Lecture 5: Z transform - MIT OpenCourseWare
Z transform maps a function of discrete time. n. to a function of. z. Although motivated by system functions, we can define a Z trans form for any signal. X (z) = x [n] z. − n n =−∞ Notice that we include n< 0 as well as n> 0 → bilateral Z transform (there is also a unilateral Z transform with similar but not identical properties ...
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