A new variable step-size normalized PBS_LMS algorithm

Reza Seifi Majdar, M. Eshghi
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引用次数: 2

Abstract

This paper presents a novel variable step-size normalized PBS_LMS algorithm for adaptive filters. The fixed step-size PBS_LMS algorithm, which significantly decreases the number of calculations for updating tap-weight vector and increases the speed of convergence rate in comparison with conventional LMS algorithm, has proposed previously. However, the fixed step-size PBS_LMS algorithm as fixed step-size LMS algorithm usually results in a trade-off between the residual error and the convergence speed of the algorithm. Now in this paper the properties of Normalized LMS algorithm are used in the conventional PBS_LMS algorithm to approach the Normalized PBS_LMS algorithm with fast convergence rate. Then variable step-size is used parallel with the Normalized PBS_LMS algorithm to minimize the steady state mean square error. The function of mean square error variation is used to detecting the rate of convergence for increasing the step-size parameter to approach this goal. The computer simulations validate that the Normalized PBS_LMS algorithm can approach the faster convergence rate than the PBS_LMS algorithm. In addition, these simulations show the lower mean square error and tracking ability in Variable Step-Size Normalized PBS_LMS algorithm in comparison with the Normalized PBS_LMS algorithm.
一种新的变步长规范化PBS_LMS算法
提出了一种新的变步长归一化PBS_LMS自适应滤波算法。固定步长PBS_LMS算法与传统LMS算法相比,显著减少了更新分权向量的计算次数,提高了收敛速度。然而,固定步长PBS_LMS算法作为固定步长LMS算法,通常会导致残差和算法收敛速度之间的权衡。本文利用归一化LMS算法的特性,在传统的PBS_LMS算法中逼近收敛速度快的归一化PBS_LMS算法。然后将变步长与归一化PBS_LMS算法并行使用,以最小化稳态均方误差。采用均方误差变异函数检测收敛速度,通过增大步长参数来接近目标。计算机仿真验证了归一化PBS_LMS算法的收敛速度比PBS_LMS算法快。此外,这些仿真结果表明,变步长归一化PBS_LMS算法比归一化PBS_LMS算法具有更低的均方误差和跟踪能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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