ARMA过程小波变换域lms算法的统一分析

Suryaia Rahman, M. Rashid, M. Z. Alam
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引用次数: 2

摘要

针对高度相关的自回归移动平均(ARMA)输入过程,对小波变换(WT)域最小均方(LMS)自适应滤波器进行了统一分析。众所周知,对自回归(AR)过程进行功率归一化的幺正变换(UT)域LMS (UT-LMS)自适应滤波器提高了滤波器的性能,其中DCT的性能最好。本文将UT-LMS算法应用于时变ARMA过程,分析结果表明,UT较低的去相关特性降低了LMS的性能。因此,作为ARMA过程的变换算法,酉变换并不适用于LMS,这一结果在早期发表的工作中也没有得到探讨。本文提出了离散小波域LMS (DWT-LMS)用于ARMA过程,以提高LMS的基本性能,如失调、收敛和跟踪性能,理论和仿真结果表明,DWT-LMS对1阶和$2^{\ mathm {n}\ mathm {d}}$阶AR、移动平均(MA)和ARMA过程具有比DCT-LMS更好的性能。最后通过MATLAB仿真对所提出的方法进行了不同输入量的仿真,验证了所推导数学算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Unified Analysis of Proposed Wavelet Transform Domain LMS-algorithm for ARMA Process
A unified analysis of Wavelet Transform (WT) domain Least Mean Square (LMS) adaptive filter is presented in this work for highly correlated Autoregressive-Moving-Average (ARMA) input process. It is well known that the Unitary transform (UT) domain LMS (UT-LMS) adaptive filter for Autoregressive (AR) process with power normalization improves the filter performance, where DCT provides best performance among them. In this work, we apply the UT-LMS algorithm for time-varying ARMA process, and the analytical result shows that the lower decorrelation property of UT degrades the LMS performance. As a result, Unitary transform is not applicable for LMS as a transform algorithm for ARMA process, and this outcome has not been explored in early published work. In this paper, we propose Discrete Wavelet domain LMS (DWT-LMS) for ARMA process to enhance the basic performances of LMS such as misadjustment, convergence, and tracking properties, and the theoretical and simulation result of this work show that DWT-LMS provides better performance than that of DCT-LMS for 1st and $2^{\mathrm{n}\mathrm{d}}$ order AR, Moving-average (MA), and ARMA process. This paper concludes with the MATLAB simulation for the proposed method with various inputs for demonstrating the validity of the derived mathematical algorithm.
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