English

DemodNet: Learning Soft Demodulation from Hard Information Using Convolutional Neural Network

Signal Processing 2020-11-24 v1

Abstract

Soft demodulation is a basic module of traditional communication receivers. It converts received symbols into soft bits, that is, log likelihood ratios (LLRs). However, in the nonideal additive white Gaussian noise (AWGN) channel, it is difficult to accurately calculate the LLR. In this letter, we propose a demodulator, DemodNet, based on a fully convolutional neural network with variable input and output length. We use hard bit information to train the DemodNet, and we propose log probability ratio (LPR) based on the output layer of the trained DemodNet to realize soft demodulation. The simulation results show that under the AWGN channel, the performance of both hard demodulation and soft demodulation of DemodNet is very close to the traditional methods. In three non-ideal channel scenarios, i.e., the presence of frequency deviation, additive generalized Gaussian noise (AGGN) channel, and Rayleigh fading channel, the performance of channel decoding using the soft information LPR obtained by DemodNet is better than the performance of decoding using the exact LLR calculated under the ideal AWGN assumption.

Keywords

Cite

@article{arxiv.2011.11337,
  title  = {DemodNet: Learning Soft Demodulation from Hard Information Using Convolutional Neural Network},
  author = {Shilian Zheng and Xiaoyu Zhou and Shichuan Chen and Peihan Qi and Xiaoniu Yang},
  journal= {arXiv preprint arXiv:2011.11337},
  year   = {2020}
}

Comments

5 pages, 6 figures

R2 v1 2026-06-23T20:26:29.814Z