改进的稀疏感知集隶属度仿射投影算法

T. Ferreira, Markus V. S. Lima, W. Martins, P. Diniz
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引用次数: 0

摘要

近年来,一种稀疏感知集成员仿射投影(SSM-AP)算法在相同条件下,与其他稀疏感知算法相比,具有较低的均方误差(MSE)、较低的不对准和较低的计算复杂度。SSM-AP更新规则由一个称为约束向量(CV)的向量参数管理。目前,CV有两个主要的选择:一个导致更快的收敛,而另一个产生更低的MSE和复杂性。本文提出了一种替代方法,该方法在给定CV的情况下,提高了SSM-AP算法的收敛速度和稳态MSE,同时减少了总体更新次数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modified Sparsity-aware Set-Membership Affine Projection algorithm
Recently, a Sparsity-aware Set-Membership Affine Projection (SSM-AP) algorithm has been developed, which presents lower Mean-Squared Error (MSE), lower misalignment, and lower computational complexity, as compared to other sparsity-aware algorithms under the same conditions. The SSM-AP updating rule is governed by a vector parameter, called the Constraint Vector (CV). Currently, there are two main choices for the CV: one leads to faster convergence, whereas the other yields lower MSE and complexity. This paper proposes an alternative to those choices, which can improve both convergence speed and steady-state MSE of the SSM-AP algorithm with a given CV, while also decreasing the overall number of updates.
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