Variable-step-size based sparse adaptive filtering algorithm for channel estimation in broadband wireless communication systems
TL;DR: A variable step-size ZA-NLMS (VSS-ZA- NLMS) algorithm to improve the ASCE and is theoretically analyzed and verified by numerical simulations in terms of mean square deviation (MSD) and bit error rate (BER) metrics.
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Abstract: Sparse channels exist in many broadband wireless communication systems. To exploit the channel sparsity, invariable step-size zero-attracting normalized least mean square (ISS-ZA-NLMS) algorithm was applied in adaptive sparse channel estimation (ASCE). However, ISS-ZA-NLMS cannot achieve a good trade-off between the convergence rate, the computational cost, and the performance. In this paper, we propose a variable step-size ZA-NLMS (VSS-ZA-NLMS) algorithm to improve the ASCE. The performance of the proposed method is theoretically analyzed and verified by numerical simulations in terms of mean square deviation (MSD) and bit error rate (BER) metrics.
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Improved adaptive sparse channel estimation based on the least mean square algorithm
Guan Gui,Wei Peng,Fumiyuki Adachi +2 more
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