A New Autonomous Method of Drone Path Planning Based on Multiple Strategies for Avoiding Obstacles with High Speed and High Density

Drones Pub Date : 2024-05-16 DOI:10.3390/drones8050205
Tongyao Yang, Fengbao Yang, Dingzhu Li
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Abstract

Path planning is one of the most essential parts of autonomous navigation. Most existing works are based on the strategy of adjusting angles for planning. However, drones are susceptible to collisions in environments with densely distributed and high-speed obstacles, which poses a serious threat to flight safety. To handle this challenge, we propose a new method based on Multiple Strategies for Avoiding Obstacles with High Speed and High Density (MSAO2H). Firstly, we propose to extend the obstacle avoidance decisions of drones into angle adjustment, speed adjustment, and obstacle clearance. Hybrid action space is adopted to model each decision. Secondly, the state space of the obstacle environment is constructed to provide effective features for learning decision parameters. The instant reward and the ultimate reward are designed to balance the learning efficiency of decision parameters and the ability to explore optimal solutions. Finally, we innovatively introduced the interferometric fluid dynamics system into the parameterized deep Q-network to guide the learning of angle parameters. Compared with other algorithms, the proposed model has high success rates and generates high-quality planned paths. It can meet the requirements for autonomously planning high-quality paths in densely dynamic obstacle environments.
基于多种策略的无人机自主路径规划新方法,用于高速、高密度避障
路径规划是自主导航中最重要的部分之一。现有的工作大多基于调整角度的策略进行规划。然而,无人机在障碍物密集且高速分布的环境中很容易发生碰撞,对飞行安全构成严重威胁。为了应对这一挑战,我们提出了一种基于高速高密度避障多重策略(MSAO2H)的新方法。首先,我们建议将无人机的避障决策扩展为角度调整、速度调整和障碍清除。每个决策都采用混合行动空间建模。其次,构建障碍物环境的状态空间,为学习决策参数提供有效特征。即时奖励和终极奖励的设计平衡了决策参数的学习效率和探索最优解的能力。最后,我们创新性地在参数化深度 Q 网络中引入了干涉流体动力学系统,以指导角度参数的学习。与其他算法相比,所提出的模型具有较高的成功率,并能生成高质量的规划路径。它可以满足在密集动态障碍物环境中自主规划高质量路径的要求。
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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