it is clear from fig (1) that time domain representation of signal gives no idea about the frequency components of signal it simply shows that how the amplitude of the signal is varying with respect to time whereas frequency domain representation of the signal shows the different frequency components presents in a signal and their respective amplitudes but it gives no idea that at which time instants these frequency components presents. 0 1 2 3 4 5 6 7 8 9 10 -200 -100 0 100 200 TIME AMPLITUDE 0 1 2 3 4 5 6 7 8 9 10 -1000 0 1000 2000 3000 FREQUENCY AMPLITUDE TIME DOMAIN REPRESENTATION OF SIGNAL FREQUENCY DOMAIN REPRESENTATION OF SIGNAL
  • 5. In the other word we can say in time domain representation of signal the time resolution of signal is very high but its frequency resolution is zero because it gives no idea about different frequency components presents in a signal where as in frequency domain representation of the signal the frequency resolution of the signal is very high but its time resolution is zero because it gives no idea about time. Both domain of signal analysis has its own utilities and has its own importance and having its own sets of advantages and disadvantages.
  • 6. HOW FOURIER TRANSFORM CONVERT TIME DOMAIN SIGNAL INTO FREQUENCY DOMAIN: Suppose x(t) shows the time domain representation of signal and X(f) shows the frequency domain signal Where e2jpift = Cos(2*pi*f*t)+J*Sin(2*pi*f*t) …..(3) Equation (1) and equation (2) gives Fourier transform and inverse Fourier transform of any signal the exponential term of equation (1) can be expressed in terms of sine and cosine function shown by equation (3)
  • 7. With the help of equation (1) and equation (2) we can convert any time domain signal into frequency domain signal and frequency domain signal into time domain signal respectively. As clear from equation (1) that in Fourier transform the signal is integrated from – infinity to + infinity over time for each frequency In the other word we can say that equation 1 take a frequency for example f1 and search it from –infinity to + infinity over time if it find the f1 frequency components it simply adds the magnitude of all f1 frequency components. Again take an another frequency for example f2 and search it from – infinity to + infinity over time if it find the f2 frequency components it simply adds the magnitude of all f2 frequency components Again repeat the same process with f3 ,f 4, f 5……. and so on No matter in time axis where these frequency components exits from – infinity to + infinity it will effect the result of integration in the same way
  • 8. particular frequency component exists and what is amplitude of this particular frequency component and then simply adds them. In this way the Fourier transform calculated the amplitude of every frequency components presents in a given signal and draw a graph between frequency and amplitude Again there are certain disadvantage of frequency domain representation of the signal first disadvantage is that it gives no idea about time .The frequency transform of any signal simply tells us that in any given signal what spectral components are present and what are their respective amplitudes but it gives no idea that in time axis where these frequency components exists So again the D.F.T. prove its suitability for the signals which are stationary in nature but this transform is not suitable for non stationary signal By stationary signal we simply means the signal in which the frequency does not change with respect to time or we can say that all frequency components exits for all the time By non stationary signal we simply mean the signal in which frequency changes with respect to the time. or in which all the frequency components does not exist for all the time interval .but some frequencies are exits for some particular
  • 9. time interval whereas some other frequency components exists for some other time interval. To understand the suitability of the DFT only for stationary signal and not for non stationary signal take the following example suppose there are two signals S1 and S2 the signal S1 has three frequency components f1,f2 and f3 all the times and suppose the signal S2 contains the same frequency components f1,f2 and f3 but for the different -different time interval’s so we can say that these two signals are completely different in nature. But in spite of it the Fourier transform of these two signals will be the same because these two signals have the same frequency components of course one signal contains all the frequency components all the time whereas second signal contains these frequency components at different time intervals but as we know that Fourier transform has nothing to do with the time. No matter where these frequency components exits over time the matter is only that whether they occur or not and what are their amplitudes.
  • 10.
  • 11. For every frequency Fourier transform check that whether this particular frequency component present or not present in time from minus infinite to plus infinite. And if present then how many times this particular frequency component presents and what is the amplitude of this particular frequency component and then simply add that particular frequency component and calculate the amplitude of any particular frequency component. Again take a second frequency component and check that in time from minus infinite to plus infinite. And so on .