Litcius/Paper detail

Beamforming for Maximal Coverage in mmWave Drones: A Reinforcement Learning Approach

Hossein Vaezy, Mehdi Salehi Heydar Abad, Özgür Erçetin, Halim Yanıkömeroğlu, Mohammad Javad Omidi, Mohammad Mahdi Naghsh

2020IEEE Communications Letters26 citationsDOI

Abstract

Drone as a base station can provide wireless services in a variety of situations. In this letter, we employ a uniform linear array (ULA) to produce a directional beam to increase the quality of service (QoS) of users in the downlink of cellular networks. Due to the strict power limitations of a drone base station (DBS), we envision a single radio frequency (RF) chain architecture. A beamforming design methodology in an unknown environment is presented over a mmWave channel with the aim of maximizing the number of covered users while taking into account the human body blockage effects. Regarding the ambiguity of the environment, we model the problem of finding the optimal beam direction as a multi-armed bandit (MAB). Due to its fast convergence property, Thompson sampling (TS) is used for solving the MAB problem. Simulation results show that the DBS is able to find the optimal beam angle in only tens of iterations.

Topics & Concepts

BeamformingComputer scienceDroneBase stationTelecommunications linkReinforcement learningWirelessChannel (broadcasting)Quality of serviceConvergence (economics)ThroughputComputer networkMathematical optimizationReal-time computingTelecommunicationsArtificial intelligenceMathematicsGeneticsEconomic growthEconomicsBiologyUAV Applications and OptimizationEnergy Harvesting in Wireless NetworksAdvanced MIMO Systems Optimization