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Heuristic Algorithms for Co-scheduling of Edge Analytics and Routes for UAV Fleet Missions

机译:用于联合安排边缘分析和UAV队列任务路线的启发式算法

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Unmanned Aerial Vehicles (UAVs) or drones are increasingly used for urban applications like traffic monitoring and construction surveys. Autonomous navigation allows drones to visit waypoints and accomplish activities as part of their mission. A common activity is to hover and observe a location using on-board cameras. Advances in Deep Neural Networks (DNNs) allow such videos to be analyzed for automated decision making. UAVs also host edge computing capability for on-board inferencing by such DNNs. To this end, for a fleet of drones, we propose a novel Mission Scheduling Problem (MSP) that co-schedules the flight routes to visit and record video at waypoints, and their subsequent on-board edge analytics. The proposed schedule maximizes the utility from the activities while meeting activity deadlines as well as energy and computing constraints. We first prove that MSP is NP-hard and then optimally solve it by formulating a mixed integer linear programming (MILP) problem. Next, we design two efficient heuristic algorithms, jsc and vrc, that provide fast sub-optimal solutions. Evaluation of these three schedulers using real drone traces demonstrate utility–runtime trade-offs under diverse workloads.
机译:无人驾驶飞行器(无人机)或无人机越来越多地用于城市应用,如交通监测和施工调查。自主导航允许无人机访问航点,并完成作为其使命的一部分的活动。常见的活动是使用板载相机悬停和观察位置。深度神经网络(DNN)的进步允许分析此类视频以进行自动化决策。无人机还通过此类DNN的载体推断使用边缘计算能力。为此,对于一个无人机,我们提出了一种新的任务调度问题(MSP),该问题共同安排航线访问和在航路点进行录制视频,以及他们随后的车载边缘分析。拟议的时间表最大化活动中的效用,同时会满足活动截止日期以及能量和计算约束。我们首先证明MSP是NP - 硬,然后通过制定混合整数线性编程(MILP)问题来最佳地解决。接下来,我们设计两种高效的启发式算法,JSC和VRC,提供快速的次优溶液。使用真正的无人机迹线评估这三个调度程序展示了在不同工作负载下的公用事业运行时权衡。

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