Deep Learning-Based Detection Algorithm for the Multi-User MIMO-NOMA System

Author:

Wang Qixing12,Zhou Ting34,Zhang Hanzhong1ORCID,Hu Honglin1,Pignaton de Freitas Edison5ORCID,Feng Songlin1

Affiliation:

1. Shanghai Advanced Research Institute, Chinese Academy of Sciences, Shanghai 201210, China

2. School of Electronic, Electrical and Communication Engineering, University of Chinese Academy of Sciences, Beijing 100049, China

3. School of Microelectronics, Shanghai University, Shanghai 200444, China

4. Shanghai Frontier Innovation Research Institute, Shanghai 201100, China

5. Institute of Informatics, Federal University of Rio Grande do Sul, Porto Alegre 93950-000, Brazil

Abstract

Recently, non-orthogonal multiple access (NOMA) has become prevalent in 5G communication. However, the traditional successive interference cancellation (SIC) receivers for NOMA still encounter challenges. The near-far effect between the users and the base stations (BS) results in a higher bit error rate (BER) for the SIC receiver. Additionally, the linear detection algorithm used in each SIC stage fails to eliminate the interference and is susceptible to error propagation. Consequently, designing a high-performance NOMA system receiver is a crucial challenge in NOMA research and particularly in signal detection. Focusing on the signal detection of the receiver in the NOMA system, the main work is as follows. (1) This thesis leverages the strengths of deep neural networks (DNNs) for nonlinear detection and incorporates the low computational complexity of the successive interference cancellation (SIC) structure. The proposed solution introduces a feedback deep neural network (FDNN) receiver to replace the SIC in signal detection. By employing a deep neural network for nonlinear detection at each stage, the receiver mitigates error propagation, lowers the BER in NOMA systems, and enhances resistance against inter-user interference (IUI). (2) We describe its algorithm flow and provide simulation results comparing FDNN and SIC receivers under MIMO-NOMA scenarios. The simulations clearly demonstrate that FDNN receivers outperform SIC receivers in terms of BER for MIMO-NOMA systems.

Funder

Science and Technology Commission Foundation of Shanghai

Shanghai Industrial Collaborative Innovation Project

Pudong Industry, Education and Research Cooperation Program

Publisher

MDPI AG

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