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A Class of Diffusion Proportionate Subband Adaptive Fitters for Sparse System Identification over Distributed Networks

机译:一类扩散比例子带自适应耦合,用于分布式网络稀疏系统识别

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摘要

This paper aims to extend the proportionate adaptation concept to the design of a class of diffusion normalized subband adaptive filter (DNSAF) algorithms. This leads to four extensions of the algorithm associated with different step-size variations, namely diffusion proportionate normalized subband adaptive filter (DPNSAF), diffusion mu-law PNSAF (DMPNSAF), diffusion improved PNSAF (DIPNSAF) and diffusion improved IPNSAF (DIIPNSAF). Subsequently, steady-state performance, stability conditions and computational complexity of the proposed algorithms are investigated. For each extension the performance has been evaluated using both real and simulated data, where the outcomes demonstrate the accuracy of the theoretical expressions and effectiveness of the proposed algorithms.
机译:本文旨在将比例适应概念扩展到一类扩散归一化子带自适应滤波器(DNSAF)算法的设计。 这导致与不同阶梯大小变化相关的算法的四个延伸,即扩散成比例归一化子带自适应滤波器(DPNSAF),扩散MU-LAM PNSAF(DMPNSAF),扩散改进的PNSAF(DIPNSAF)和扩散改进的IPNSAF(DIIPNSAF)。 随后,研究了所提出的算法的稳态性能,稳定性条件和计算复杂性。 对于每个扩展,已经使用真实和模拟数据进行了评估,结果证明了所提出的算法的理论表达和有效性的准确性。

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