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首页> 外文期刊>Communications Letters, IEEE >Non-Uniform Norm Constraint LMS Algorithm for Sparse System Identification
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Non-Uniform Norm Constraint LMS Algorithm for Sparse System Identification

机译:稀疏系统辨识的非均匀范数约束LMS算法

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摘要

Sparsity property has long been exploited to improve the performance of least mean square (LMS) based identification of sparse systems, in the form of l_0-norm or l_1-norm constraint. However, there is a lack of theoretical investigations regarding the optimum norm constraint for specific system with different sparsity. This paper presents an approach by seeking the tradeoff between the sparsity exploitation effect of norm constraint and the estimation bias it produces, from which a novel algorithm is derived to modify the cost function of classic LMS algorithm with a non-uniform norm (p-norm like) penalty. This modification is equivalent to impose a sequence of l_0-norm or l_1-norm zero attraction elements on the iteration according to the relative value of each filter coefficient among all the entries. The superiorities of the proposed method including improved convergence rate as well as better tolerance upon different sparsity are demonstrated by numerical simulations.
机译:长期以来,稀疏属性一直被用来改善基于最小均方(LMS)的稀疏系统识别的性能,形式为l_0-范数或l_1-范数约束。但是,缺乏针对具有不同稀疏性的特定系统的最佳规范约束的理论研究。本文通过寻求范数约束的稀疏性开发效果与其产生的估计偏差之间的折衷来提出一种方法,从中得出一种新算法,以非均匀范数(p-norm)修改经典LMS算法的成本函数。喜欢)的罚款。此修改等效于根据所有条目中每个滤波器系数的相对值,在迭代中施加一系列l_0范数或l_1范数零吸引元素。通过数值模拟证明了所提方法的优越性,包括改进的收敛速度以及对不同稀疏性的更好的容忍度。

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