用于无人飞行器路径规划的几何避障和遗传算法 TSP 集成模型

Drones Pub Date : 2024-07-07 DOI:10.3390/drones8070302
Dipraj Debnath, F. Vanegas, Sebastien Boiteau, Felipe Gonzalez
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引用次数: 0

摘要

在本文中,我们为无人驾驶飞行器(UAV)的路径规划提出了一种创新方法,该方法结合了用于提前优化任务的先进遗传算法(GA)和用于避开优化路径上的障碍物的基于几何的避障算法(QuickNav)。所提出的方法通过实现高效避障,解决了为无人机确定覆盖多个航点的优化轨迹这一关键问题,从而提高了操作安全性和效率。这项研究强调了全局和局部路径规划方法的重要性,从而突出了无人机路径规划面临的众多挑战。为了找到最佳路线,GA 采用了多种选择方法,利用从运动捕捉系统转换而来的直角坐标系(CCS)数据优化轨迹。QuickNav 算法采用线性方程和几何方法检测障碍物,确保无人机的安全导航并防止实时碰撞。通过模拟和实际无人机飞行,证明了所提出的方法有助于减少总飞行距离和计算时间,并能在航点和障碍物数量不等的不同场景中成功实现无人机导航。这种综合方法为各种操作情况下的实际应用提供了有利的视角,并提高了无人机的自主性、安全性和效率。
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An Integrated Geometric Obstacle Avoidance and Genetic Algorithm TSP Model for UAV Path Planning
In this paper, we propose an innovative approach for the path planning of Uninhabited Aerial Vehicles (UAVs) that combines an advanced Genetic Algorithm (GA) for optimising missions in advance and a geometrically based obstacle avoidance algorithm (QuickNav) for avoiding obstacles along the optimised path. The proposed approach addresses the key problem of determining an optimised trajectory for UAVs that covers multiple waypoints by enabling efficient obstacle avoidance, thus improving operational safety and efficiency. The study highlights the numerous challenges for UAV path planning by focusing on the importance of both global and local path planning approaches. To find the optimal routes, the GA utilises multiple methods of selection to optimise trajectories using the Cartesian Coordinate System (CCS) data transformed from a motion capture system. The QuickNav algorithm applies linear equations and geometric methods to detect obstacles, guaranteeing the safe navigation of UAVs and preventing real-time collisions. The proposed methodology has been proven useful in reducing the total distance travelled and computing times and successfully navigating UAVs across different scenarios with varying numbers of waypoints and obstacles, as demonstrated by simulations and real-world UAV flights. This comprehensive approach provides advantageous perspectives for real-world applications in a variety of operational situations and improves UAV autonomy, safety, and efficiency.
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