A Literature Survey on AI-Aided Beamforming and Beam Management for 5G and 6G Systems.

Davi da Silva Brilhante, Joanna Carolina Manjarres, Rodrigo Moreira, Lucas de Oliveira Veiga, José F de Rezende, Francisco Müller, Aldebaro Klautau, Luciano Leonel Mendes, Felipe A P de Figueiredo
Author Information
  1. Davi da Silva Brilhante: Laboratory for Modeling, Analysis, and Development of Networks and Computer Systems (LAND), Federal University of Rio de Janeiro (UFRJ), Rio de Janeiro 21941-901, RJ, Brazil. ORCID
  2. Joanna Carolina Manjarres: Laboratory for Modeling, Analysis, and Development of Networks and Computer Systems (LAND), Federal University of Rio de Janeiro (UFRJ), Rio de Janeiro 21941-901, RJ, Brazil. ORCID
  3. Rodrigo Moreira: Institute of Exact and Technological Sciences (IEP), Federal University of Viçosa (UFV), Rio Paranaíba 38810-000, MG, Brazil. ORCID
  4. Lucas de Oliveira Veiga: Institute of Systems Engineering and Information Technology, Federal University of Itajubá, Itajubá 37500-903, MG, Brazil. ORCID
  5. José F de Rezende: Laboratory for Modeling, Analysis, and Development of Networks and Computer Systems (LAND), Federal University of Rio de Janeiro (UFRJ), Rio de Janeiro 21941-901, RJ, Brazil. ORCID
  6. Francisco Müller: LASSE-5G and IoT Research Group, Federal University of Pará (UFPA), Belém 66075-110, PA, Brazil. ORCID
  7. Aldebaro Klautau: LASSE-5G and IoT Research Group, Federal University of Pará (UFPA), Belém 66075-110, PA, Brazil. ORCID
  8. Luciano Leonel Mendes: National Institute of Telecommunications (INATEL), Santa Rita do Sapucaí 37540-000, MG, Brazil. ORCID
  9. Felipe A P de Figueiredo: National Institute of Telecommunications (INATEL), Santa Rita do Sapucaí 37540-000, MG, Brazil. ORCID

Abstract

Modern wireless communication systems rely heavily on multiple antennas and their corresponding signal processing to achieve optimal performance. As 5G and 6G networks emerge, beamforming and beam management become increasingly complex due to factors such as user mobility, a higher number of antennas, and the adoption of elevated frequencies. Artificial intelligence, specifically machine learning, offers a valuable solution to mitigate this complexity and minimize the overhead associated with beam management and selection, all while maintaining system performance. Despite growing interest in AI-assisted beamforming, beam management, and selection, a comprehensive collection of datasets and benchmarks remains scarce. Furthermore, identifying the most-suitable algorithm for a given scenario remains an open question. This article aimed to provide an exhaustive survey of the subject, highlighting unresolved issues and potential directions for future developments. The discussion encompasses the architectural and signal processing aspects of contemporary beamforming, beam management, and selection. In addition, the article examines various communication challenges and their respective solutions, considering approaches such as centralized/decentralized, supervised/unsupervised, semi-supervised, active, federated, and reinforcement learning.

Keywords

References

  1. Nature. 2015 May 28;521(7553):436-44 [PMID: 26017442]
  2. Sensors (Basel). 2020 Jan 17;20(2): [PMID: 31963514]
  3. Sensors (Basel). 2023 Feb 08;23(4): [PMID: 36850518]
  4. Sensors (Basel). 2021 Dec 31;22(1): [PMID: 35009848]
  5. Sensors (Basel). 2021 Apr 25;21(9): [PMID: 33923062]

Word Cloud

Created with Highcharts 10.0.0beamformingbeammanagement5G6GlearningselectioncommunicationantennassignalprocessingperformanceintelligencemachineremainsarticleModernwirelesssystemsrelyheavilymultiplecorrespondingachieveoptimalnetworksemergebecomeincreasinglycomplexduefactorsusermobilityhighernumberadoptionelevatedfrequenciesArtificialspecificallyoffersvaluablesolutionmitigatecomplexityminimizeoverheadassociatedmaintainingsystemDespitegrowinginterestAI-assistedcomprehensivecollectiondatasetsbenchmarksscarceFurthermoreidentifyingmost-suitablealgorithmgivenscenarioopenquestionaimedprovideexhaustivesurveysubjecthighlightingunresolvedissuespotentialdirectionsfuturedevelopmentsdiscussionencompassesarchitecturalaspectscontemporaryadditionexaminesvariouschallengesrespectivesolutionsconsideringapproachescentralized/decentralizedsupervised/unsupervisedsemi-supervisedactivefederatedreinforcementLiteratureSurveyAI-AidedBeamformingBeamManagementSystemsMIMOartificial

Similar Articles

Cited By