Resource allocation in UAV assisted air ground intelligent inspection system

Zhuoya Zhang , Fei Xu , Zengshi Qin , Yue Xie
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引用次数: 5

Abstract

With the progress of power grid technology and intelligent technology, intelligent inspection robot (IR) came into being and are expected to become the main force of substation inspection in the future. Among them, mobile edge computing provides a promising architecture to meet the explosive growth of communication and computing needs of inspection robot. Inspection robot can transmit the collected High Definition (HD) video to adjacent edge servers for data processing and state research and judgment. However, the communication constraints of long-distance transmission, high reliability and low delay pose challenges to task offloading optimization. Therefore, this paper introduced Unmanned Aerial Vehicle (UAV) and established UAV assisted mobile edge computing system. UAV assisted and mobile edge computing are combined to form edge computing nodes. In this way, it provided communication and computing services to the IR for fast data processing. Specifically, in order to optimize the system energy consumption, a resource allocation strategy based on genetic algorithm is proposed. By optimizing the offloading decision and computing resource allocation of the IRs, the computing task of the IRs are offloaded to an energy-efficient UAV. The experimental results show that the resource allocation strategy based on genetic algorithm can effectively reduce the energy consumption and cost of UAVs and IRs, and effectively realize the reasonable allocation of resources. The results verify the effectiveness and reliability of the algorithm in the real scene.

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无人机辅助地空智能巡检系统中的资源分配
随着电网技术和智能技术的进步,智能巡检机器人应运而生,并有望成为未来变电站巡检的主力军。其中,移动边缘计算为满足巡检机器人通信和计算需求的爆炸式增长提供了一个很有前景的架构。巡检机器人可以将采集到的高清视频传输到相邻的边缘服务器进行数据处理和状态研究判断。然而,远程传输、高可靠性和低时延的通信约束对任务卸载优化提出了挑战。为此,本文引入无人机(UAV),建立了无人机辅助移动边缘计算系统。将无人机辅助边缘计算与移动边缘计算相结合,形成边缘计算节点。通过这种方式,它为IR提供通信和计算服务,以实现快速数据处理。具体而言,为了优化系统能耗,提出了一种基于遗传算法的资源分配策略。通过优化无人机的卸载决策和计算资源分配,将无人机的计算任务转移到高效节能的无人机上。实验结果表明,基于遗传算法的资源分配策略可以有效地降低无人机和红外无人机的能耗和成本,有效地实现资源的合理分配。实验结果验证了该算法在真实场景中的有效性和可靠性。
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