An improved reweighted zero-attracting NLMS algorithm for broadband sparse channel estimation

Yanyan Wang, Yingsong Li, Z. Jin
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引用次数: 8

Abstract

Sparse channel estimation has attracted more attention for various broadband wireless communication systems. Square error criterion based adaptive filter algorithms are extensively studied for broadband sparse channel estimations (SCE) such as zero-attracting (ZA) least mean square (ZA-LMS) and reweighting ZA-LMS (RZA-LMS) algorithms. However, these sparse LMS algorithms are usually sensitive to the scaling of their input signal. In this paper, an improved sparse algorithm is proposed on the basis of the normalized LMS (NLMS) algorithm, reweighted ZA (RZA) techniques and compressed sensing concepts. The proposed SCE technique is implemented by using an error sequence to redesign the step-size (SS) of the NLMS to modify the RZA-NLMS algorithm. The complexity is also discussed based on the trace calculation strategy. The behaviors of the proposed SCE algorithm are verified over a broadband sparse multi-path wireless channel. The proposed results obtained from the simulation indicate that the presented SCE algorithms are superior to the conventional LMS, NLMS, ZA-LMS, RZA-LMS, ZA-NLMS and RZA-NLMS algorithms with reference to the convergence rate and the estimated error.
一种改进的重加权吸零NLMS宽带稀疏信道估计算法
稀疏信道估计在各种宽带无线通信系统中受到越来越多的关注。基于平方误差准则的自适应滤波算法被广泛研究用于宽带稀疏信道估计(SCE),如零吸引(ZA)最小均方(ZA- lms)和重加权ZA- lms (RZA-LMS)算法。然而,这些稀疏LMS算法通常对其输入信号的缩放很敏感。本文在归一化LMS (NLMS)算法、重加权ZA (RZA)技术和压缩感知概念的基础上提出了一种改进的稀疏算法。提出的SCE技术是通过使用误差序列重新设计NLMS的步长来修改RZA-NLMS算法来实现的。同时讨论了基于轨迹计算策略的复杂性问题。在宽带稀疏多径无线信道上验证了该算法的性能。仿真结果表明,本文提出的SCE算法在收敛速度和估计误差方面均优于传统的LMS、NLMS、ZA-LMS、RZA-LMS、ZA-NLMS和RZA-NLMS算法。
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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