Contextual Multi-Armed Bandit based Beam Allocation in mmWave V2X Communication under Blockage
Abstract
Due to its low latency and high data rates support,
mmWave communication has been an important player for vehicular communication. However, this carries some disadvantages
such as lower transmission distances and inability to transmit
through obstacles. This work presents a Contextual Multi-Armed
Bandit Algorithm based beam selection to improve connection
stability in next generation communications for vehicular networks. The algorithm, through machine learning (ML), learns
about the mobility contexts of the vehicles (location and route)
and helps the base station make decisions on which of its beam
sectors will provide connection to a vehicle. In addition, the
proposed algorithm also smartly extends, via relay vehicles, beam
coverage to outage vehicles which are either in NLOS condition
due to blockages or not served any available beam. Through a set
of experiments on the city map, the effectiveness of the algorithm
is demonstrated, and the best possible solution is presented.
Source
IEEE Vehicular Technology ConferenceURI
https://doi.org/10.1109/VTC2023-Spring57618.2023.10200248https://hdl.handle.net/20.500.12573/2095