Greedy algorithms for sparse adaptive decision feedback equalization

A. Lalos, Evangelos Vlachos, K. Berberidis, A. Rontogiannis
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引用次数: 2

Abstract

In this paper we propose two new adaptive decision feedback equalization (DFE) schemes for channels with long and sparse impulse responses. It has been shown that for a class of channels, and under reasonable assumptions concerning the DFE filter sizes, the feedforward (FF) and feedback (FB) filters possess also a sparse form. The sparsity form of both the channel impulse response (CIR) and the equalizer filters is properly exploited and two novel adaptive greedy schemes are derived. The first scheme is a channel estimation based one. In this scheme, the non-negligible taps of the involved CIR are first estimated via a new greedy algorithm, and then the FF and FB filters are adaptively computed by exploiting a useful relation between these filters and the CIR. The channel estimation part of this new technique is based on the steepest descent (SD) method and offers considerably improved performance as compared to other adaptive greedy algorithms that have been proposed. The second scheme is a direct adaptive sparse equalizer based on a SD-based greedy algorithm. Compared to non sparsity aware DFE, both of our schemes exhibit faster convergence, improved tracking capabilities and reduced complexity.
稀疏自适应决策反馈均衡的贪心算法
针对脉冲响应较长且稀疏的信道,提出了两种新的自适应决策反馈均衡(DFE)方案。研究表明,对于一类信道,在对DFE滤波器尺寸的合理假设下,前馈(FF)和反馈(FB)滤波器也具有稀疏形式。适当地利用了信道脉冲响应(CIR)和均衡器滤波器的稀疏性形式,导出了两种新的自适应贪心方案。第一种方案是基于信道估计的方案。在该方案中,首先通过一种新的贪婪算法估计所涉及的CIR的不可忽略的分频,然后利用FF和FB滤波器与CIR之间的有用关系自适应计算FF和FB滤波器。该新技术的信道估计部分基于最陡下降(SD)方法,与其他已提出的自适应贪婪算法相比,具有显着提高的性能。第二种方案是基于sd贪婪算法的直接自适应稀疏均衡器。与非稀疏感知DFE相比,我们的方案都具有更快的收敛速度,改进的跟踪能力和降低的复杂性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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