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A Method on Dynamic Path Planning for Robotic Manipulator Autonomous Obstacle Avoidance Based on an Improved RRT Algorithm

机译:基于改进RRT算法的机器人操纵器自主避障动态路径规划方法

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摘要

In a future intelligent factory, a robotic manipulator must work efficiently and safely in a Human–Robot collaborative and dynamic unstructured environment. Autonomous path planning is the most important issue which must be resolved first in the process of improving robotic manipulator intelligence. Among the path-planning methods, the Rapidly Exploring Random Tree (RRT) algorithm based on random sampling has been widely applied in dynamic path planning for a high-dimensional robotic manipulator, especially in a complex environment because of its probability completeness, perfect expansion, and fast exploring speed over other planning methods. However, the existing RRT algorithm has a limitation in path planning for a robotic manipulator in a dynamic unstructured environment. Therefore, an autonomous obstacle avoidance dynamic path-planning method for a robotic manipulator based on an improved RRT algorithm, called Smoothly RRT (S-RRT), is proposed. This method that targets a directional node extends and can increase the sampling speed and efficiency of RRT dramatically. A path optimization strategy based on the maximum curvature constraint is presented to generate a smooth and curved continuous executable path for a robotic manipulator. Finally, the correctness, effectiveness, and practicability of the proposed method are demonstrated and validated via a MATLAB static simulation and a Robot Operating System (ROS) dynamic simulation environment as well as a real autonomous obstacle avoidance experiment in a dynamic unstructured environment for a robotic manipulator. The proposed method not only provides great practical engineering significance for a robotic manipulator’s obstacle avoidance in an intelligent factory, but also theoretical reference value for other type of robots’ path planning.
机译:在未来的智能工厂中,机械手必须在人机协作和动态非结构化环境中高效安全地工作。自主路径规划是最重要的问题,在提高机器人操纵器智能的过程中必须首先解决。在路径规划方法中,基于随机采样的快速探索随机树(RRT)算法已被广泛应用于高维机器人操纵器的动态路径规划中,尤其是在复杂环境中,因为它具有概率完整性,完美扩展,与其他规划方法相比,搜索速度更快。但是,现有的RRT算法在动态非结构化环境中的机械手路径规划中存在局限性。因此,提出了一种基于改进的RRT算法的平滑机器人RRT(S-RRT)的机械手自主避障动态路径规划方法。这种针对定向节点的方法可以扩展,并且可以大大提高RRT的采样速度和效率。提出了一种基于最大曲率约束的路径优化策略,以为机器人操纵器生成平滑且弯曲的连续可执行路径。最后,通过MATLAB静态仿真和机器人操作系统(ROS)动态仿真环境以及机器人在动态非结构化环境中进行的真实的自动避障实验,论证并验证了该方法的正确性,有效性和实用性。机械手。所提出的方法不仅为机器人在智能工厂中避障提供了重要的工程实用意义,而且为其他类型的机器人路径规划提供了理论参考价值。

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