Details
Title
MIMO Beam Selection in 5G Using Neural NetworksJournal title
International Journal of Electronics and TelecommunicationsYearbook
2021Volume
vol. 67Issue
No 4Affiliation
Ruseckas, Julius : Baltic Institute of Advanced Technology, Vilnius, Lithuania ; Molis, Gediminas : Baltic Institute of Advanced Technology, Vilnius, Lithuania ; Bogucka, Hanna : Institute of Radiocommunications, Poznan University of Technology, Poznan, PolandAuthors
Keywords
5G ; context information ; MIMO beam orientation ; machine learning ; neural networksDivisions of PAS
Nauki TechniczneCoverage
693-698Publisher
Polish Academy of Sciences Committee of Electronics and TelecommunicationsBibliography
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