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QoS-Aware Rechargeable UAV Trajectory Optimization for Sensing Service

机译:感知服务的QoS感知可充电无人机轨迹优化

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Unmanned aerial vehicles (UAVs) have attracted attention from both the academic and industry because of its highly controllable mobility. The UAV has hence become a potential alternative for a large amount of geographically distributed sensors in provisioning sensing service where the information of different locations (e.g., temperature, humidity, pollutant level and traffic condition) are sensed and sent to the ground station (GS). However, the UAV on-board battery is usually limited due to the size and weight constraints, and greatly affects the UAV performance. Practically, the UAV usually needs to return to the GS for recharging before the battery exhaustion. The trajectory routes, therefore, should be well designed to meet the battery capacity constraint and improve the quality of service (QoS). In this paper, we investigate the trajectory optimization of rechargeable UAV for sensing service to minimize the task completion latency. We formulate this problem as a mixed integer linear programming (MILP) model. A Clone Searching Algorithm (CSA), which clones the rechargeable UAV into several non-rechargeable virtual UAVs and simultaneously search trajectory routes for each virtual UAV, is then designed to reduce the computational complexity of MILP. Numerical results demonstrate the performance of our proposed algorithm.
机译:由于其高度可控的机动性,无人机已引起了学术界和工业界的关注。因此,UAV已成为在提供传感服务中大量地理上分布的传感器的潜在替代方案,在传感服务中,感测到不同位置的信息(例如,温度,湿度,污染物水平和交通状况)并将其发送到地面站(GS) 。然而,无人机的机载电池通常由于尺寸和重量的限制而受到限制,并极大地影响了无人机的性能。实际上,无人机通常需要在电池耗尽之前返回GS进行充电。因此,应精心设计轨迹路线,以满足电池容量的限制并提高服务质量(QoS)。在本文中,我们研究了用于感测服务的可充电无人机的轨迹优化,以最大程度地减少任务完成的等待时间。我们将此问题表述为混合整数线性规划(MILP)模型。然后,设计了一种克隆搜索算法(CSA),该算法将可再充电的UAV克隆为几个不可再充电的虚拟UAV,并同时搜索每个虚拟UAV的轨迹路线,以降低MILP的计算复杂性。数值结果证明了我们提出的算法的性能。

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