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An Optimized Zero-Attracting LMS Algorithm for the Identification of Sparse System

Lei Luo, Wenzhao Zhu

2022IEEE/ACM Transactions on Audio Speech and Language Processing21 citationsDOI

Abstract

This paper introduces an optimized zero-attractor to improve the performance of least mean square (LMS)-based algorithms for the identification of sparse system. Compared with previous LMS-based algorithms for sparse system identification, the performance of the proposed optimized zero-attracting LMS (OZ-LMS) is much less sensitive to the tuning parameters and measurement noise power, and performs much better for sparse system. Comprehensive performance analysis of the mean-square deviation (MSD) of OZ-LMS is derived in detail. Moreover, the parameter selection rules for optimal steady-state MSD are discussed. Simulation results, using white Gaussian noise and speech input signals, show improved performance over existing methods. Furthermore, we show that the numerical results of OZ-LMS agree with the theoretical predictions.

Topics & Concepts

Least mean squares filterSystem identificationAlgorithmComputer scienceGaussianAdditive white Gaussian noiseIdentification (biology)Noise (video)AttractorWhite noiseControl theory (sociology)MathematicsAdaptive filterArtificial intelligenceData modelingTelecommunicationsControl (management)Mathematical analysisPhysicsBotanyBiologyImage (mathematics)Quantum mechanicsDatabaseAdvanced Adaptive Filtering TechniquesSpeech and Audio ProcessingBlind Source Separation Techniques
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