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On Convergence of Proportionate-Type Normalized Least Mean Square Algorithms

机译:比例型归一化最小均方算法的收敛性

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摘要

In this paper, a new convergence analysis is presented for a well-known sparse adaptive filter family, namely, the proportionate-type normalized least mean square (PtNLMS) algorithms, where, unlike all the existing approaches, no assumption of whiteness is made on the input. The analysis relies on a “transform” domain based model of the PtNLMS algorithms and brings out certain new convergence features not reported earlier. In particular, it establishes the universality of the steady-state excess mean square error formula derived earlier under white input assumption. In addition, it brings out a new relation between the mean square deviation of each tap weight and the corresponding gain factor used in the PtNLMS algorithm.
机译:本文针对著名的稀疏自适应滤波器家族提出了一种新的收敛性分析方法,即比例型归一化最小均方(PtNLMS)算法,与所有现有方法不同,该算法不假设白度。输入。该分析依赖于PtNLMS算法的基于“变换”域的模型,并带来了某些先前未报道的新收敛特性。特别是,它建立了在白色输入假设下较早推导的稳态多余均方误差公式的普遍性。此外,它在每个抽头权重的均方差与PtNLMS算法中使用的相应增益因子之间产生了新的关系。

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