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改进的l0范数LMS算法与分析

DOI: 10.13190/j.jbupt.2015.04.017, PP. 81-85

Keywords: 变步长,基于l0范数的最小均方,收敛速度,抗噪声性能

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Abstract:

提出一种改进的基于l0范数的最小均方(LMS)算法.采用误差的相关函数值调整权系数步长因子以及零吸引项,增强系统的抗噪声性能;并且引入一种修正的权系数步长因子更新方法,进而使系统具有较快的跟踪速度.对提出的算法进行理论分析,最后在不同信噪比下进行仿真验证并与已有的基于l0范数的LMS算法进行比较.理论分析结合仿真验证都表明新提出算法具有较快的跟踪速度和强的抗噪声性能.

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