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Performance evaluation of a new variable tap-length learning algorithm for automatic structure adaptation in linear adaptive filters

机译:一种新的可变抽头长度学习算法在线性自适应滤波器中自动结构自适应的性能评估

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摘要

In this work, a variable-tap length, variable step normalized least mean square algorithm with variable error spacing is proposed. The algorithm finds the optimized tap-length that best balances the complexity and steady state performance in linear adaptive filters. The design provides a systematic procedure with mathematical analysis to select the variable key parameters that affect the structure adaptation. The proposed structure adaptation algorithm maintains a trade-off between the mean square error and convergence speed. A sliding window weight update method is presented along with the tap-length learning algorithm to reduce the structural as well as computational complexity. Guidelines for parameter selection to formulate the optimum tap-length in correspondence with the designed algorithm are shown and assumptions are specified. The proposed algorithm has performed better than the existing fractional tap-length learning methods for both low and high noise conditions. This is achieved because of the unique method adopted in this paper to set dynamic system independent parameters instead of predefined fixed settings. (C) 2014 Elsevier GmbH. All rights reserved.
机译:在这项工作中,提出了具有可变误差间隔的可变长度长度,可变步长归一化最小均方算法。该算法找到了最佳的抽头长度,可以最佳地平衡线性自适应滤波器的复杂度和稳态性能。该设计提供了具有数学分析功能的系统程序,可以选择影响结构适应性的可变关键参数。所提出的结构自适应算法保持了均方误差与收敛速度之间的折衷。提出了一种滑动窗口权重更新方法以及抽头长度学习算法,以减少结构和计算复杂度。显示了与设计的算法相对应的参数选择指南,以制定最佳抽头长度,并指定了假设。在低噪声和高噪声条件下,该算法的性能均优于现有的分数抽头长度学习方法。之所以能够做到这一点,是因为本文采用了独特的方法来设置动态系统独立参数,而不是预先定义的固定设置。 (C)2014 Elsevier GmbH。版权所有。

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