3.13 Discrete-Time and Hybrid Conjugate Covariance

A complete wide-sense second-order characterization of complex processes requires the knowledge of both covariance and conjugate covariance (Picinbono 1996; Picinbono and Bondon 1997), (Schreier and Scharf 2003a,2003b).

By reasoning as in Theorems 2.6.3, 2.6.5, and 2.6.18, respectively, the following theorems can be proved.

Theorem 3.13.1 Conjugate Covariance of the Discrete-Time Cyclic Cross-Correlogram. Let xd(n) and yd(n) be zero-mean discrete-time processes defined in (2.172). Under Assumptions 2.4.2, 2.4.3, and 2.4.5 on the continuous-time processes x(t) and y(t), the conjugate covariance of the DT-CCC (2.181) is given by

(3.251) equation

where

(3.252) equation

(3.253) equation

(3.254) equation

with

equation

and

equation

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Theorem 3.13.2 Asymptotic (N→ ∞) Conjugate Covariance of the ...

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