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16.2:

Exponential Fourier series

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Electrical Engineering
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JoVE Core Electrical Engineering
Exponential Fourier series

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In audio signal processing, the exponential Fourier series is essential for synthesizing sounds. For instance, a complex musical note can be decomposed into simpler sinusoidal waves, each with a unique frequency and amplitude.

The exponential fourier series presents periodic signals as the sum of complex exponentials at positive and negative harmonic frequencies.

Euler's identity is applied to expand the exponential term into its cosine and sine components. This is substituted back into the Fourier series.

The coefficients for each term in the series are calculated by integrating over one period of the function.

Upon substituting back into the series, a concise representation of the function in terms of the complex exponential is obtained.

The three forms of the Fourier series – Sine-Cosine Form, Amplitude-Phase Form, and Complex Exponential Form – are all interconnected.

To illustrate, consider a square wave signal. Through the Exponential Fourier Series, this square wave can be depicted as a sum of sinusoids, each with a frequency that is an odd multiple of the fundamental frequency and an amplitude inversely proportional to its frequency.

16.2:

Exponential Fourier series

In audio signal processing, the exponential Fourier series plays a crucial role in sound synthesis, allowing complex sounds to be broken down into simpler sinusoidal components. This decomposition process is fundamental in analyzing and reconstructing musical notes and other audio signals. The exponential Fourier series expresses periodic signals as the sum of complex exponentials at both positive and negative harmonic frequencies, providing a powerful tool for signal analysis.

Euler's identity is instrumental in this context. It transforms the exponential terms into their equivalent cosine and sine components.

Equation1

By substituting these components back into the Fourier series, we can achieve a more detailed representation of the original signal. This transformation allows the signal to be expressed concisely in terms of complex exponentials, simplifying the analysis and synthesis of periodic signals.

The coefficients of the Fourier series, Cn, are determined by integrating the function over one period. Mathematically, the coefficient Cn is given by:

Equation2

Where T is the period of the signal, ω0 is the fundamental angular frequency, and n is the harmonic number. Once these coefficients are calculated and substituted back into the series, the function can be expressed as:

Equation3

This equation provides a succinct representation of the original periodic function in terms of its harmonic components.

There are three interconnected forms of the Fourier series: the Sine-Cosine Form, the Amplitude-Phase Form, and the Complex Exponential Form. These forms offer different perspectives and tools for analyzing and synthesizing signals. The Sine-Cosine Form uses trigonometric functions, the Amplitude-Phase Form highlights the magnitude and phase of each frequency component, and the Complex Exponential Form leverages the power of complex numbers for a more compact representation.