Sparse-aware least sum of exponentials algorithms for sparse system identification

Q2 Social Sciences
Yuting Zhao, Yingsong Li, X. Mao
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引用次数: 1

Abstract

Zero attraction techniques are introduced into the least sum of exponentials algorithm to estimate the sparse systems. The l1-norm and its reweighting form are employed and integrated into the least sum of exponentials algorithm to create desired zero attraction terms. The proposed algorithms are mathematically presented in the context of the adaptive filtering frame. The proposed algorithm is investigated for estimating a sparse system. The obtained results illustrate that the proposed sparse least sum of exponentials algorithms give better estimation performance than the classical least sum of exponentials algorithms when the system is exact sparse.
稀疏系统辨识的最小指数和算法
在最小指数和算法中引入零吸引技术来估计稀疏系统。利用11范数及其重加权形式,并将其集成到最小指数和算法中,以产生期望的零吸引项。在自适应滤波框架的背景下,提出了数学上的算法。研究了该算法对稀疏系统的估计。结果表明,当系统为精确稀疏时,所提出的稀疏指数最小和算法比经典指数最小和算法具有更好的估计性能。
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来源期刊
Advances in Engineering Education
Advances in Engineering Education Social Sciences-Education
CiteScore
2.90
自引率
0.00%
发文量
8
期刊介绍: The journal publishes articles on a wide variety of topics related to documented advances in engineering education practice. Topics may include but are not limited to innovations in course and curriculum design, teaching, and assessment both within and outside of the classroom that have led to improved student learning.
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