UAV Swarm Real-Time Rerouting by Edge Computing under a Changing Environment

Meng-Tse Lee, Sih-Tse Kuo, Yan-Ru Chen, Ming-Lung Chuang
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Abstract

To allow UAVs to equip a higher level of autonomous control, this research uses edge computing systems to replace the ground control station commonly used to control UAVs. Since the GCS belongs to the central control architecture, the edge computing system of the distributed architecture gives the drones more flexibility in dealing with changing environmental conditions, allowing them to autonomously and instantly plan their flight path, fly in formation, or even avoid obstacles. Broadcast communications are used to realize UAV-to-UAV communications for allocating tasks among a swarm of UAVs and ensuring each individual collaborates as an integrated member of the group. The dynamic path programming problem for the UAV swarm mission uses a 2-phase Tabu search with the 2-Opt exchange method and A* search as the path programming algorithm. Distance is taken as a cost function for path programming. We then increase and expand the turning-points of no-fly zones based on drone fleet coverage, thus preventing drones from entering prohibited areas. Whereas previous work mostly only considers single no-fly zones, this approach accounts for multiple restricted areas, ensuring that a UAV swarm can complete its assigned task without violating no-fly zones. A drone encountering an obstacle while traveling along the route set by the algorithm will update the map information in real-time, allowing for an instant recharting of the optimal path to the goal as a reverse search using the D* Lite algorithm.
变化环境下基于边缘计算的无人机群实时重路由
为了使无人机具备更高层次的自主控制能力,本研究采用边缘计算系统取代常用的地面控制站来控制无人机。由于GCS属于中央控制架构,分布式架构的边缘计算系统使无人机在应对不断变化的环境条件时具有更大的灵活性,可以自主、即时地规划飞行路线、编队飞行,甚至避开障碍物。利用广播通信实现无人机间的通信,在无人机群中分配任务,保证每一个个体作为一个整体协同工作。针对无人机群任务的动态路径规划问题,采用基于2-Opt交换法的两阶段禁忌搜索和a *搜索作为路径规划算法。将距离作为路径规划的代价函数。然后,我们根据无人机编队的覆盖范围增加和扩大禁飞区的转折点,从而防止无人机进入禁飞区。以往的工作大多只考虑单个禁飞区,而该方法考虑了多个限制区域,确保了无人机群在不违反禁飞区的情况下完成分配的任务。当无人机沿着算法设定的路线飞行时遇到障碍物,将实时更新地图信息,允许使用D* Lite算法进行反向搜索,立即重新绘制到达目标的最佳路径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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