Algorithm and Hardware Co-design for Deep Learning-powered Channel Decoder: A Case Study

Boyang Zhang, Yang Sui, Lingyi Huang, Siyu Liao, Chunhua Deng, Bo Yuan
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引用次数: 2

Abstract

Channel decoder is a key component module in many communication systems. Recently, neural networks-based channel decoders have been actively investigated because of the great potential of their data-driven decoding procedure. However, as the intersection among machine learning, information theory and hardware design, the efficient algorithm and hardware codesign of deep learning-powered channel decoder has not been well studied. This paper is a first step towards exploring the efficient DNN-enabled channel decoders, from a joint perspective of algorithm and hardware. We first revisit our recently proposed doubly residual neural decoder. By introducing the advanced architectural topology on the decoder design, the overall error-correcting performance can be significantly improved. Based on this algorithm, we further develop the corresponding systolic array-based hardware architecture for the DRN decoder. The corresponding FPGA implementation for our DRN decoder on short LDPC code is also developed.
基于深度学习的信道解码器算法与硬件协同设计:一个案例研究
信道解码器是许多通信系统的关键组件模块。近年来,基于神经网络的信道解码器由于其数据驱动解码过程的巨大潜力而受到积极的研究。然而,作为机器学习、信息论和硬件设计的交叉点,深度学习驱动信道解码器的高效算法和硬件协同设计还没有得到很好的研究。本文是从算法和硬件的联合角度探索有效的dnn信道解码器的第一步。我们首先重温我们最近提出的双残差神经解码器。通过在解码器设计中引入先进的体系结构拓扑,可以显著提高解码器的整体纠错性能。在此基础上,我们进一步开发了相应的基于收缩阵列的DRN解码器硬件架构。本文还开发了相应的短LDPC码DRN解码器的FPGA实现。
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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