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Norm Penalized Joint-Optimization NLMS Algorithms for Broadband Sparse Adaptive Channel Estimation

机译:宽带稀疏自适应信道估计的范数罚分联合优化NLMS算法

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摘要

A joint-optimization method is proposed for enhancing the behavior of the l 1 -norm- and sum-log norm-penalized NLMS algorithms to meet the requirements of sparse adaptive channel estimations. The improved channel estimation algorithms are realized by using a state stable model to implement a joint-optimization problem to give a proper trade-off between the convergence and the channel estimation behavior. The joint-optimization problem is to optimize the step size and regularization parameters for minimizing the estimation bias of the channel. Numerical results achieved from a broadband sparse channel estimation are given to indicate the good behavior of the developed joint-optimized NLMS algorithms by comparison with the previously proposed l 1 -norm- and sum-log norm-penalized NLMS and least mean square (LMS) algorithms.
机译:为了提高稀疏自适应信道估计的要求,提出了一种联合优化方法,以增强l 1 -norm-和sum-log范数惩罚的NLMS算法的性能。改进的信道估计算法是通过使用状态稳定模型实现联合优化问题来实现的,以在收敛和信道估计行为之间取得适当的折衷。联合优化问题是优化步长和正则化参数,以最小化信道的估计偏差。通过与先前提出的l 1 -norm-和sum-log norm-penalized NLMS和最小均方(LMS)进行比较,给出了宽带稀疏信道估计获得的数值结果,以表明已开发的联合优化NLMS算法的良好性能。算法。

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