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Looking before Crossing: An Optimal Algorithm to Minimize UAV Energy by Speed Scheduling with a Practical Flight Energy Model

机译:穿越前的展望:一种通过实用的飞行能量模型进行速度调度以最小化无人机能量的最佳算法

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Unmanned aerial vehicles (UAVs) are being widely used in wireless communication, e.g., collecting data from ground nodes (GNs), where energy is critical. Existing works combine speed scheduling, i.e., the controlling of speed, with trajectory design for UAVs, making it complicated to solve while loses focus on the fundamental nature of speed scheduling. We focus on speed scheduling by considering straight line flights, with applications in monitoring power transmission lines, roads, water/oil/gas pipes and rivers/coasts. By real-world flight tests, we disclose a speed-related flight energy consumption model, distinct from typical distance-related or duration-related models. Based on such a practical energy model, we develop the looking before crossing (virtual rooms) algorithm, where virtual rooms on the time-distance diagram represent the spatio-temporal constraint of GNs in wireless transmission. This algorithm is proved to be optimal in solving the offline problem, where all information is known before scheduling. For the online problem, i.e., GN information is not unavailable unless flies close, we propose an offline-inspired online heuristic. Simulation shows its performance is near the offline optimal. Our study on the practical flight energy model and speed scheduling sheds light on a new research direction on UAV-aided wireless communication.
机译:无人驾驶飞行器(无人机)广泛用于无线通信,例如,从地面节点(GNS)收集数据,其中能量至关重要。现有的工作组合速度调度,即速度控制,具有用于无人机的轨迹设计,使其变得复杂,而失去焦点速度调度的基本性质。我们通过考虑直线航班,在监控电力传输线,道路,水/油/煤气管和河岸/海岸的应用中,专注于速度调度。通过现实世界的飞行测试,我们披露了一种与典型的距离相关或持续时间相关模型不同的速度相关的飞行能耗模型。基于这种实用能源模型,我们开发了在交叉路口(虚拟房间)算法之前,在时间距离图上的虚拟房间代表了无线传输中GNS的时空约束。在解决离线问题时,该算法被证明是最佳的,其中所有信息在调度之前都知道。对于在线问题,即,除非苍蝇关闭,否则GN信息并不可用,我们提出了一个脱机启发的在线启发式。仿真显示其性能在离线最佳状态附近。我们对实际飞行能源模型的研究和速度调度揭示了对无人机无线通信的新研究方向。

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