On the influence of the forgetting factor of the RLS adaptive filter in system identification

S. Ciochină, C. Paleologu, J. Benesty, A. Enescu
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引用次数: 39

Abstract

The overall performance of the recursive least-squares (RLS) algorithm is governed by the forgetting factor. The value of this parameter leads to a compromise between low misadjustment and stability on the one hand, and fast convergence rate and tracking on the other hand. In this paper, we analyze another important phenomenon that has to be considered when choosing the value of the forgetting factor. Considering a system identification setup, there is a “leakage” of the system noise into the output of the adaptive filter. This process is highly influenced by the value of the forgetting factor but it also depends on the length of the adaptive filter. Simulations performed in an echo cancellation configuration prove these theoretical findings.
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RLS自适应滤波器遗忘因子对系统辨识的影响
递归最小二乘(RLS)算法的总体性能受遗忘因子的影响。该参数的取值可以在低失调和稳定性与快速收敛和跟踪之间取得折衷。在本文中,我们分析了在选择遗忘因子值时必须考虑的另一个重要现象。考虑到系统识别设置,存在系统噪声“泄漏”到自适应滤波器的输出中。这一过程受到遗忘因子值的高度影响,但也取决于自适应滤波器的长度。在回声消除配置下进行的模拟验证了这些理论发现。
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