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Robust Adaptive Algorithm by an Adaptive Zero Attractor Controller of ZA-LMS Algorithm

机译:ZA-LMS算法的自适应零吸引子控制器的鲁棒自适应算法

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摘要

This paper proposes a new approach to identify time varying sparse systems. The proposed approach uses Zero-Attracting Least Mean Square (ZA-LMS) algorithm with an adaptive optimal zero attractor controller which can adapt dynamically to the sparseness level and provide appreciable performance in all environments ranging from sparse to nonsparse conditions. The optimal zero attractor controller is derived based on the criterion that confirms largest decrease in mean square deviation (MSD) error. A simple update rule is also proposed to change the zero attractor controller based on the level of sparsity. It is found that, for nonsparse system, the proposed approach converges to LMS (as ZA-LMS cannot outperform LMS when the system is nonsparse) and, for highly sparse system, as the proposed approach is based on optimal zero attractor controller, it converges either similar to ZA-LMS or even better than ZA-LMS (depending on the value of zero attractor controller chosen for ZA-LMS algorithm). The performance of the proposed algorithm is better than ZA-LMS and LMS when the system is semisparse. Simulations were performed to prove that the proposed algorithm is robust against variable sparsity level.
机译:本文提出了一种识别时变稀疏系统的新方法。所提出的方法使用具有自适应最优零吸引子控制器的零吸引最小均方(ZA-LMS)算法,该控制器可以动态适应稀疏级别,并在从稀疏到非稀疏条件的所有环境中提供可观的性能。基于确认均方差(MSD)误差最大减少的准则,得出最佳零吸引器控制器。还提出了一种简单的更新规则,以根据稀疏程度更改零吸引器控制器。发现对于非稀疏系统,该方法收敛于LMS(因为当系统非稀疏时,ZA-LMS不能胜过LMS);对于高度稀疏系统,由于该方法基于最优零吸引子控制器,因此收敛。要么类似于ZA-LMS,要么甚至优于ZA-LMS(取决于为ZA-LMS算法选择的零吸引子控制器的值)。当系统为半稀疏系统时,该算法的性能优于ZA-LMS和LMS。仿真表明该算法对可变稀疏度具有鲁棒性。

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