A random process is defined by X(t)= K coswt 120 where w is a constant and K is uniformly distributed between 0 and 2. Determine the following: (a) E[X(1)] (b) The autocorrelation function of X(t) (c) The autocovariance function of X(t)
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A random process is defined by
X(t)= K coswt t≥0
where w is a constant and K is uniformly distributed between 0 and 2. Determine
the following:
(a) E[X(1)]
(b) The autocorrelation function of X(t)
(c) The autocovariance function of X (1)
200
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