多燃料约束无人机在地面无人车上充电的协同航路规划

S. Ramasamy, Jean-Paul F. Reddinger, James M. Dotterweich, Marshal A. Childers, Pranav A. Bhounsule
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引用次数: 7

摘要

多个小型,低成本,多旋翼无人机(uav)是理想的空中监视在大区域。然而,它们有限的电池容量限制了它们在固定充电站附近的区域。一种解决方案是使用无人地面车辆(UGV)提供移动充电库。接下来的问题是寻找时间或能量最优的路径,使多燃料受限的无人机在充电时访问一组任务点,同时停止在UGV,其路径也需要确定。这是一个具有计算挑战性的组合优化问题,但可以使用启发式相对快速地解决。在本文中,我们提出了两级优化,包括:(1)通过使用K-means固定路径点,然后制定和解决旅行推销员问题(TSP)来找到UGV路径,以及(2)使用具有容量约束、时间窗口和丢失访问的车辆路由问题(VRP)公式来找到多架无人机的路径。我们使用约束编程在不到一分钟的时间内在标准台式计算机上解决了这些问题,最多可用于25个任务点和4架无人机。我们的主要观察是,增加无人机的数量减少了任务时间和加油停止,但没有减少总覆盖距离或总时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cooperative route planning of multiple fuel-constrained Unmanned Aerial Vehicles with recharging on an Unmanned Ground Vehicle
Multiple small, low cost, multi-rotor Unmanned Aerial Vehicles (UAVs) are ideal for aerial surveillance over large areas. However, their limited battery capacity restricts them to areas in proximity of stationary recharging depots. One solution is to use an Unmanned Ground Vehicle (UGV) to provide a moving recharging depot. The problem is then to find the time-or energy-optimal paths for the multiple fuel-constrained UAVs to visit a set of mission points while being recharged by stopping at the UGV, whose path also needs to be determined. This is a combinatorial optimization problem that is computationally challenging, but may be solved relatively fast using heuristics. In this paper, we present two-level optimization that involves, (1) finding a UGV path by fixing waypoints using K-means and then formulating and solving a traveling salesman problem (TSP), and (2) finding paths for the multiple UAVs using a vehicle routing problem (VRP) formulation with capacity constraints, time windows, and dropped visits. We used constraint programming to solve these problems in less than a minute on a standard desktop computer for up to 25 mission points and 4 UAVs. Our main observation is that increasing the number of UAVs decreases the mission time and refueling stops, but does not decrease the total distance covered or total time taken.
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