Fairness-Aware Task Loss Rate Minimization for Multi-UAV Enabled Mobile Edge Computing

IEEE Wireless Communications Letters(2023)

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摘要
In practical systems, a computing task generated by an Internet of Things device (IoTD) is usually given a valid period ( vap ). The tasks that cannot be executed within the vap will be dropped. The main goal of this letter is to minimize the task loss rate ( TLR ) in unmanned-air-vehicle (UAV) assisted mobile edge computing (MEC) due to the timeout. Furthermore, to ensure an equal service opportunity for the IoTDs and an equal energy consumption ( EC ) level for the UAVs, the issues of the TLR -fairness between IoTDs and the EC -fairness between UAVs are also considered. This is formulated as the mixed integer nonlinear programming (MINLP), which is difficult to be addressed by traditional methods, especially when the fast decision-making process is required. To address this problem, we present a new solution based on the multi-agent deep deterministic policy gradient (MA-DDPG) to optimize the flight trajectory, the association between the UAVs and IoTDs and the task scheduling of the IoTDs. Simulation results verify the effectiveness of the proposed MA-DDPG based algorithm.
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关键词
Mobile edge computing,multi-agent reinforcement learning,task loss rate,unmanned air vehicle
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