Deep Spread Multiplexing and Study of Training Methods for DNN-Based Encoder and Decoder

Sensors (Basel). 2023 Apr 10;23(8):3848. doi: 10.3390/s23083848.

Abstract

We propose a deep spread multiplexing (DSM) scheme using a DNN-based encoder and decoder and we investigate training procedures for a DNN-based encoder and decoder system. Multiplexing for multiple orthogonal resources is designed with an autoencoder structure, which originates from the deep learning technique. Furthermore, we investigate training methods that can leverage the performance in terms of various aspects such as channel models, training signal-to-noise (SNR) level and noise types. The performance of these factors is evaluated by training the DNN-based encoder and decoder and verified with simulation results.

Keywords: SCMA; autoencoder; deep learning; deep spread multiplexing.