Obstacle-Avoidance Path Planning of Robot Arm Based on Improved RRT Algorithm

Chong Hu, Chunyang Mu, Ma Xing, C. Zhang, Wenya Zhou, Ke Yang
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Abstract

In the application of RRT (Rapidly-exploring Random Trees) algorithm in obstacle avoidance path planning of redundant robot arms in high-dimensional space, the sampling area of random sampling points is large, the search time is long, the path twists and turns, and the redundant points are too many. In this paper, an efficient sampling RRT algorithm with adaptive step size and fast automatic convergence is proposed. Firstly, by adding the optimized gravity function, the step size of the extended tree is changed adaptively and the convergence is stronger. Secondly, the limited sampling of parent node area expansion is proposed to avoid useless point sampling and repeated point sampling, so that the utilization of sampling points is greatly improved. Finally, by changing the way of parent node reconnection and re-selection, the path tortuous degree is lower, the path planning cost and redundancy points are reduced, and MATLAB software is used to carry out the path planning simulation experiment. By comparing RRT, gravitational field RTT and RRT* algorithm, the improved RRT algorithm has significantly improved in distance, time and number of nodes. It has important engineering application value.
基于改进RRT算法的机械臂避障路径规划
RRT(快速探索随机树)算法在高维空间冗余机械臂避障路径规划中的应用,存在随机采样点采样面积大、搜索时间长、路径曲折、冗余点过多等问题。本文提出了一种自适应步长和快速自动收敛的高效采样RRT算法。首先,通过加入优化后的重力函数,使扩展树的步长自适应变化,收敛性强;其次,提出了父节点区域扩展的有限采样,避免了无用的点采样和重复的点采样,大大提高了采样点的利用率;最后,通过改变父节点重连接和重选择的方式,降低了路径曲折程度,减少了路径规划成本和冗余点,并利用MATLAB软件进行了路径规划仿真实验。通过对比RRT、引力场RTT和RRT*算法,改进后的RRT算法在距离、时间和节点数量上都有显著提高。具有重要的工程应用价值。
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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