最大值和最小值
运动规划
计算机科学
障碍物
避障
路径(计算)
过程(计算)
势场
等电位
点(几何)
人工智能
机器人
领域(数学)
数学优化
数学
工程类
移动机器人
几何学
物理
电气工程
地球物理学
纯数学
法学
程序设计语言
数学分析
操作系统
政治学
作者
Tianying Xu,Haibo Zhou,Shuaixia Tan,Zhiqiang Li,Xia Ju,Yichang Peng
出处
期刊:Industrial Robot-an International Journal
[Emerald Publishing Limited]
日期:2021-10-12
卷期号:49 (2): 271-279
被引量:58
标识
DOI:10.1108/ir-06-2021-0120
摘要
Purpose This paper aims to resolve issues of the traditional artificial potential field method, such as falling into local minima, low success rate and lack of ability to sense the obstacle shapes in the planning process. Design/methodology/approach In this paper, an improved artificial potential field method is proposed, where the object can leave the local minima point, where the algorithm falls into, while it avoids the obstacle, following a shorter feasible path along the repulsive equipotential surface, which is locally optimized. The whole obstacle avoidance process is based on the improved artificial potential field method, applied during the mechanical arm path planning action, along the motion from the starting point to the target point. Findings Simulation results show that the algorithm in this paper can effectively perceive the obstacle shape in all the selected cases and can effectively shorten the distance of the planned path by 13%–41% with significantly higher planning efficiency compared with the improved artificial potential field method based on rapidly-exploring random tree. The experimental results show that the improved artificial potential field method can effectively plan a smooth collision-free path for the object, based on an algorithm with good environmental adaptability. Originality/value An improved artificial potential field method is proposed for optimized obstacle avoidance path planning of a mechanical arm in three-dimensional space. This new approach aims to resolve issues of the traditional artificial potential field method, such as falling into local minima, low success rate and lack of ability to sense the obstacle shapes in the planning process.
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