Bias-compensated normalised LMS algorithm with noisy input

Abstract

A new bias-compensated normalised least mean square (NLMS) algorithm for parameter estimation with a noisy input is proposed. The algorithm is obtained from an approximated cost function based on the statistical properties of the input noise and involves a condition checking constraint to decide whether the weight coefficient vector must be updated. Simulation results show that the proposed algorithm is more robust and accurate than the conventional method.

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포항공과대학교

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Last time updated on 11/02/2018

This paper was published in 포항공과대학교.

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