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In this module, we will derive an expansion for arbitrary discrete-time functions, and in doing so, derive the Discrete Time Fourier Transform (DTFT).
Since complex exponentials are eigenfunctions of linear time-invariant (LTI) systems , calculating the output of an LTI system given as an input amounts to simple multiplication, where , and where is the eigenvalue corresponding to k. As shown in the figure, a simple exponential input would yield the output
Using this and the fact that is linear, calculating for combinations of complex exponentials is also straightforward.
The action of on an input such as those in the two equations above is easy to explain. independently scales each exponential component by a different complex number . As such, if we can write a function as a combination of complex exponentials it allows us to easily calculate the output of a system.
Now, we will look to use the power of complex exponentials to see how we may represent arbitrary signals in terms of a set of simpler functions bysuperposition of a number of complex exponentials. Below we will present the Discrete-Time Fourier Transform (DTFT). Because the DTFT deals with nonperiodic signals, we must find away to include all real frequencies in the general equations.For the DTFT we simply utilize summation over all real numbers rather thansummation over integers in order to express the aperiodic signals.
It can be demonstrated that an arbitrary Discrete Time-periodic function can be written as a linear combination of harmonic complex sinusoids
The - called the Fourier coefficients - tell us "how much" of the sinusoid is in . The formula shows as a sum of complex exponentials, each of which is easily processed by an LTI system (since it is an eigenfunction of every LTI system). Mathematically, it tells us that the set ofcomplex exponentials form a basis for the space of N-periodic discrete time functions.
Now, in order to take this useful tool and apply it to arbitrary non-periodic signals, we will have to delve deeper into the use of the superposition principle. Let be a periodic signal having period . We want to consider what happens to this signal's spectrum as the period goes to infinity. We denote the spectrum for any assumed value of the period by . We calculate the spectrum according to the Fourier formula for a periodic signal, known as the Fourier Series (for more on this derivation, see the section on Fourier Series .)
Because complex exponentials are eigenfunctions of LTI systems, it is often useful to represent signals using a set of complex exponentials as a basis. The discrete time Fourier transform synthesis formula expresses a discrete time, aperiodic function as the infinite sum of continuous frequency complex exponentials.
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