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A Zero-Attracting Sparse Lncosh Adaptive Algorithm

机译:零吸引稀疏Lncosh自适应算法

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Performance of adaptive filters highly depends on the eigenvalue spread of the autocorrelation matrix of the input signal. For example, performance of the least-mean-square (LMS) algorithm deteriorates if this eigenvalue spread is relatively high. Recently, a least lncosh (lncosh) algorithm has been proposed to enhance the performance of the LMS algorithm. The algorithm utilizes lncosh function of the error in its cost function. Based on this, we propose a new algorithm for that imposes an l0- norm penalty to the cost function of the lncosh algorithm. This penalty term is capable to exploit the system sparsity in system identification settings. The performance of the proposed algorithm has been measured in the presence of correlated and non-correlated input signals. The proposed algorithm has shown significant performance compared to those of the lncosh and re-weighted zero-attracting LMS (RZA-LMS) algorithms in different system identification setting.
机译:自适应滤波器的性能高度依赖于输入信号自相关矩阵的特征值扩展。例如,如果该特征值分布相对较高,则最小均方(LMS)算法的性能会降低。最近,已经提出了一种最小的Incosh(Incosh)算法来增强LMS算法的性能。该算法在其成本函数中利用了误差的lncosh函数。基于此,我们提出了一种新的算法,该算法将 0 -规范对lncosh算法的代价函数的惩罚。该惩罚项能够利用系统标识设置中的系统稀疏性。已经在相关和不相关的输入信号存在下测量了所提出算法的性能。与lncosh和重新加权的零吸引LMS(RZA-LMS)算法相比,该算法在不同的系统识别设置下具有显着的性能。

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