非高斯环境下稀疏系统识别的比例归一化最大熵准则算法

Yanyan Wang, Yingsong Li, Rui Yang
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引用次数: 3

摘要

提出了一种具有低范数惩罚的稀疏感知比例归一化最大熵准则(PNMCC)算法,称为低范数约束PNMCC (LP-PNMCC),并通过对典型稀疏多径信道和典型回波信道的估计,讨论了其关键参数、收敛速度和稳态性能。LP-PNMCC算法通过将lp范数集成到PNMCC的代价函数中,在LP-PNMCC算法的迭代中创建一个期望的零吸引项来实现,旨在进一步利用稀疏信道的稀疏性。对所提出的LP-PNMCC算法进行了详细的推导和分析。稀疏信道估计实验结果表明,LP-PNMCC算法在收敛速度和稳态均方差方面均优于PNMCC、PNLMS、RZA-MCC、ZA-MCC、NMCC和MCC算法。
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A sparsity-aware proportionate normalized maximum correntropy criterion algorithm for sparse system identification in non-Gaussian environment
A sparsity-aware proportionate normalized maximum correntropy criterion (PNMCC) algorithm with lp-norm penalty, which is named as lp-norm constraint PNMCC (LP-PNMCC), is proposed and its crucial parameters, convergence speed rate and steady-state performance are discussed via estimating a typical sparse multipath channel and an typical echo channel. The LP-PNMCC algorithm is realized by integrating a lp-norm into the PNMCC's cost function to create an expected zero attraction term in the iterations of the presented LP-PNMCC algorithm, which aims to further exploit the sparsity property of the sparse channels. The presented LP-PNMCC algorithm has been derived and analyzed in detail. Experimental results obtained from sparse channel estimations demonstrate that the proposed LP-PNMCC algorithm is superior to the PNMCC, PNLMS, RZA-MCC, ZA-MCC, NMCC and MCC algorithms according to the convergence speed rate and steady-state mean square deviation.
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