基于广义归一化梯度下降正则化NLMS算法的盲DFE

Abderrazak Abdaoui, C. Laot
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引用次数: 2

摘要

提出了用于水声通信的鲁棒无监督决策反馈均衡器(DFE)。所提出的均衡器由四个级联器件组成,其主要组件是递归(7?)和横向(T)滤波器。给定均衡器的特点是能够处理严重的快速时变信道,允许调整其结构和根据均方误差(MSE)准则的自适应。在现有的解决方案中,递归滤波器和横向滤波器采用决策定向最小均方算法进行更新。然而,LMS算法对时变环境的弱点促使我们通过使用其他鲁棒解决方案来提高适应性。本文提出了一种基于复值广义归一化梯度下降法(GNGD)的自步长正则化归一化LMS算法来代替简单的LMS算法。与现有的无监督DFE相比,尽管环境存在不规则性和非平稳性,但该方法仍具有最佳的信道跟踪性能。给出了从水声记录信号中获得的合成信道和真实信道的MSE的性能分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Blind DFE based on NLMS algorithm with generalized normalized gradient descent regularization
This paper presents robust unsupervised decision feedback equalizer (DFE) for acoustic underwater communications. The proposed equalizer consists of the cascade of four devices whose main components are recursive (7?.) and transverse (T) filters. The feature of the given equalizer is the ability to deal with severe quickly time varying channels by allowing the adjustment of both, its structure and its adaptation according to a mean square error (MSE) criterion. In the existing solution, the recursive and transverse filters are updated by decision directed least-mean-square (LMS) algorithms. However, the weakness of the LMS like algorithms against the time varying environments pushes us to improve the adaptation by the use of other robust solutions. In this paper, we propose the employ of normalized LMS algorithms with self step-size regularization based on complex-valued generalized normalized gradient descent (GNGD) method instead of simple LMS algorithms. Compared to the existent unsupervised DFE, the proposed solution gives the best performance in channel tracking despite the irregularities and the non-stationarity of the environment. Performance analysis are given in terms of the MSE for both synthetic and realistic channels obtained from underwater acoustic recorded signals.
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