Yang Yi-Sin, Juang Jih-Gau
Department of Communications, Navigation and Control Engineering, National Taiwan Ocean University, Keelung 20224, Taiwan.
Sensors (Basel). 2025 Apr 12;25(8):2447. doi: 10.3390/s25082447.
This study applies path planning and obstacle avoidance to drone control for conducting riverbank inspections. Given that the river's surrounding environments are often windy and filled with overgrown branches and unknown obstacles, this study improves path planning and obstacle avoidance to enable drones to complete inspection tasks using the planned optimal route. Multiple drones are used for larger-scale areas to reduce time consumption and increase efficiency. Regarding path planning, the A* algorithm is improved using a grid-based approach. For obstacle avoidance, depth cameras are installed on the drones, and the obtained images are processed by reinforcement Q-learning with a genetic algorithm to navigate around obstacles. Since maintaining formation is necessary during task execution, the leader-follower method of formation flight ensures that multiple drones can complete inspection tasks while maintaining formation.
本研究将路径规划和避障应用于无人机控制,以进行河岸检查。鉴于河流周围环境通常多风,且布满繁茂的树枝和未知障碍物,本研究改进了路径规划和避障功能,以使无人机能够使用规划好的最优路线完成检查任务。对于较大规模的区域,使用多架无人机以减少时间消耗并提高效率。在路径规划方面,采用基于网格的方法改进A*算法。对于避障,在无人机上安装深度摄像头,并通过带有遗传算法的强化Q学习对获取的图像进行处理,以绕过障碍物飞行。由于在任务执行期间保持编队是必要的,编队飞行的 leader-follower 方法可确保多架无人机在保持编队的同时完成检查任务。