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Obstacle Avoidance Path Planning Based on Improved APF and RRT

机译:基于改进的APF和RRT的障碍避免路径规划

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摘要

In recent years, collaborative robots have been widely used in the field of intelligent manufacturing. Obstacle avoidance path planning, as a key technology of collaborative robots in motion planning, is becoming more and more important. In order to solve the shortcomings of APF easily falling into local minimums and the shortcomings of RRT's strong randomness, this paper improves and combines these two algorithms. Firstly, artificial potential field algorithm is used in local obstacle avoidance path planning. When falling into local minimum, the improved RRT algorithm can adaptively select the temporary target point and make the search process jump out of the local minimum point. In addition, artificial potential field algorithm will be applied when the robot arm leaves the local minimum. Finally, we use a greedy algorithm to remove redundant nodes in the path. Experiments show that this algorithm can greatly improve the success rate of planning and reduce planning time.
机译:近年来,合作机器人已广泛应用于智能制造领域。 障碍避免路径规划,作为运动规划中的协作机器人的关键技术,变得越来越重要。 为了解决APF的缺点容易陷入本地最低限度和RRT的强烈随机性的缺点,本文改进并结合了这两种算法。 首先,在局部障碍避免路径规划中使用人工潜在场算法。 当落入局部最小值时,改进的RRT算法可以自适应地选择临时目标点并使搜索过程跳出局部最小点。 此外,当机器人臂离开局部最小值时,将应用人工潜在场算法。 最后,我们使用贪婪算法删除路径中的冗余节点。 实验表明,该算法可以大大提高规划成功率和降低规划时间。

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