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首页> 外文期刊>Circuits and Systems I: Regular Papers, IEEE Transactions on >Sparse Adaptive Filtering by an Adaptive Convex Combination of the LMS and the ZA-LMS Algorithms
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Sparse Adaptive Filtering by an Adaptive Convex Combination of the LMS and the ZA-LMS Algorithms

机译:LMS和ZA-LMS算法的自适应凸组合的稀疏自适应滤波

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In practice, one often encounters systems that have a sparse impulse response, with the degree of sparseness varying over time. This paper presents a new approach to identify such systems which adapts dynamically to the sparseness level of the system and thus works well both in sparse and non-sparse environments. The proposed scheme uses an adaptive convex combination of the LMS algorithm and the recently proposed, sparsity-aware zero-attractor LMS (ZA-LMS) algorithm. It is shown that while for non-sparse systems, the proposed combined filter always converges to the LMS algorithm (which is better of the two filters for non-sparse case in terms of lesser steady state excess mean square error (EMSE)), for semi-sparse systems, on the other hand, it actually converges to a solution that produces lesser steady state EMSE than produced by either of the component filters. For highly sparse systems, depending on the value of a proportionality constant in the ZA-LMS algorithm, the proposed combined filter may either converge to the ZA-LMS based filter or may produce a solution which, like the semi-sparse case, outperforms both the constituent filters. A simplified update formula for the mixing parameter of the adaptive convex combination is also presented. The proposed algorithm requires much less complexity than the existing algorithms and its claimed robustness against variable sparsity is well supported by simulation results.
机译:在实践中,人们经常会遇到具有稀疏脉冲响应的系统,稀疏程度随时间而变化。本文提出了一种识别此类系统的新方法,该方法可动态适应系统的稀疏性级别,因此在稀疏和非稀疏环境中均能很好地工作。所提出的方案使用LMS算法和最近提出的稀疏感知零吸引LMS(ZA-LMS)算法的自适应凸组合。结果表明,对于非稀疏系统,所提出的组合滤波器始终收敛于LMS算法(就较小的稳态过剩均方误差(EMSE)而言,这两个滤波器在非稀疏情况下更好),对于另一方面,半稀疏系统实际上收敛于一种解决方案,该解决方案产生的稳态EMSE比任一组件滤波器产生的稳态EMSE小。对于高度稀疏的系统,根据ZA-LMS算法中比例常数的值,所提出的组合滤波器可能会收敛到基于ZA-LMS的滤波器,或者会产生一种解决方案,与半稀疏情况一样,其性能都优于组成过滤器。给出了自适应凸组合混合参数的简化更新公式。所提出的算法比现有算法所需的复杂性低得多,并且仿真结果很好地支持了其声称的针对可变稀疏性的鲁棒性。

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