Signals and Systems

Fourier transform for continuous-time functions

fourier transform for discrete-time periodic

This post covers the topic of fourier transform for continuous signal. Let’s consider a Fourier representation of aperiodic signals. Let’s also consider an aperiodic signal as the piece of the periodic signal within a period, where the period is extremely large. The example of an aperiodic signal is depicted in Figure 1.

So, using the aperiodic signal, we can create a periodic signal. The Fourier representation of a periodic function is fp(t)=ncnejwnt, cn=1Tf(t)ejnwtdt. Here we can represent the signal envelope of the Fourier representation F(nwt)=cnT.

So using the signal envelope we can write down the periodic function as: fp(t)=12πn=X(nwt)wejnwt. Applying here the condition of T we can get the Fourier representation of an aperiodic signal fa(t)=12πF(jw)ejwtdw, F(jw)=fa(t)ejwtdt. The last two equations are a Fourier transform pair.

fourier transform for continuous signalFigure 1. The example of periodic and aperiodic signals.

The discussed aperiodic function above should work satisfactorily in Dirichlet conditions. fa(t)2< then we will know that the envelope F(jw) is a finite function. In order to show that fa(t) and fp(t) are identical at the finite period of time, the three Dirichlet conditions should be right:

  1. fa(t)2dt<;
  2. fa(t) should have a finite number of discontinuities on the finite interval of time;
  3. fa(t) should have finite maximums and minimums within a finite time interval.

If we represent the periodic signal fp(t) with a Fourier transformation F(jw)=cn2πδ(ww0) as a set aperiodic signals (for example a set of impulse functions), here fp(t)=n=cnejnw0t.

As we already know, the continuous-time periodic signal and its Fourier transformation are related to another with the Fourier transform synthesis equation: xp(t)=12πF(jw)ejwtdt, F(jw)=fp(t)ejwtdt. Let’s think that fp(t) and F(jw) are a Fourier transformation pair. Taking into consideration the statements above we can formulate the properties of Fourier transformation for continuous-time periodic signals:

  1. Linearity. If there is two pairs of Fourier transformation fp(t)F(jw) and gp(t), G(jw), so the following statement is valid:afp(t)+bgp(t)=aF(jw)+bG(jw).
  2. Time shifting. If we have a pair of Fourier transformations fp(t) and F(jw), after time shifting of the periodic signal, the Fourier transformation will be as follows: fp(tt0), and F(jw)ejwt0.
  3. Conjugation rule. If we have a Fourier transformation fp(t) and F(jw), the conjugated Fourier transformation will be the following: fp*(t) and F(jw).
  4. Differentiation. If we have a Fourier transformation fpt and Fjw, so for the differential of the periodic signal dfPtdt the Fourier transformation will be jwFjw.
  5. Integration. If we have a Fourier transformation fPt and Fjw, so for the integral of the periodic signal tf(φ)dφ=1jwF(jw)+πF(0)δ(w).
  6. Time scaling. If we have a Fourier transformation fp(t) and F(jw), and α is the real number, so for a periodic function fp(αt) exists at a Fourier transformation of 1αF(jwα).
  7. Parseval’s formula. If fp(t) and F(jw) are Fourier transformations, so we have the following Parseval’s equation fp(t)2dt=12πF(jw)2. Here F(jw)2 is the energy density spectrum of the signal xp(t). So the energy of the signal can be calculated by integrating the signal over the time, or integrating the unit of energy over the frequency.
  8. Convolution. If we have two pairs of Fourier transformations fp(t)F(jw) and gp(t), G(jw), so Fourier transformation for their convolution is: hp(t)=fp(t)*gp(t) will be H(jw)=F(jw)G(jw).
  9. Multiplication. If we have two pairs of Fourier transformations fp(t)F(jw) and gp(t)G(jw) so the Fourier transformation for the result of their multiplication hp(t)=fp(t)gp(t) will be H(jw)=12πF(jφ)G(j(wφ))dφ. [1]

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{1] “Signals and systems”, 2nd edition, 1997. Alan V. Oppenheim, Allan S. Willsky.

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