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On the tracking performance of combinations of least mean squares and recursive least squares adaptive filters

机译:最小均方和递归最小二乘自适应滤波器组合的跟踪性能

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Combinations of adaptive filters have attracted attention as a simple solution to improve filter performance, including tracking properties. In this paper, we consider combinations of LMS and RLS filters, and study their performance for tracking time-varying solutions. We show that a combination of two filters from the same family (i.e., two LMS or two RLS filters) cannot improve the performance over that of a single filter of the same type with optimal selection of the step size (or forgetting factor). However, combining LMS and RLS filters it is possible to simultaneously outperform the optimum LMS and RLS filters. In other words, combination schemes can achieve smaller errors than optimally adjusted individual filters. Experimental work in a plant identification setup corroborates the validity of our results.
机译:自适应滤波器的组合作为提高滤波器性能(包括跟踪特性)的简单解决方案已引起关注。在本文中,我们考虑了LMS和RLS滤波器的组合,并研究了它们在跟踪时变解决方案中的性能。我们展示了来自同一系列的两个滤波器(即两个LMS或两个RLS滤波器)的组合无法通过优化步长(或遗忘因子)来改善性能优于单个类型的单个滤波器。但是,结合使用LMS和RLS滤波器,可以同时胜过最佳LMS和RLS滤波器。换句话说,与最优调整的单个滤波器相比,组合方案可以实现更小的误差。植物鉴定装置中的实验工作证实了我们结果的有效性。

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