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Aerial Refueling: Scheduling Wireless Energy Charging for UAV Enabled Data Collection

Kun Zhu, Jia Yang, Yang Zhang, Jiangtian Nie, Wei Yang Bryan Lim, Hongliang Zhang, Zehui Xiong

2022IEEE Transactions on Green Communications and Networking62 citationsDOI

Abstract

The working scope and working time of small size unmanned aerial vehicles (UAVs) are limited because of the limited battery capacity. In this work, inspired by aerial refueling for aircrafts, we propose a wireless power transmission (WPT) scheme by categorizing the UAVs into charging UAV (CUAV) and mission UAV (MUAV) for charging UAVs without interrupting the mission. In the proposed aerial refueling scheme, mission UAVs (MUAV) can be recharged by charging UAVs on the fly and operate in a perpetual manner. The feasibility of aerially wireless charging for small UAVs is firstly discussed and evaluated. Then we consider a practical application scenario of multiple MUAVs for collecting data from several points of interest, where the MUAVs are recharged by CUAVs. Accordingly, the issue of scheduling the flying path and charging process of each CUAV to minimize the mission time arises. Deep reinforcement learning (DRL) based algorithms for scheduling both single and multiple CUAVs are proposed and deployed. Extensive simulation evaluations demonstrate that, by applying the proposed aerial refueling scheme, CUAVs can explore and optimize the scheduling strategies, thereby improving the system performance in terms of mission completion and charging efficiency.

Topics & Concepts

Scheduling (production processes)Computer scienceReal-time computingWirelessDroneBattery capacityScheme (mathematics)Battery (electricity)Power (physics)EngineeringTelecommunicationsOperations managementMathematicsQuantum mechanicsGeneticsPhysicsBiologyMathematical analysisUAV Applications and OptimizationEnergy Harvesting in Wireless NetworksOrgan Donation and Transplantation