Mathematical Methods for Physics and Engineering : A Comprehensive Guide

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12


Fourier series


We have already discussed, in chapter 4, how complicated functions may be


expressed as power series. However, this is not the only way in which a function


may be represented as a series, and the subject of this chapter is the expression


of functions as a sum of sine and cosine terms. Such a representation is called a


Fourier series. Unlike Taylor series, a Fourier series can describe functions that are


not everywhere continuous and/or differentiable. There are also other advantages


in using trigonometric terms. They are easy to differentiate and integrate, their


moduli are easily taken and each term contains only one characteristic frequency.


This last point is important because, as we shall see later, Fourier series are often


used to represent the response of a system to a periodic input, and this response


often depends directly on the frequency content of the input. Fourier series are


used in a wide variety of such physical situations, including the vibrations of a


finite string, the scattering of light by a diffraction grating and the transmission


of an input signal by an electronic circuit.


12.1 The Dirichlet conditions

We have already mentioned that Fourier series may be used to represent some


functions for which a Taylor series expansion is not possible. The particular


conditions that a functionf(x) must fulfil in order that it may be expanded as a


Fourier series are known as theDirichlet conditions, and may be summarised by


the following four points:


(i) the function must be periodic;
(ii) it must be single-valued and continuous, except possibly at a finite number
of finite discontinuities;
(iii) it must have only a finite number of maxima and minima within one
period;
(iv) the integral over one period of|f(x)|must converge.
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