Sign-Error Adaptive Filtering Algorithms for Markovian Parameters
Abstract
Motivated by reduction of computational complexity, this work develops sign-error adaptive filtering algorithms for estimating time-varying system parameters. Different from the previous work on sign-error algorithms, the parameters are time-varying and their dynamics are modeled by a discrete-time Markov chain. A distinctive feature of the algorithms is the multi-time-scale framework for characterizing parameter varia- tions and algorithm updating speeds. This is realized by considering the stepsize of the estimation algorithms and a scaling parameter that defines the transition rates of the Markov jump process. Depending on the relative time scales of these two pro- cesses, suitably scaled sequences of the estimates are shown to converge to either an ordinary differential equation, or a set of ordinary differential equations modulated by random switching, or a stochastic differential equation, or stochastic differential equa- tions with random switching. Using weak convergence methods, convergence and rates of convergence of the algorithms are obtained for all these cases.
Cite
@article{arxiv.1212.5185,
title = {Sign-Error Adaptive Filtering Algorithms for Markovian Parameters},
author = {Araz Hashemi and G. Yin and Le Yi Wang},
journal= {arXiv preprint arXiv:1212.5185},
year = {2016}
}
Comments
Preprint, submitted to IEEE Transactions on Signal Processing, 26 pages, 5 figures