Babatunji OmoniwaBoris GalkinIvana Dusparić
In this letter, we study the energy efficiency (EE) optimization of unmanned aerial vehicles (UAVs) providing wireless coverage to static and mobile ground users. Recent multi-agent reinforcement learning approaches optimise the system's EE using a 2D trajectory design, neglecting interference from nearby UAV cells. We aim to maximize the system's EE by jointly optimizing each UAV's 3D trajectory, number of connected users, and the energy consumed, while accounting for interference. Thus, we propose a cooperative Multi-Agent Decentralized Double Deep Q-Network (MAD-DDQN) approach. Our approach outperforms existing baselines in terms of EE by as much as 55– 80%.
Koteeswaran SeeranganMalarvizhi NandagopalTamilmani GovindarajuNalini ManogaranBalamurugan BalusamyShitharth Selvarajan
Babatunji OmoniwaBoris GalkinIvana Dusparić
Aijing SunChi SunJianbo DuDe Wei
Mian Muaz RazaqHuanhuan SongLimei PengPin–Han Ho