Optimizing channel capacity for B5G with deep learning approaches in MISO-NOMA-HBF and BFNN

dc.contributor.authorMasud M.A.
dc.contributor.authorAl Amin A
dc.contributor.authorIslam Md.S.
dc.contributor.authorMostafa V.
dc.contributor.authorWahiduzzaman Md.
dc.date.accessioned2025-04-10T05:50:49Z
dc.date.issued2024-10-01
dc.description.abstractThis study proposes the integration of a beamforming neural network (BFNN) and multiple-input single-output based non-orthogonal multiple access (MISO-NOMA) with hybrid beamforming (HBF) for cell edge users (CEU) in a millimeter wave (mmWave)-based beyond 5G cellular communication system. This system is referred to as MISO-NOMA-HBFBFNN. The proposed scheme has been implemented to support multiple users simultaneously and also to considerably enhance and significantly improve the overall the sum channel capacity (SC) and user channel capacities. Additionally, the simulation results demonstrate the superiority of the proposed MISO-NOMA-HBF-BFNN scheme over the existing MISO-NOMA with HBF and MISO-OMA with HBFBFNN based schemes in terms of user capacities and SC.
dc.identifier.citationMasud, M. A., Al Amin, A., Islam, M. S., Mostafa, V., & Wahiduzzaman, M. (2024).
dc.identifier.issn25024752
dc.identifier.urihttp://dspace.uttarauniversity.edu.bd:4000/handle/123456789/135
dc.language.isoen
dc.publisherInstitute of Advanced Engineering and Science
dc.subjectBeamforming neural network
dc.subjectBeyond 5G
dc.subjectDeep learning
dc.subjectHybrid beamforming
dc.subjectNon-orthogonal multiple access
dc.subjectSum capacity
dc.subjectUser capacity
dc.titleOptimizing channel capacity for B5G with deep learning approaches in MISO-NOMA-HBF and BFNN
dc.typeArticle

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