| Two-sided Laplace Transform |
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: There seems to be no generally accepted notation for the two-sided transform, the used here recalls "bilateral". The two-sided transform used by some authors is : In Science and Engineering applications, the argument ''t'' often represents time (in seconds), and the function ''f''(''t'') often represents a Signal or waveform that varies with time. In these cases, ''f''(''t'') is called the time domain representation of the signal, while ''F''(''s'') is called the '''frequency domain''' representation. The inverse transformation then represents a ''synthesis'' of the signal as the sum of its frequency components taken over all frequencies, whereas the forward transformation represents the ''analysis'' of the signal into its frequency components. RELATIONSHIP TO OTHER INTEGRAL TRANSFORMS If ''u''(''t'') is the Heaviside Step Function , equal to zero when ''t'' is less than zero, to one-half when ''t'' equals zero, and to one when ''t'' is greater than zero, then the Laplace transform may be defined in terms of the two-sided Laplace transform by : On the other hand, we also have : so either version of the Laplace transform can be defined in terms of the other. The Mellin transform may be defined in terms of the two-sided Laplace transform by : and conversely we can get the two-sided transform from the Mellin transform by : The Fourier transform may also be defined in terms of the two-sided Laplace transform; here instead of having the same image with differing originals, we have the same original but different images. We may define the Fourier transform as : Note that definitions of the Fourier transform differ, and in particular : is often used instead. In terms of the Fourier transform, we may also obtain the two-sided Laplace transform, as : The Fourier transform is normally defined so that it exists for real values; the above definition defines the image in a strip which may not include the real axis. The Moment-generating Function of a continuous Probability Density Function ''f''(''x'') can be expressed as . REFERENCES
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