PA-FaSTrack:计划者感知的实时保证安全规划

A. Sahraeekhanghah, Mo Chen
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引用次数: 1

摘要

由于需要在未知环境中快速做出反应,保证安全的在线轨迹规划已成为机器人研究的一个日益重要的课题。然而,由于模型的不匹配,在轨迹跟踪过程中不可避免地会产生一些误差。在本文中,我们提出了计划感知FaSTrack,或PA-FaSTrack,它通过求解跟踪误差空间中的Hamilton-Jacobi (HJ)变分不等式来提供保证的跟踪误差界(TEBs)。PA-FaSTrack对最先进的方法FaSTrack[1]进行了改进,在问题表述中考虑了规划算法隐含的运动原语。我们的方法提供了一个TEB序列,每个TEB对应于规划路径的一段。我们还对基于实时树的规划算法提出了必要的修改,以使其与提供的TEB序列兼容。通过将规划和跟踪更紧密地结合在一起,我们大大降低了与原始FaSTrack相比的保守程度,使自主系统能够安全地通过更窄的空间。我们用两个有代表性的动力系统来证明我们的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PA-FaSTrack: Planner-Aware Real-Time Guaranteed Safe Planning
Guaranteed safe online trajectory planning is becoming an increasingly important topic of robotic research, due to the need to react quickly in unknown environments. However, as a result of modelling mismatch, some error during trajectory tracking is inevitable. In this paper, we present Planner-Aware FaSTrack, or PA-FaSTrack, which provides guaranteed Tracking Error Bounds (TEBs) by solving a Hamilton-Jacobi (HJ) variational inequality in the tracking error space. PA-FaSTrack improves upon the state-of-the-art method, FaSTrack [1], by accounting for motion primitives implied by the planning algorithm in the problem formulation. Our method provides a sequence of TEBs, with each TEB corresponding to a segment of the planned path. We also propose necessary modifications to real time tree based planning algorithms in order to make them compatible with the provided TEB sequence. By integrating planning and tracking more closely together, we greatly decrease the degree of conservatism compared to the original FaSTrack, allowing the autonomous system to navigate safely through much narrower spaces. We demonstrate our method using two representative dynamical systems.
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