A Proposed SM-IMSAF Algorithm with Fast Convergence Rate

Long Shi, Haiquan Zhao
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引用次数: 0

Abstract

In order to obtain a fast convergence rate, we propose a novel algorithm at the basis of the improved multiband-structured subband adaptive filter algorithm (IMSAF). The proposed algorithm incorporates the idea of set-membership into the IMSAF (SM-IMSAF). The update equation of the proposed SM-IMSAF is derived by using the Lagrange Multiplier method. Due to the effect of set-membership, the proposed SM-IMSAF achieves a better performance than some existing well-known algorithms. The simulation experiments are carried out under the condition of the system identification applications. Considering the practical condition, exact-modeling as well as under-modeling is taken into account in the simulations. At the same time, the tracking ability of SM-IMSAF algorithm is also researched when the unknown system mutates. The simulation results verify the superiority of the SM-IMSAF algorithm.
一种收敛速度快的SM-IMSAF算法
为了获得较快的收敛速度,我们在改进的多带结构子带自适应滤波算法(IMSAF)的基础上提出了一种新的算法。该算法将集合隶属度的思想引入到IMSAF (SM-IMSAF)中。利用拉格朗日乘子法推导了SM-IMSAF的更新方程。由于集合隶属度的影响,本文提出的SM-IMSAF算法比现有的一些知名算法具有更好的性能。在系统识别应用的条件下进行了仿真实验。考虑到实际情况,在仿真中考虑了精确建模和欠建模。同时,研究了SM-IMSAF算法在未知系统发生突变时的跟踪能力。仿真结果验证了SM-IMSAF算法的优越性。
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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