22 PRELIMINARIES
The Fourier transform of a signal is often plotted as magnitude versus frequency,
ignoring phase angle. This form of display has become conventional because the bulk of
the information relayed about a signal is embedded in its frequency content, as given by
the magnitude spectrum IF (u)[. For example, Figs. 2.5a and 2.5b show a square wave
and its spectrum, respectively. In this example, it just so happens that the phase function
(u) is zero for all u, with the spectrum being defined in terms of the following infinite
1 1 . 1 _
F(u) = cosu - cos.u + -cos u - cosu + ... (2.1.18)
1 1 sin7u+ '"
= sinu + -sin3u + sin5u +
Consequently, the spectrum is real and we display its values directly. Note that both
positive and negative frequencies are displayed, and the amplitudes have been halved
accordingly. An application of Fourier synthesis is shown in Fig. 2.5c, where the first
five nonzero components ofF(u) are added together. With each additional component,
the reconst'ucted function increasingly takes on the appearance of the original square
wave. The ripples that persist are a consequence of the oscillatory behavior of the
sinusoidal basis functions. They remain in the reconstruction unless all frequency com-
ponents are considered in the reconstruction. This artifact is known as Gibbs
phenomenon which predicts an overshoot/undershoot of about 22% near edges that are
not fully reconstructed [Antoniou 79].
A second example is given in Fig. 2.6. There, an arbitrary waveform undergoes
Fourier analysis and synthesis. In this case, F(u) is complex and so only the magnitude
spectrum IF(u) l is shown in Fig. 2.6b. Since the spectrum is defined over infinite fre-
quencies, only a small segment of it is shown in the figure. The results of Fourier syn-
thesis with the first ten frequency components are shown in Fig. 2.6c. As before, incor-
porating the higher frequency components adds finer detail to the reconstructed function.
The two examples given above highlight an important property of Fourier
transforms that relate to periodic and aperiodic functions. Periodic signals, such as the
square wave shown in Fig. 2.5a, can be represented as the sum of phase-shifted sine
waves whose frequencies are integral multiples of the signal's lowest nonzero frequency
component. In other ._..,r_d a periodic signal contains all the frequencies that are har-
monics of the fundamental frequency. We normally associate the analysis of periodic
signals with Fourier series rather than Fourier transforms. The Fourier series can be
expressed as the following summation
f (x) = a c(nuo)ei2nux (2.1.19)
where c (nuo) is the nth Fourier coefficient
c(nuo) = f f (x)e-i2nnuX dx (2.1.20)
2.1 FUNDAMENTALS
f (x) F (u)
(a) (b)
sin(x)
sin(3x)
sin(5x)
sin(7x)
(c)
Figure 2.5: Fourier transform. (a) square wave; (b) spectrum; (c) partial sums.
23
and u 0 is the fundamental frequency. Note that since f (x) is periodic, the integral in Eq.
(2.1.20) that is used to compute the Fourier coefficients must only integrate over period
X0.
Aperiodic signals do not enjoy the same compact representation as their periodic
counterparts. Whereas a periodic signal is expressed in terms of a sum of frequency
components that are integer multiples of some fundamental frequency, an aperiodic sig-
nal must necessarily be represented as an integral over a continuum of frequencies, as in
Eq. (2.1.13). This is reflected in the spectra of Figs. 2.5b and Fig. 2.6b. Notice that the
square wave spectrum consists of a discrete set of impulses in the frequency domain,
while the spectrum of the aperiodic signal in Fig. 2.6 is defined over all frequencies. For
this reason, we distinguish Eq. (2.1.13) as the Fourier integral. It can be shown that the
Fourier series is a special case of the Fourier integral. In summary, periodic signals have
discrete Fourier components and are described by a Fourier series. Aperiodic signals
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