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Path-guided artificial potential fields with stochastic reachable sets for motion planning in highly dynamic environments

机译:具有随机可及集的路径引导人工势场,用于高度动态环境中的运动规划

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Highly dynamic environments pose a particular challenge for motion planning due to the need for constant evaluation or validation of plans. However, due to the wide range of applications, an algorithm to safely plan in the presence of moving obstacles is required. In this paper, we propose a novel technique that provides computationally efficient planning solutions in environments with static obstacles and several dynamic obstacles with stochastic motions. Path-Guided APF-SR works by first applying a sampling-based technique to identify a valid, collision-free path in the presence of static obstacles. Then, an artificial potential field planning method is used to safely navigate through the moving obstacles using the path as an attractive intermediate goal bias. In order to improve the safety of the artificial potential field, repulsive potential fields around moving obstacles are calculated with stochastic reachable sets, a method previously shown to significantly improve planning success in highly dynamic environments. We show that Path-Guided APF-SR outperforms other methods that have high planning success in environments with 300 stochastically moving obstacles. Furthermore, planning is achievable in environments in which previously developed methods have failed.
机译:由于需要不断评估或验证计划,因此高度动态的环境对运动计划提出了特殊的挑战。但是,由于应用范围广泛,因此需要一种在移动障碍物存在的情况下进行安全规划的算法。在本文中,我们提出了一种新颖的技术,可以在具有静态障碍物和具有随机运动的多个动态障碍物的环境中提供计算有效的规划解决方案。路径引导的APF-SR的工作原理是首先应用基于采样的技术,以在存在静态障碍物的情况下识别有效的无碰撞路径。然后,将路径用作有吸引力的中间目标偏差,使用人工势场规划方法来安全地导航移动的障碍物。为了提高人工势场的安全性,使用随机可达组计算移动障碍物周围的排斥势场,该方法先前已证明可以显着提高在高度动态环境中的规划成功率。我们显示,在300个随机移动障碍物的环境中,路径引导的APF-SR优于其他方法,这些方法在规划成功方面具有很高的成功率。此外,在先前开发的方法失败的环境中可以实现计划。

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