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UAV-Assisted Resource Allocation Strategy in Energy Harvesting Edge Computing System

机译:能源收集边缘计算系统中的无人辅助资源分配策略

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Aiming at the problem that the computing tasks requested by user equipments of (UEs) exceed the computing capacity of mobile edge computing (MEC) server in the ground base station (BS), an unmanned aerial vehicle (UAV)-assisted resource allocation strategy is proposed in this paper. By deploying a UAV carried with an MEC server, when the computing tasks requested by the UEs are beyond the computing capacity of the ground BS MEC server, the UEs can offload the extra computing tasks to the UAV. The resource allocation problem is formulated as a nonlinear programming problem by jointly optimizing transmitting power, system bandwidth, and computing resources. The objective is to minimize system energy consumption while satisfying the constraints of energy consumption, computing resource, and transmitting power. Genetic algorithm (GA) and nonlinear programming methods are combined to obtain the optimal solution to the formulated optimization problem. Simulation results demonstrate that the system energy consumption can be reduced to some extent under our proposed approach compared with the traditional GA and the partial fixed power, system bandwidth, or computing resources method based on GA and nonlinear programming.
机译:针对(UE)的用户设备所要求的计算任务超过地面基站(BS)中的移动边缘计算(MEC)服务器的计算能力,无人驾驶飞行器(UAV)译本资源分配策略是本文提出。通过使用MEC服务器携带的UAV,当UE所要求的计算任务超出了地面BS MEC服务器的计算能力时,UE可以将额外的计算任务卸载到UAV。通过共同优化发射功率,系统带宽和计算资源,将资源分配问题作为非线性编程问题。目的是最小化系统能耗,同时满足能耗,计算资源和发射功率的约束。组合遗传算法(GA)和非线性编程方法,以获得制定优化问题的最佳解决方案。仿真结果表明,与传统的GA和部分固定电源,系统带宽或基于GA和非线性编程的计算资源方法相比,可以在一定程度上降低系统能量消耗。

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