Gigabit DSL: A deep-LMS approach

A. Zanko, I. Bergel, Amir Leshem
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引用次数: 4

Abstract

In this paper we present the Deep-LMS, a novel algorithm for crosstalk cancellation in DSL. The Deep-LMS crosstalk canceler uses an adaptive non-diagonal preprocessing matrix prior to a conventional LMS crosstalk canceler. The role of the preprocessing matrix is to speed-up the convergence of the conventional LMS crosstalk canceler and hence speed-up the convergence of the overall system. The update of the preprocessing matrix is inspired by deep neural networks. However, since all the operations in the Deep-LMS algorithm are linear, we are capable of providing an exact convergence speed analysis. The Deep-LMS is important for crosstalk cancellation in the novel G.fast standard, where traditional LMS converges very slowly due to the large bandwidth. Simulation results support our analysis and show significant reduction in convergence time compared to existing LMS variants.
千兆DSL:一种深度lms方法
本文提出了一种新的DSL串扰消除算法Deep-LMS。Deep-LMS串扰消除器在传统LMS串扰消除器之前使用自适应非对角预处理矩阵。预处理矩阵的作用是加快传统LMS串扰消除器的收敛速度,从而加快整个系统的收敛速度。预处理矩阵的更新受到深度神经网络的启发。然而,由于Deep-LMS算法中的所有操作都是线性的,因此我们能够提供精确的收敛速度分析。在新的G.fast标准中,Deep-LMS对于串扰消除非常重要,传统LMS由于带宽大而收敛速度很慢。仿真结果支持我们的分析,并显示与现有LMS变体相比,收敛时间显着减少。
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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