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Stochastic fm models and non-linear time series analysis

Published online by Cambridge University Press:  01 July 2016

D. Huang*
Affiliation:
Queensland University of Technology
*
*Postal address: School of Mathematics, Queensland University of Technology, GPO Box 2434, Brisbane, QLD 4001, Australia.

Abstract

An important model in communications is the stochastic FM signal st = A cos , where the message process {mt} is a stochastic process. In this paper, we investigate the linear models and limit distributions of FM signals. Firstly, we show that this non-linear model in the frequency domain can be converted to an ARMA (2, q + 1) model in the time domain when {mt} is a Gaussian MA (q) sequence. The spectral density of {St} can then be solved easily for MA message processes. Also, an error bound is given for an ARMA approximation for more general message processes. Secondly, we show that {St} is asymptotically strictly stationary if {mt} is a Markov chain satisfying a certain condition on its transition kernel. Also, we find the limit distribution of st for some message processes {mt}. These results show that a joint method of probability theory, linear and non-linear time series analysis can yield fruitful results. They also have significance for FM modulation and demodulation in communications.

Type
General Applied Probability
Copyright
Copyright © Probability Trust 1997 

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