Litcius/Paper detail

A Model-Driven Deep Learning Method for Massive MIMO Detection

Jieyu Liao, Junhui Zhao, Feifei Gao, Geoffrey Ye Li

2020IEEE Communications Letters81 citationsDOI

Abstract

In this letter, an efficient massive multiple-input multiple-output (MIMO) detector is proposed by employing a deep neural network (DNN). Specifically, we first unfold an existing iterative detection algorithm into the DNN structure, such that the detection task can be implemented by deep learning (DL) approach. We then introduce two auxiliary parameters at each layer to better cancel multiuser interference (MUI). The first parameter is to generate the residual error vector while the second one is to adjust the relationship among previous layers. We further design the training procedure to optimize the auxiliary parameters with pre-processed inputs. The so derived MIMO detector falls into the category of model-driven DL. The simulation results show that the proposed MIMO detector can achieve preferable detection performance compared to the existing detectors for massive MIMO systems.

Topics & Concepts

MIMODetectorComputer scienceResidualDeep learningArtificial neural networkAlgorithmArtificial intelligenceInterference (communication)Single antenna interference cancellationMultiuser detection3G MIMOChannel (broadcasting)TelecommunicationsWireless Signal Modulation ClassificationAdvanced biosensing and bioanalysis techniquesWireless Communication Security Techniques