Entropy (May 2023)

Transformer-Based Detection for Highly Mobile Coded OFDM Systems

  • Leijun Wang,
  • Wenbo Zhou,
  • Zian Tong,
  • Xianxian Zeng,
  • Jin Zhan,
  • Jiawen Li,
  • Rongjun Chen

DOI
https://doi.org/10.3390/e25060852
Journal volume & issue
Vol. 25, no. 6
p. 852

Abstract

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This paper is concerned with mobile coded orthogonal frequency division multiplexing (OFDM) systems. In the high-speed railway wireless communication system, an equalizer or detector should be used to mitigate the intercarrier interference (ICI) and deliver the soft message to the decoder with the soft demapper. In this paper, a Transformer-based detector/demapper is proposed to improve the error performance of the mobile coded OFDM system. The soft modulated symbol probabilities are computed by the Transformer network, and are then used to calculate the mutual information to allocate the code rate. Then, the network computes the codeword soft bit probabilities, which are delivered to the classical belief propagation (BP) decoder. For comparison, a deep neural network (DNN)-based system is also presented. Numerical results show that the Transformer-based coded OFDM system outperforms both the DNN-based and the conventional system.

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