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Published bySydney Chambers Modified over 9 years ago
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The Continuous - Time Fourier Transform (CTFT)
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Extending the CTFS The CTFS is a good analysis tool for systems with periodic excitation but the CTFS cannot represent an aperiodic signal for all time The continuous-time Fourier transform (CTFT) can represent an aperiodic signal for all time
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Objective To generalize the Fourier series to include aperiodic signals by defining the Fourier transform To establish which type of signals can or cannot be described by a Fourier transform To derive and demonstrate the properties of the Fourier transform
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CTFS-to-CTFT Transition...
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CTFS-to-CTFT Transition Below are plots of the magnitude of X[k] for 50% and 10% duty cycles. As the period increases the sinc function widens and its magnitude falls. As the period approaches infinity, the CTFS harmonic function becomes an infinitely-wide sinc function with zero amplitude.
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CTFS-to-CTFT Transition 50% duty cycle 10% duty cycle
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CTFS-to-CTFT Transition
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Definition of the CTFT (f form) Forward Inverse Commonly-used notation
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Forward Inverse Definition of the CTFT (ω form) Commonly-used notation
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Convergence and the Generalized Fourier Transform This integral does not converge so, strictly speaking, the CTFT does not exist.
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Convergence and the Generalized Fourier Transform (cont…) Its CTFT integral does converge. But consider a similar function,
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Convergence and the Generalized Fourier Transform (cont…) Now let approach zero.
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Convergence and the Generalized Fourier Transform (cont…) By a similar process it can be shown that and These CTFT’s which involve impulses are called generalized Fourier transforms (probably because the impulse is a generalized function).
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Negative Frequency This signal is obviously a sinusoid. How is it described mathematically? It could be described by But it could also be described by
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Negative Frequency (cont…) x(t) could also be described by and probably in a few other different-looking ways. So who is to say whether the frequency is positive or negative? For the purposes of signal analysis, it does not matter. or
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CTFT Properties Linearity
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CTFT Properties (cont…) Time Shifting Frequency Shifting
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CTFT Properties (cont…) Time Scaling Frequency Scaling
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The “Uncertainty” Principle The time and frequency scaling properties indicate that if a signal is expanded in one domain it is compressed in the other domain. This is called the “uncertainty principle” of Fourier analysis.
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CTFT Properties (cont…) Transform of a Conjugate Multiplication- Convolution Duality
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CTFT Properties (cont…) In the frequency domain, the cascade connection multiplies the transfer functions instead of convolving the impulse responses.
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CTFT Properties (cont…) Time Differentiation Modulation Transforms of Periodic Signals
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CTFT Properties (cont…) Parseval’s Theorem Even though an energy signal and its CTFT may look quite different, they do have something in common. They have the same total signal energy.
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CTFT Properties (cont…) Integral Definition of an Impulse Duality
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CTFT Properties (cont…) Total-Area Integral Total area under a time or frequency-domain signal can be found by evaluating its CTFT or inverse CTFT with an argument of zero
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CTFT Properties (cont…) Integration
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