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Adaptive regularisation for normalised subband adaptive filter: mean-square performance analysis approach

机译:归一化子带自适应滤波器的自适应正则化:均方性能分析方法

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摘要

The normalised subband adaptive filter (NSAF) is a useful adaptive filter, which improves the convergence rate compared with the normalised least mean-square algorithm. Most analytical results of the NSAF set the regularisation parameter set to zero or present only steady-state mean-square error performance of the regularised NSAF (ε-NSAF). This study presents a mean-square performance analysis of ε-NSAF, which analyses not only convergence behaviour but also steady-state behaviour. Furthermore, a novel adaptive regularisation for NSAF (AR-NSAF) is also developed based on the proposed analysis approach. The proposed AR-NSAF selects the optimal regularisation parameter that leads to improving the performance of the adaptive filter. Simulation results comparing the proposed analytical results with the results achieved from the simulation are presented. In addition, these results verify that the proposed AR-NSAF outperforms the previous algorithms in a system-identification and acoustic echo-cancellation scenarios.
机译:归一化子带自适应滤波器(NSAF)是有用的自适应滤波器,与归一化最小均方算法相比,它提高了收敛速度。 NSAF的大多数分析结果都将正则化参数设置为零,或仅显示正则化NSAF(ε-NSAF)的稳态均方误差性能。这项研究提出了ε-NSAF的均方性能分析,该分析不仅分析了收敛行为,而且还分析了稳态行为。此外,基于提出的分析方法,还开发了一种新颖的NSAF自适应正则化(AR-NSAF)。所提出的AR-NSAF选择最佳正则化参数,其导致改善自适应滤波器的性能。给出了将拟议的分析结果与通过仿真获得的结果进行比较的仿真结果。此外,这些结果验证了所提出的AR-NSAF在系统识别和声学回声消除方案中优于先前的算法。

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