Improved adaptive sparse channel estimation using mixed square/fourth error criterion
Guan Gui, Li Xu, and Shinya Matsushita

TL;DR
This paper introduces an improved adaptive sparse channel estimation method using a mixed square/fourth error criterion, enhancing robustness and performance over traditional methods in broadband wireless communications.
Contribution
It proposes a novel SFEC-based adaptive sparse channel estimation approach with optimized regularization, addressing limitations of existing SEC-based methods.
Findings
Better estimation accuracy than conventional SEC-ASCE methods
Enhanced robustness against input signal scaling
Improved convergence and steady-state performance
Abstract
Sparse channel estimation problem is one of challenge technical issues in stable broadband wireless communications. Based on square error criterion (SEC), adaptive sparse channel estimation (ASCE) methods, e.g., zero-attracting least mean square error (ZA-LMS) algorithm and reweighted ZA-LMS (RZA-LMS) algorithm, have been proposed to mitigate noise interferences as well as to exploit the inherent channel sparsity. However, the conventional SEC-ASCE methods are vulnerable to 1) random scaling of input training signal; and 2) imbalance between convergence speed and steady state mean square error (MSE) performance due to fixed step-size of gradient descend method. In this paper, a mixed square/fourth error criterion (SFEC) based improved ASCE methods are proposed to avoid aforementioned shortcomings. Specifically, the improved SFEC-ASCE methods are realized with zero-attracting least mean…
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Taxonomy
TopicsAdvanced Adaptive Filtering Techniques · Sparse and Compressive Sensing Techniques · Direction-of-Arrival Estimation Techniques
