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A set of algorithms linking NLMS and block RLS algorithms

机译:一组链接NLMS和块RLS算法的算法

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摘要

This paper describes a set of block processing algorithms which contains as extremal cases the normalized least mean squares (NLMS) and the block recursive least squares (BRLS) algorithms. All these algorithms use small block lengths, thus allowing easy implementation and small input-output delay. It is shown that these algorithms require a lower number of arithmetic operations than the classical least mean squares (LMS) algorithm, while converging much faster. A precise evaluation of the arithmetic complexity is provided, and the adaptive behavior of the algorithm is analyzed. Simulations illustrate that the tracking characteristics of the new algorithm are also improved compared to those of the NLMS algorithm. The conclusions of the theoretical analysis are checked by simulations, illustrating that, even in the case where noise is added to the reference signal, the proposed algorithm allows altogether a faster convergence and a lower residual error than the NLMS algorithm. Finally, a sample-by-sample version of this algorithm is outlined, which is the link between the NLMS and recursive least squares (RLS) algorithms.
机译:本文介绍了一组块处理算法,其中包含极值情况下的标准化最小均方(NLMS)和块递归最小二乘(BRLS)算法。所有这些算法均使用较小的块长度,因此易于实现且输入输出延迟小。结果表明,与经典的最小均方(LMS)算法相比,这些算法所需的算术运算数量更少,同时收敛速度更快。提供了算法复杂度的精确评估,并分析了算法的自适应行为。仿真表明,与NLMS算法相比,新算法的跟踪特性也得到了改善。通过仿真对理论分析的结论进行了检验,结果表明,即使在将噪声添加到参考信号的情况下,与NLMS算法相比,所提出的算法也可以实现更快的收敛速度和更低的残留误差。最后,概述了该算法的逐样本版本,这是NLMS和递归最小二乘(RLS)算法之间的链接。

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