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Sparsity-information-aided least mean squares method for sparse channel estimation

机译:稀疏信道估计的稀疏信息辅助最小均方方法

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A novel least mean squares (LMS) method that exploits sparsity level information for sparse channel estimation is presented and studied in this paper. This method utilizes the channel sparsity level information by incorporating a penalty term into the cost function and has better performance than the compared methods which do not take into account the sparsity level information. The convergence analysis of the proposed method is provided. Both the transient and the steady-state advantages of the proposed method are confirmed numerically. Simulation results indicate that the sparsity-information-aided LMS method has faster convergence and higher accuracy than the compared approaches when the channel sparsity level information is known.
机译:本文介绍和研究了利用稀疏信道估计的稀疏级别信息的新颖最小均方块(LMS)方法。该方法通过将惩罚术语纳入成本函数并具有比不考虑稀疏性级别信息的比较方法更好的性能来利用信道稀疏级别信息。提供了所提出的方法的收敛分析。瞬态和稳态优势都在数值上确认。仿真结果表明,当频道稀疏性级别信息是相应的,稀疏 - 信息辅助LMS方法具有更快的收敛速度和比较高的准确性。

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