UAV 3D route planning algorithm based on improved RRT

Yu Liu, Zi-lv Gu, X. Bai, Bao-guo Wang, Di Wu, Guang-lin Yu
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Abstract

An improved algorithm based on fast extended random tree (RRT) was proposed to solve the 3d route planning problem of uav in complex environment. Firstly, the planning space modeling is carried out according to the threat factors of flight route. Secondly, in view of the large randomness of THE RRT algorithm, the heuristic distance function is introduced as the basis for the selection of nodes to be expanded, so as to increase the probability of nodes near the target being selected as nodes to be expanded, and improve the way of generating new nodes in the random tree to accelerate the convergence speed of the algorithm. Then, UAV dynamics constraints were incorporated into the new node to meet the flight path requirements. Finally, b-spline curve was used to optimize the smoothness of the initial route curvature discontinuity problem. Simulation results show that the improved algorithm has certain advantages in planning speed and route length, and can effectively solve the problem of UAV 3D route planning.
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基于改进RRT的无人机三维航路规划算法
针对复杂环境下无人机的三维路径规划问题,提出了一种基于快速扩展随机树(RRT)的改进算法。首先,根据航路威胁因素进行规划空间建模;其次,针对the RRT算法随机性较大的特点,引入启发式距离函数作为选择待展开节点的依据,增加了目标附近节点被选择为待展开节点的概率,并改进了随机树中新节点的生成方式,加快了算法的收敛速度。然后,将无人机动力学约束纳入新节点,以满足飞行路径要求。最后,利用b样条曲线对初始路径曲率不连续问题的平滑度进行优化。仿真结果表明,改进算法在规划速度和航路长度方面具有一定优势,能够有效解决无人机三维航路规划问题。
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