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Complex Domain Adaptive System Identification Using Sparse Affine Projection Normalized Correlation Algorithms Under Impulsive Noises

机译:使用稀疏仿射投影的复杂域自适应系统识别在脉冲噪声下归一化相关算法

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Sparse adaptive filters are used extensively for enhancing the filter performance in a sparse system. The affine projection algorithm (APA) is effective in improving the convergence speed for strongly correlated input signals, but it is very sensitive to impulsive noise. Normalized Correlation Algorithm (NCA) is robust in impulsive noise environments. The affine projection normalized correlation algorithm (AP-NCA) used in complex-domain adaptive filters, combines the benefits of APA and NCA and it does not take into account the underlying sparsity information of the system. In this paper, we develop sparse AP-NCA algorithms to exploit system sparsity as well as to mitigate impulsive noise with correlated complex-valued input. Simulation results show that the proposed algorithms exhibit better performance than the AP-NCA for a sparse system. The robustness of these algorithms is evaluated in terms of Mean square error (MSE) performance in the adaptive system identification context.
机译:稀疏的自适应滤波器广泛用于增强稀疏系统中的过滤性能。仿射投影算法(APA)有效地改善了强烈相关输入信号的收敛速度,但对脉冲噪声非常敏感。归一化相关算法(NCA)在脉冲噪声环境中是稳健的。复杂域自适应滤波器中使用的仿射投影归一化相关算法(AP-NCA)结合了APA和NCA的好处,并且不考虑系统的底层稀疏信息。在本文中,我们开发稀疏的AP-NCA算法以利用系统稀疏性,并通过相关的复值输入来减轻冲动的噪声。仿真结果表明,所提出的算法表现出比稀疏系统的AP-NCA更好的性能。在自适应系统识别上下文中,根据平均方误差(MSE)性能来评估这些算法的鲁棒性。

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