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Integrated optimization of unmanned aerial vehicle task allocation and path planning under steady wind

机译:稳定风下无人机任务分配与路径规划的集成优化

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摘要

Wind has a significant effect on the control of fixed-wing unmanned aerial vehicles (UAVs), resulting in changes in their ground speed and direction, which has an important influence on the results of integrated optimization of UAV task allocation and path planning. The objective of this integrated optimization problem changes from minimizing flight distance to minimizing flight time. In this study, the Euclidean distance between any two targets is expanded to the Dubins path length, considering the minimum turning radius of fixed-wing UAVs. According to the vector relationship between wind speed, UAV airspeed, and UAV ground speed, a method is proposed to calculate the flight time of UAV between targets. On this basis, a variable-speed Dubins path vehicle routing problem (VS-DP-VRP) model is established with the purpose of minimizing the time required for UAVs to visit all the targets and return to the starting point. By designing a crossover operator and mutation operator, the genetic algorithm is used to solve the model, the results of which show that an effective UAV task allocation and path planning solution under steady wind can be provided.
机译:风对固定翼无人机的控制有重大影响,导致其地面速度和方向发生变化,这对无人机任务分配和路径规划的综合优化结果具有重要影响。该集成优化问题的目标从最小化飞行距离变为最小化飞行时间。在这项研究中,考虑到固定翼无人机的最小转弯半径,任意两个目标之间的欧几里德距离都扩展到杜宾斯路径长度。根据风速,无人机空速和无人机地面速度之间的矢量关系,提出了一种计算无人机在目标之间飞行时间的方法。在此基础上,建立了变速杜宾斯路径车辆路径问题(VS-DP-VRP)模型,其目的是最大程度地减少无人机访问所有目标并返回起点所需的时间。通过设计交叉算子和变异算子,使用遗传算法对模型进行求解,结果表明,可以提供有效的无风条件下的无人机任务分配和路径规划解决方案。

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