Abstract :
This correspondence examines the joint conditional probability density function (PDF) of the main variables (envelope, phase, and their eta-order time derivatives) of a time-varying random signal in the presence of additive Gaussian noise. The main variables are conditioned with respect to the given variables, which are the amplitude, phase, and their derivatives of the signal alone. We prove a theorem stating that some of the conditional PDFs of the main variables do not depend on some of the given variables. This theorem, together with Bayes´s theorem, can substantially simplify the derivations of conditional PDFs and give alternative forms of them. Both theorems can also help in finding reasonable approximations, as we demonstrate for the phase and first time derivative of the envelope.
Keywords :
Bayes methods; Gaussian noise; approximation theory; probability; signal processing; Bayes theorem; additive Gaussian noise; approximation theory; conditional probability density function; time-varying random signal; Additive noise; Entropy; Fading; Fluctuations; Frequency; Gaussian noise; Gaussian processes; Narrowband; Phase noise; Probability density function; Joint probability density function; phase; random signal; time derivative of the envelope; time-varying vector;