Publication:
Federated learning for channel estimation in conventional and RIS-Assisted massive Mimo

dc.contributor.coauthorElbir, Ahmet M.
dc.contributor.departmentDepartment of Electrical and Electronics Engineering
dc.contributor.kuauthorErgen, Sinem Çöleri
dc.contributor.schoolcollegeinstituteCollege of Engineering
dc.date.accessioned2024-11-09T13:13:08Z
dc.date.issued2021
dc.description.abstractMachine learning (ML) has attracted a great research interest for physical layer design problems, such as channel estimation, thanks to its low complexity and robustness. Channel estimation via ML requires model training on a dataset, which usually includes the received pilot signals as input and channel data as output. In previous works, model training is mostly done via centralized learning (CL), where the whole training dataset is collected from the users at the base station (BS). This approach introduces huge communication overhead for data collection. In this paper, to address this challenge, we propose a federated learning (FL) framework for channel estimation. We design a convolutional neural network (CNN) trained on the local datasets of the users without sending them to the BS. We develop FL-based channel estimation schemes for both conventional and RIS (intelligent reflecting surface) assisted massive MIMO (multiple-input multiple-output) systems, where a single CNN is trained for two different datasets for both scenarios. We evaluate the performance for noisy and quantized model transmission and show that the proposed approach provides approximately 16 times lower overhead than CL, while maintaining satisfactory performance close to CL. Furthermore, the proposed architecture exhibits lower estimation error than the state-of-the-art ML-based schemes.
dc.description.fulltextYES
dc.description.indexedbyWOS
dc.description.indexedbyScopus
dc.description.issue6
dc.description.openaccessYES
dc.description.publisherscopeInternational
dc.description.sponsoredbyTubitakEuN/A
dc.description.sponsorshipN/A
dc.description.versionAuthor's final manuscript
dc.description.volume21
dc.identifier.doi10.1109/TWC.2021.3128392
dc.identifier.eissn1558-2248
dc.identifier.embargoNO
dc.identifier.filenameinventorynoIR03417
dc.identifier.issn1536-1276
dc.identifier.quartileQ1
dc.identifier.scopus2-s2.0-85120546477
dc.identifier.urihttps://doi.org/10.1109/TWC.2021.3128392
dc.identifier.wos809406400051
dc.keywordsCentralized learning
dc.keywordsChannel estimation
dc.keywordsChannel estimation
dc.keywordsComputational modeling
dc.keywordsData models
dc.keywordsFederated learning
dc.keywordsMachine learning
dc.keywordsMassive MIMO
dc.keywordsMassive MIMO
dc.keywordsRadio frequency
dc.keywordsTraining
dc.keywordsWireless communication
dc.language.isoeng
dc.publisherInstitute of Electrical and Electronics Engineers (IEEE)
dc.relation.grantnoNA
dc.relation.ispartofIEEE Transactions on Wireless Communications
dc.relation.urihttp://cdm21054.contentdm.oclc.org/cdm/ref/collection/IR/id/10203
dc.subjectDistributed machine learning
dc.subjectFunction computation
dc.subjectFederated learning
dc.titleFederated learning for channel estimation in conventional and RIS-Assisted massive Mimo
dc.typeJournal Article
dspace.entity.typePublication
local.contributor.kuauthorErgen, Sinem Çöleri
local.publication.orgunit1College of Engineering
local.publication.orgunit2Department of Electrical and Electronics Engineering
relation.isOrgUnitOfPublication21598063-a7c5-420d-91ba-0cc9b2db0ea0
relation.isOrgUnitOfPublication.latestForDiscovery21598063-a7c5-420d-91ba-0cc9b2db0ea0
relation.isParentOrgUnitOfPublication8e756b23-2d4a-4ce8-b1b3-62c794a8c164
relation.isParentOrgUnitOfPublication.latestForDiscovery8e756b23-2d4a-4ce8-b1b3-62c794a8c164

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