用于联合任务卸载和信道资源分配的多无人机协作边缘计算算法

Yuting Wei;Sheng Wu;Zhe Ji;Zhigang Yu;Chunxiao Jiang;Linling Kuang
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引用次数: 0

摘要

基于无人飞行器(UAV)的边缘计算是一项新兴技术,可为更广阔的区域提供快速任务处理。为了解决单个无人机计算资源有限和多无人机网络通信资源有限的问题,本文联合考虑了多无人机协同计算网络的任务卸载和无线信道分配问题,其中采用了高空平台站(HAPS)作为中继设备,用于由无人机簇头(ch-UAVs)和任务无人机(m-UAVs)组成的无人机簇之间的通信。我们提出了一种联合任务卸载和无线信道分配的算法,以最大限度地提高一段时间内的平均服务成功率(ASSR)。特别是,我们采用了带有随机扰动的模拟退火(SA)算法来优化信道分配,目的是减少干扰和最小化传输延迟。为获得最佳任务卸载策略,提出了一种多代理深度确定性策略梯度(MADDPG)。仿真结果证明了 SA 算法在信道分配中的有效性。同时,在联合考虑计算和信道资源时,与其他基准算法相比,所提出的方案有效地提高了 ASSR。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-UAV Collaborative Edge Computing Algorithm for Joint Task Offloading and Channel Resource Allocation
Unmanned aerial vehicle (UAV)-based edge computing is an emerging technology that provides fast task processing for a wider area. To address the issues of limited computation resource of a single UAV and finite communication resource in multi-UAV networks, this paper joints consideration of task offloading and wireless channel allocation on a collaborative multi-UAV computing network, where a high altitude platform station (HAPS) is adopted as the relay device for communication between UAV clusters consisting of UAV cluster heads (ch-UAVs) and mission UAVs (m-UAVs). We propose an algorithm, jointing task offloading and wireless channel allocation to maximize the average service success rate (ASSR) of a period time. In particular, the simulated annealing (SA) algorithm with random perturbations is used for optimal channel allocation, aiming to reduce interference and minimize transmission delay. A multi-agent deep deterministic policy gradient (MADDPG) is proposed to get the best task offloading strategy. Simulation results demonstrate the effectiveness of the SA algorithm in channel allocation. Meanwhile, when jointly considering computation and channel resources, the proposed scheme effectively enhances the ASSR in comparison to other benchmark algorithms.
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