RECURSIVE INVERSE BASIS FUNCTION (RIBF) ALGORITHM FOR IDENTIFICATION OF PERIODICALLY VARYING SYSTEM

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IEEE Computer Soc

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info:eu-repo/semantics/closedAccess

Abstract

This paper presents a new algorithm for the identification (tracking) of periodically varying system. When the system coefficients vary rapidly, conventional adaptive estimators such as the least mean square (LMS) and the weighted least squares (WLS) algorithms become inefficient. Basis function (BF) algorithms have shown superiority over the conventional ones in tracking the parameters of periodically varying system. Unfortunately, BF estimators are computationally very demanding. A new recursive inverse basis function estimator (RIBF) and its frequency-adaptive version are proposed which provides a significant reduction in the computational complexity and the mean square parameter estimation error without the need for any error correction code.

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20th European Signal Processing Conference (EUSIPCO) -- AUG 27-31, 2012 -- Bucharest, ROMANIA

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Basis function algorithms, system identification, nonstationary process, periodically varying system, adaptive filters

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2012 Proceedings of the 20Th European Signal Processing Conference (Eusipco)

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