Machine Learning based Beamwidth Adaptation for mmWave Vehicular Communications
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info:eu-repo/semantics/closedAccessDate
2023Author
Manic, SetinderFoh, Chuan Heng
Kose, Abdulkadir
Lee, Haeyoung
Leow, Chee Yen
Chatzimisios, Periklis
Moessner, Klaus
Klaus, Moessner
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Show full item recordAbstract
The incorporation of mmWave technology
in vehicular networks has unlocked a realm of possibilities, propelling the advancement of autonomous vehicles,
enhancing interconnectedness, and facilitating communication for intelligent transportation systems (ITS).
Despite these strides in connectivity, challenges such as
high path-loss have arisen, impacting existing beam management procedures. This work aims to address this issue
by improving beam management techniques, specifically
focusing on enhancing the service time between vehicles
and base stations through adaptive mmWave beamwidth
adjustments, accomplished using a Contextual MultiArmed Bandit Algorithm. By leveraging various conditions to train the ML agent of the Contextual MultiArmed Bandit Algorithm, it seeks to learn about vehicle
mobility profiles and optimize the usage of different
antenna beamwidth settings to maximize seamless connection time. The extensive simulation results showcase
the effectiveness of an adaptive beamwidth for mobility
profiles, extending the connection time a vehicle experiences with a base station when compared to the existing
strategies.