Unmanned Aerial Vehicle (UAV) swarms adoption shows a steady growth among operators due to the benefits in time and cost arisen from their use. However, this kind of system faces an important problem which is the calculation of many optimal paths for each UAV. Solving this problem would allow a to control many UAVs without human intervention at the same time while saving battery between recharges and performing several tasks simultaneously. The main aim is to develop a system capable of calculating the optimal flight path for a UAV swarm. The aim of these paths is to achieve full coverage of a flight area for tasks such as field prospection. All this, regardless of the size of maps and the number of UAVs in the swarm. It is not necessary to establish targets or any other previous knowledge other than the given map. Experiments have been conducted to determine whether it is optimal to establish a single control for all UAVs in the swarm or a control for each UAV. The results show that it is better to use one control for all UAVs because of the shorter flight time. In addition, the flight time is greatly affected by the size of the map. The results give starting points for future research such as finding the optimal map size for each situation.
翻译:无人驾驶航空飞行器(无人驾驶飞行器)群集的采用表明,由于时间的效益和使用成本产生的效益,操作者之间稳步增长。然而,这种系统面临一个重要问题,即如何计算每个无人驾驶飞行器的许多最佳路径。解决这个问题将允许在没有人为干预的情况下同时控制许多无人驾驶航空器,同时在补给和同时执行若干任务之间节省电池。主要目的是开发一个能够计算无人驾驶飞行器群集的最佳飞行路径的系统。这些路径的目的是为了实现飞行区域的全面覆盖,以便完成实地前景等任务。所有这一切,无论地图大小和暖气中的无人驾驶飞行器数目如何。除了给定的地图之外,没有必要设定目标或以往任何其他知识。已经进行了实验,以确定是否最佳地为所有无人驾驶飞行器群群中的所有无人驾驶飞行器建立单一的控制,还是对每个无人驾驶飞行器的控制。结果显示,由于飞行时间较短,所有无人驾驶飞行器都最好使用一种控制。此外,飞行时间因每个飞行时间的大小而大大地影响到地图的最佳位置。