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Research on breakthrough and innovation of UAV mission planning method based on cloud computing-based reinforcement learning algorithm

机译:基于云计算的强化学习算法的无人机任务规划方法突破与创新研究

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摘要

The UAV system has evolved in the direction of intelligence and autonomy. Mission planning is an important part of autonomous drone control. The issue of route planning and task assignment in drone mission planning is studied. For the drone path planning problem in three-dimensional static threat environment, two improved ant colony algorithms are proposed, and these prior knowledges are constructed as multiple heuristic information of ants, guiding the ant's path search, and verifying the global convergence of the algorithm. The fuzzy inference system is used to dynamically adjust the parameters of the RRT algorithm according to the real-time information of the task environment and the growth status of the RRT random tree. The experimental results show that the two improved algorithms can obtain better planning results than the single artificial potential field method and ant colony algorithm, effectively shorten the route planning time, improve the planning accuracy, and obtain the optimal flight path.
机译:UAV系统在智力和自主方向发展。任务规划是自主无人机控制的重要组成部分。研究了无人机任务规划中的路线规划和任务分配问题。对于三维静态威胁环境中的无人机路径规划问题,提出了两个改进的蚁群算法,并且这些先前知识被构造为蚂蚁的多个启发式信息,引导蚂蚁的路径搜索,并验证算法的全局收敛。模糊推理系统用于根据任务环境的实时信息和RRT随机树的生长状态来动态调整RRT算法的参数。实验结果表明,两种改进的算法可以获得比单一人工势场方法和蚁群算法更好的规划结果,有效地缩短了路线规划时间,提高了规划准确性,获得了最佳飞行路径。

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