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Modified Champernowne Function Based Robust and Sparsity-Aware Adaptive Filters

机译:改进的倒数功能基于鲁棒和稀疏感知自适应滤波器

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摘要

A robust adaptive filter is usually unaffected by spurious disturbances at the error sensor. In an endeavour to improve robustness of the adaptive filter, a novel modified Champernowne function (MCF) is proposed as a robust norm and the corresponding robust Champernowne adaptive filter (CMAF) is derived. To improve modelling accuracy and convergence performance for sparse systems along with being robust, a reweighted zero attraction (RZA) norm is incorporated in the cost function along with MCF and the corresponding RZA-CMAF algorithm is proposed. To further improve filter performance, the CMAF-l(0) algorithm is proposed where the l(0)-norm is approximated using the multivariate Geman-McClure function (GMF). Bound on learning rate for the proposed algorithms is also derived. Extensive simulation study shows the improved robustness achieved by the CMAF algorithm, especially when impulsive noises are present for a longer duration. On the other hand, RZA-CMAF and CMAF-l(0) can provide improved convergence performance under sparse and impulsive noise conditions, with CMAF-l(0) providing the best performance.
机译:强大的自适应滤波器通常不受误差传感器的杂散干扰的影响。在提高自适应滤波器的稳健性的努力中,提出了一种新颖的修改的倒数功能(MCF)作为稳健的规范,导出相应的稳健倒数自适应滤波器(CMAF)。为了提高稀疏系统的建模和收敛性能以及稳健,重新重量零吸引(RZA)规范并入成本函数以及MCF,提出了相应的RZA-CMAF算法。为了进一步提高滤波器性能,提出了CMAF-L(0)算法,其中L(0) - 使用多变量Geman-McClure函数(GMF)近似L(0)。也导出了所提出的算法的学习率的束缚。广泛的仿真研究显示了CMAF算法实现的改进的稳健性,尤其是当存在较长持续时间的冲动噪声时。另一方面,RZA-CMAF和CMAF-L(0)可以在稀疏和脉冲噪声条件下提供改善的收敛性能,CMAF-L(0)提供最佳性能。

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