Convex Combination of Constraint Vectors for Set-membership Affine Projection Algorithms

T. Ferreira, W. Martins, Markus V. S. Lima, P. Diniz
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引用次数: 3

Abstract

Set-membership affine projection (SM-AP) adaptive filters have been increasingly employed in the context of online data-selective learning. A key aspect for their good performance in terms of both convergence speed and steady-state mean-squared error is the choice of the so-called constraint vector. Optimal constraint vectors were recently proposed relying on convex optimization tools, which might sometimes lead to prohibitive computational burden. This paper proposes a convex combination of simpler constraint vectors whose performance approaches the optimal solution closely, utilizing much fewer computations. Some illustrative examples confirm that the sub-optimal solution follows the accomplishments of the optimal one.
集隶属仿射投影算法约束向量的凸组合
集隶属度仿射投影(SM-AP)自适应滤波器越来越多地应用于在线数据选择学习。它们在收敛速度和稳态均方误差方面表现良好的一个关键方面是选择所谓的约束向量。最近提出的最优约束向量依赖于凸优化工具,有时可能导致令人望而却步的计算负担。本文提出了一种更简单约束向量的凸组合,其性能接近最优解,使用的计算量少得多。一些说明性的例子证实了次最优解遵循最优解的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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