Litcius/Paper detail

Uplink NOMA signal transmission with convolutional neural networks approach

Chuan Lin, Qing Chang, Xianxu Li

2020Journal of Systems Engineering and Electronics26 citationsDOIOpen Access PDF

Abstract

Non-orthogonal multiple access (NOMA), featuring high spectrum efficiency, massive connectivity and low latency, holds immense potential to be a novel multi-access technique in fifth- generation (5G) communication. Successive interference cancellation (SIC) is proved to be an effective method to detect the NOMA signal by ordering the power of received signals and then decoding them. However, the error accumulation effect referred to as error propagation is an inevitable problem. In this paper, we propose a convolutional neural networks (CNNs) approach to restore the desired signal impaired by the multiple input multiple output (MIMO) channel. Especially in the uplink NOMA scenario, the proposed method can decode multiple users' information in a cluster instantaneously without any traditional communication signal processing steps. Simulation experiments are conducted in the Rayleigh channel and the results demonstrate that the error performance of the proposed learning system outperforms that of the classic SIC detection. Consequently, deep learning has disruptive potential to replace the conventional signal detection method.

Topics & Concepts

NomaComputer scienceTelecommunications linkSingle antenna interference cancellationTransmission (telecommunications)Spectral efficiencyConvolutional neural networkInterference (communication)Decoding methodsSIGNAL (programming language)Low latency (capital markets)Convolutional codeChannel (broadcasting)Electronic engineeringReal-time computingComputer engineeringAlgorithmTelecommunicationsArtificial intelligenceComputer networkEngineeringProgramming languageAdvanced Wireless Communication TechnologiesWireless Signal Modulation ClassificationIoT Networks and Protocols
Uplink NOMA signal transmission with convolutional neural networks approach | Litcius