解决末端执行器约束下规划问题的高效约束方法

Yahao Wang, Zhen Li, Yanghong Li, Erbao Dong
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引用次数: 0

摘要

目的针对机器人运动规划算法在面对末端执行器约束时效率降低或失效的难题,本研究旨在提出一种新的约束方法,以提高基于采样的规划器的性能。该方法利用工作空间中的切线空间来近似约束流形模式,并将整个采样过程投射到工作空间中进行约束校正。研究结果仿真结果表明,在末端执行器约束下使用 TC 方法时,规划器的性能超过了其他方法。物理实验进一步证实,TC-规划器不会导致过大的约束误差,从而导致任务失败。此外,在机器人上进行的现场测试也证明了 TC-Planner 的有效性及其优异性能,从而提高了机器人在电力线连接任务中的自主性。 原创性/价值 本文提出了一种新的约束方法,结合快速探索随机树算法,生成满足末端执行器约束下高维机器人系统约束的无碰撞轨迹。在一系列仿真和实验测试中,在末端执行器约束条件下使用 TC 方法的规划器表现高效。在配电带电作业机器人上进行的测试也表明,TC 方法能极大地帮助机器人完成带有末端执行器约束的作业任务。这有助于机器人更高效、更自主地完成具有复杂末端执行器约束的任务,如打磨和焊接。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An efficient constraint method for solving planning problems under end-effector constraints

Purpose

In response to the challenge of reduced efficiency or failure of robot motion planning algorithms when faced with end-effector constraints, this study aims to propose a new constraint method to improve the performance of the sampling-based planner.

Design/methodology/approach

In this work, a constraint method (TC method) based on the idea of cross-sampling is proposed. This method uses the tangent space in the workspace to approximate the constrained manifold pattern and projects the entire sampling process into the workspace for constraint correction. This method avoids the need for extensive computational work involving multiple iterations of the Jacobi inverse matrix in the configuration space and retains the sampling properties of the sampling-based algorithm.

Findings

Simulation results demonstrate that the performance of the planner when using the TC method under the end-effector constraint surpasses that of other methods. Physical experiments further confirm that the TC-Planner does not cause excessive constraint errors that might lead to task failure. Moreover, field tests conducted on robots underscore the effectiveness of the TC-Planner, and its excellent performance, thereby advancing the autonomy of robots in power-line connection tasks.

Originality/value

This paper proposes a new constraint method combined with the rapid-exploring random trees algorithm to generate collision-free trajectories that satisfy the constraints for a high-dimensional robotic system under end-effector constraints. In a series of simulation and experimental tests, the planner using the TC method under end-effector constraints efficiently performs. Tests on a power distribution live-line operation robot also show that the TC method can greatly aid the robot in completing operation tasks with end-effector constraints. This helps robots to perform tasks with complex end-effector constraints such as grinding and welding more efficiently and autonomously.

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