Litcius/Paper detail

Intelligent Massive MIMO Systems for Beyond 5G Networks: An Overview and Future Trends

Olakunle Elijah, Sharul Kamal Abdul Rahim, Wee Kiat New, Chee Yen Leow, Kanapathippillai Cumanan, Tan Kim Geok

2022IEEE Access52 citationsDOIOpen Access PDF

Abstract

Machine learning (ML) which is a subset of artificial intelligence is expected to unlock the potential of challenging large-scale problems in conventional massive multiple-input-multiple-output MIMO (CM-MIMO) systems. This introduces the concept of intelligent mMIMO (I-mMIMO) systems. Due to the surge of application of different ML techniques in the enhancement of mMIMO systems for existing and emerging use cases beyond fifth-generation (B5G) networks, this article aims to provide an overview of the different aspects of the I-mMIMO systems. First, the characteristics and challenges of the CM-MIMO have been identified. Secondly, the most recent efforts aimed at applying ML to a different aspect of CM-MIMO systems are presented. Thirdly, the deployment of I-mMIMO and efforts towards standardization are discussed. Lastly, the future trends of I-mMIMO enabled application systems are presented. The aim of this paper is to assist the readers to understand different ML approaches in CM-MIMO systems, explore some of the advantages and disadvantages, identify some of the open issues, and motivate the readers toward future trends.

Topics & Concepts

MIMOComputer scienceSoftware deploymentStandardizationSystems engineeringDistributed computingComputer architectureSoftware engineeringTelecommunicationsEngineeringOperating systemChannel (broadcasting)Advanced MIMO Systems OptimizationAdvanced Wireless Communication TechnologiesRadio Frequency Integrated Circuit Design