3D-AMM:用于多障碍物情况下机械手路径规划的 3D 人工矩方法

Andong Liu, Yawen Zhang, Jiayun Fu, Yuankun Yan, Wen-An Zhang
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引用次数: 0

摘要

目的针对机械手路径规划中传统算法经常陷入局部最小值或找不到可行解决方案的问题,本文提出了用于机械手末端执行器避障的三维人工力矩法(3D-AMM)。本文旨在提出一种用于机械臂末端执行器避障的三维人工力矩法(3D-AMM)。设计/方法/途径首先,采用矢量三乘法引入了在三维空间构建临时吸引点的新方法,从而产生吸引末端执行器向其移动的吸引力矩。其次,引入了距离权因子化和空间投影方法,以改进多障碍场景中排斥力矩的求解。第三,提出了一种新的运动矢量求解机制,为末端执行器提供非零速度,以解决由于维度限制而将运动矢量的求解限制在固定坐标平面的问题。 研究结果 在相同的模拟条件下,对所提出的算法与现有方法、改进的人工势场方法和快速随机树方法进行了比较分析。结果表明,3D-AMM 方法成功地规划出了轨迹更平滑的路径,并将路径长度减少了 20.03% 至 36.9%。此外,实验对比结果也证实了该方法在工业场景中避开障碍物的可行性和有效性。 原创性/价值 本文提出了一种三维-AMM 算法,用于笛卡尔空间中具有多个障碍物的机械手路径规划。该方法有效解决了人工势场法易陷入局部最小点和快速探索随机树法路径规划成功率低的问题。
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3D-AMM: a 3D artificial moment method for path planning of manipulator in multiple obstacles scenario

Purpose

In response to the issue of traditional algorithms often falling into local minima or failing to find feasible solutions in manipulator path planning. The purpose of this paper is to propose a 3D artificial moment method (3D-AMM) for obstacle avoidance for the robotic arm's end-effector.

Design/methodology/approach

A new method for constructing temporary attractive points in 3D has been introduced using the vector triple product approach, which generates the attractive moments that attract the end-effector to move toward it. Second, distance weight factorization and spatial projection methods are introduced to improve the solution of repulsive moments in multiobstacle scenarios. Third, a novel motion vector-solving mechanism is proposed to provide nonzero velocity for the end-effector to solve the problem of limiting the solution of the motion vector to a fixed coordinate plane due to dimensionality constraints.

Findings

A comparative analysis was conducted between the proposed algorithm and the existing methods, the improved artificial potential field method and the rapidly-random tree method under identical simulation conditions. The results indicate that the 3D-AMM method successfully plans paths with smoother trajectories and reduces the path length by 20.03% to 36.9%. Additionally, the experimental comparison outcomes affirm the feasibility and effectiveness of this method for obstacle avoidance in industrial scenarios.

Originality/value

This paper proposes a 3D-AMM algorithm for manipulator path planning in Cartesian space with multiple obstacles. This method effectively solves the problem of the artificial potential field method easily falling into local minimum points and the low path planning success rate of the rapidly-exploring random tree method.

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