Applied Sciences (Nov 2023)

Shared Graph Neural Network for Channel Decoding

  • Qingle Wu,
  • Benjamin K. Ng,
  • Chan-Tong Lam,
  • Xiangyu Cen,
  • Yuanhui Liang,
  • Yan Ma

DOI
https://doi.org/10.3390/app132312657
Journal volume & issue
Vol. 13, no. 23
p. 12657

Abstract

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With the application of graph neural network (GNN) in the communication physical layer, GNN-based channel decoding algorithms have become a research hotspot. Compared with traditional decoding algorithms, GNN-based channel decoding algorithms have a better performance. GNN has good stability and can handle large-scale problems; GNN has good inheritance and can generalize to different network settings. Compared with deep learning-based channel decoding algorithms, GNN-based channel decoding algorithms avoid a large number of multiplications between learning weights and messages. However, the aggregation edges and nodes for GNN require many parameters, which requires a large amount of memory storage resources. In this work, we propose GNN-based channel decoding algorithms with shared parameters, called shared graph neural network (SGNN). For BCH codes and LDPC codes, the SGNN decoding algorithm only needs a quarter or half of the parameters, while achieving a slightly degraded bit error ratio (BER) performance.

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