Prioritized Multi-agent Path Finding for Differential Drive Robots

K. Yakovlev, A. Andreychuk, Vitaly Vorobyev
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引用次数: 18

Abstract

Methods for centralized planning of the collision-free trajectories for a fleet of mobile robots typically solve the discretized version of the problem and rely on numerous simplifying assumptions, e.g. moves of uniform duration, cardinal only translations, equal speed and size of the robots etc., thus the resultant plans can not always be directly executed by the real robotic systems. To mitigate this issue we suggest a set of modifications to the prominent prioritized planner - AA-SIPP(m) - aimed at lifting the most restrictive assumptions (syncronized translation only moves, equal size and speed of the robots) and at providing robustness to the solutions. We evaluate the suggested algorithm in simulation and on differential drive robots in typical lab environment (indoor polygon with external video-based navigation system). The results of the evaluation provide a clear evidence that the algorithm scales well to large number of robots (up to hundreds in simulation) and is able to produce solutions that are safely executed by the robots prone to imperfect trajectory following. The video of the experiments can be found at https://youtu.be/Fer_irn4BG0.
差分驱动机器人的优先多智能体寻径
移动机器人群的无碰撞轨迹集中规划方法通常是解决问题的离散化版本,并依赖于许多简化的假设,例如运动时间均匀,仅基数平移,机器人的速度和大小等,因此所得计划并不总是由实际机器人系统直接执行。为了缓解这一问题,我们建议对突出的优先规划器AA-SIPP(m)进行一系列修改,旨在解除最具限制性的假设(同步平移,机器人的大小和速度相等),并为解决方案提供鲁棒性。我们在典型的实验室环境(室内多边形和外部基于视频的导航系统)中对所建议的算法进行了仿真和差动驱动机器人的评估。评估的结果提供了一个明确的证据,表明该算法可以很好地扩展到大量的机器人(模拟中多达数百个),并且能够产生解决方案,这些解决方案可以由容易出现不完美轨迹跟随的机器人安全执行。实验视频可以在https://youtu.be/Fer_irn4BG0上找到。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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