Finite-Alphabet Signature Design for Grant-Free NOMA: A Quantized Deep Learning Approach

Hanxiao Yu, Zesong Fei*, Zhong Zheng, Neng Ye

*Corresponding author for this work

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Abstract

Grant-free Non-Orthogonal Multiple Access (NOMA) is a promising solution to enable massive wireless access service for 5G systems and beyond. Conventional grant-free NOMA schemes directly apply the spreading signatures optimized for the grant-based scenarios, which, however, ignore the users' diversified activation probabilities. In addition, the conventional grant-free NOMA schemes are not designed with finite-alphabet signatures, which hinders the encoder/decoder implementation using practical low-cost hardware. Therefore, to overcome these limitations, we propose a finite-alphabet signature design for the grant-free NOMA with random and nonuniform user activations. Herein, the NOMA signatures are optimized by the autoencoder-based transceivers with both transmitter and receiver being in the form of deep neural network. First, the quantized deep learning is employed in the NOMA signature training, which jointly optimizes the sequence generation and quantization. Moreover, in order to improve the training rate, we propose a specific neural network receiver, where the network structure resembles the successive interference cancellation procedures. The experiment results show that the obtained NOMA signatures commendably exploit the users' activation profiles, and the proposed scheme outperforms the conventional ones especially when the users have unequal activation probabilities.

Original languageEnglish
Article number9130955
Pages (from-to)10975-10987
Number of pages13
JournalIEEE Transactions on Vehicular Technology
Volume69
Issue number10
DOIs
Publication statusPublished - Oct 2020

Keywords

  • Grant-free NOMA
  • deep learning
  • finite-alphabet
  • signature design
  • unequal activation probability

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Yu, H., Fei, Z., Zheng, Z., & Ye, N. (2020). Finite-Alphabet Signature Design for Grant-Free NOMA: A Quantized Deep Learning Approach. IEEE Transactions on Vehicular Technology, 69(10), 10975-10987. Article 9130955. https://doi.org/10.1109/TVT.2020.3006262