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A robust subband adaptive filter algorithm for sparse and block-sparse systems identification

机译:稀疏和块稀疏系统识别的强大的子带自适应滤波算法

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This paper presents a new subband adaptive filter (SAF) algorithm for system identification scenario under impulsive interference, named generalized continuous mixed p-norm SAF (GCMPN-SAF) algorithm. The proposed algorithm uses a GCMPN cost function to combat the impul- sive interference. To further accelerate the convergence rate in the sparse and the block-sparse system identification processes, the proportionate versions of the proposed algorithm, the L-0-norm GCMPN-SAF (L-0-GCMPN-SAF) and the block-sparse GCMPN-SAF (BS-GCMPN-SAF) algorithms are also developed. Moreover, the convergence analysis of the proposed algorithm is provided. Simulation results show that the proposed algorithms have a better performance than some other state-of-the-art algorithms in the literature with respect to the convergence rate and the tracking capability.
机译:本文提出了一种新的子带自适应滤波器(SAF)算法,用于在脉冲干扰下的系统识别方案,名为Generalization Continual Mixed P-Norm SAF(GCMPN-SAF)算法。 该算法使用GCMPN成本函数来打击杂乱的干扰。 为了进一步加速稀疏和块稀疏系统识别过程中的收敛速度,所提出的算法的比例版本,L-0-NOM GCMPN-SAF(L-0-GCMPN-SAF)和块稀疏GCMPN -SAF(BS-GCMPN-SAF)算法也是开发的。 此外,提供了所提出的算法的收敛性分析。 仿真结果表明,相对于收敛速率和跟踪能力,所提出的算法比文献中的其他一些最先进的算法具有更好的性能。

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