无人机协同计算卸载:一种无线电与计算资源联合分配方法

Shichao Zhu, Lin Gui, Jiacheng Chen, Qi Zhang, Ning Zhang
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引用次数: 25

摘要

近年来,由于无人机技术和法规的日趋成熟,无人机的研究和应用日趋繁荣。大量的无人机将部署在城市,承担环境监测和安全监视等任务。对于那些计算密集型任务,由于无人机的电池寿命和计算资源有限,机载执行可能导致效率低下和不可持续性。为此,本文采用协同移动边缘计算,既可以降低能耗,又可以降低任务执行延迟。无人机计算卸载的目的是借助协同边缘服务器共同优化能量和延迟。通过凸优化获得最节能的卸载数据率,并通过基于模拟退火的粒子群优化(SAPSO)获得满足延迟约束的最优数据分配方案。仿真结果验证了所提出的无人机计算卸载策略的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cooperative Computation Offloading for UAVs: A Joint Radio and Computing Resource Allocation Approach
Research and applications of unmanned aerial vehicles (UAVs) are becoming increasingly prosperous in these years due to the maturity of the aircraft technology and regulations. A large amount of UAVs are to be deployed in cities to undertake tasks such as environment monitoring and security surveillance. For those computation-intensive tasks, on-board execution can lead to inefficiency and unsustainability due to the limited battery life and computing resources of UAVs. To this end, this paper adopts cooperative mobile edge computing such that energy consumption and task execution latency can both be reduced. The computation offloading for UAVs aims to optimize the energy and latency jointly with the help of cooperative edge servers. We obtain the most energy efficient offloading data rate by convex optimization and obtain the optimal data allocation scheme to meet the latency constraint by simulated annealing based particle swarm optimization (SAPSO). Simulation results validate the efficiency of the proposed UAV computation offloading strategy.
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