Litcius/Paper detail

Multi-UAV Assisted Network Coverage Optimization for Rescue Operations using Reinforcement Learning

Omar Sami Oubbati, Hakim Badis, Abderrezak Rachedi, Abderrahmane Lakas, Pascal Lorenz

202382 citationsDOI

Abstract

Mobile communication networks could make a significant difference in rescuing affected people in post-disaster scenarios. However, the existing communication infrastructures tend to be out of service in such scenarios. To solve this issue, Unmanned Aerial Vehicles (UAVs) could be launched as flying base stations to provide the required coverage to Rescue Members (RMs) and allow them to communicate and transmit crucial information through the established links. Meanwhile, with the unpredictable movements of RMs, three serious issues are affecting the deployment of UAVs: (i) the control of their mobility, (ii) their limited energy capacity, and (iii) their restricted communication ranges. Aiming to address these issues, we propose deploying an intelligent connected group of energy-efficient UAVs assisting RMs and providing them communication coverage in the long run. These requirements are satisfied using a deep reinforcement learning strategy to learn the environment dynamics and make good trajectory decisions. Simulation experiments have demonstrated the potential of our framework compared to baseline methods to provide temporary communication networks for emergency response teams during disaster relief missions.

Topics & Concepts

Reinforcement learningSoftware deploymentComputer scienceBase stationSearch and rescueBaseline (sea)TrajectoryEmergency managementTelecommunications networkReal-time computingComputer networkDistributed computingSimulationArtificial intelligenceRobotGeologyAstronomyPolitical scienceOperating systemLawPhysicsOceanographyUAV Applications and OptimizationOpportunistic and Delay-Tolerant NetworksDistributed Control Multi-Agent Systems