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A Novel Generalized Group-Sparse Mixture Adaptive Filtering Algorithm

机译:一种新颖的广义群稀疏混合自适应滤波算法

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A novel adaptive filtering (AF) algorithm is proposed for group-sparse system identifications. In the devised algorithm, a novel mixed error criterion (MEC) with two-order logarithm error, p -order errors and group sparse constraint method is devised to give a resistant to the impulsive noise. The proposed group-sparse MEC can fully use the known group-sparse characteristics in the cluster sparse systems, and it is derived and analyzed in detail. Various simulations are presented and analyzed to give a verification on the effectiveness of the developed group-sparse MEC algorithms, and the simulated results shown that the developed algorithm outperforms the previously developed sparse AF algorithms for identifying the systems.
机译:提出了一种新颖的自适应滤波(AF)算法用于组稀疏系统识别。在所设计的算法中,设计了一种新颖的具有二阶对数误差,p阶误差和群稀疏约束方法的混合误差准则(MEC),以抵抗脉冲噪声。提出的群稀疏MEC可以充分利用集群稀疏系统中已知的群稀疏特征,并对其进行了详细的推导和分析。提出并分析了各种仿真,以验证所开发的群体稀疏MEC算法的有效性,并且仿真结果表明,所开发的算法优于用于识别系统的稀疏AF算法。

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