基于细胞神经网络的模拟维特比解码器的循环缓冲结构

M. P. Sah, Changju Yang, Hongrak Son, In-Choel Kim, Hyongsuk Kim
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引用次数: 1

摘要

针对部分响应最大似然(PRML)信号的解码问题,提出了一种基于细胞神经网络(CNN)的循环缓冲结构的模拟Viterbi解码器。Viterbi解码器是一种利用动态规划的纠错方法,它是一种在每个节点进行相同局部计算的情况下寻找最优路径的有效算法。在之前的基于cnn的模拟维特比解码器中,提出了一种圆连接的圆柱结构。本文提出了一种基于多路复用器的细胞二维结构,该结构的解码级和输出级位置固定,并采用多路复用器将输入数据序列分配到适当的CNN网格级。本文提出的基于cnn的维特比解码器结构简单,所需硅面积少,速度快,性能好。本文揭示了新结构的原理,并将其解码性能与原有结构进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Circular-buffered architecture for Cellular Neural Networks-based analog Viterbi decoder
The Cellular Neural Network (CNN) based analog Viterbi decoder with a circular-buffered architecture is proposed for decoding partial response maximum likelihood (PRML) signals. The Viterbi decoder is an error correcting method utilizing the dynamic programming which is an efficient algorithm for finding the optimal path with the identical local computation performed at each node. In the previous CNN-based analog Viterbi decoder, a circularly connected cylindrical structure was presented. In this paper, a multiplexer-based cellular 2D structure is presented in which positions of its decoding and output stages are fixed and a multiplexer which distributes input data sequence to appropriate CNN trellis stages is employed. The proposed CNN-based Viterbi decoder is simpler, requires less silicon area, higher speed and has better performance than the previous one. The principle of the new architecture is uncovered and its decoding performance is compared with that of the previous architecture in this paper.
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