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A Variable Step-Size Partial-Update Normalized Least Mean Square Algorithm for Second-Order Adaptive Volterra Filters

机译:用于二阶Adaptive Volterra滤波器的可变梯级部分 - 更新归一化最小均方算法

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摘要

Partial-update (PU) algorithms offer reduced computational complexity to adaptive second-order Volterra filters (SOV) in nonlinear systems while retaining acceptable performance. In this paper, a new selective partial-update technique for the normalized LMS (NLMS) SOV algorithm is proposed, which requires lesser number of comparison operations per iteration than existing methods while providing close performance to the standard M-Max NLMS-SOV algorithm. Convergence properties of the proposed algorithm are enhanced by making the algorithm step-size time varying based on the natural logarithm function. Simulation experiments compare the proposed algorithm with existing PU and variable step-size NLMS-SOV algorithms, which illustrate the advantageous properties of the new algorithm. The proposed algorithm achieves both lower steady-state misalignment and faster convergence speed when compared with the fixed step-size full-update NLMS-SOV algorithm. Simulations also show that comparison operations overhead of the proposed algorithm is reduced significantly compared to that of the standard M-Max NLMS-SOV algorithm.
机译:部分更新(PU)算法可以减少在非线性系统中的自适应二阶Volterra滤波器(SOV)的计算复杂性,同时保留可接受的性能。在本文中,提出了一种用于归一化LMS(NLMS)SOV算法的新选择性部分更新技术,这需要比现有方法迭代的比较操作较少的比较操作,同时为标准M-MAX NLMS-SOV算法提供密切性能。通过基于自然对数函数的算法阶跃尺寸的时间变化来增强所提出的算法的收敛性。仿真实验比较了现有PU和可变步长NLMS-SOV算法的提出算法,其说明了新算法的有利特性。与固定的步长全更新NLMS-SOV算法相比,所提出的算法均达到稳态未对准和更快的收敛速度。模拟还表明,与标准M-MAX NLMS-SOV算法相比,所提出的算法的比较操作显着减少。

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