基于mip的多机器人几何任务运动规划方法

Hejia Zhang, Shao-Hung Chan, Jie Zhong, Jiaoyang Li, Sven Koenig, S. Nikolaidis
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引用次数: 4

摘要

我们解决了同步、单调设置中的多机器人几何任务和运动规划(MR-GTAMP)问题。MR-GTAMP问题的目标是在其他可移动物体存在的情况下,将多个机器人的物体移动到目标区域。为了成功有效地执行任务,机器人必须采用智能协作策略,即决定哪个机器人应该将哪个物体移动到哪个位置,并执行协作动作,例如移交。为了赋予机器人这些协作能力,我们建议首先收集每个机器人的遮挡和可达性信息,以及两个机器人是否可以通过调用运动规划算法执行切换动作的信息。然后,我们提出了一种方法,该方法使用收集到的信息来构建一个图结构,该图结构捕获了不同对象的操作优先级,并支持混合整数程序的实现,以指导搜索高效的协同任务和运动计划。协同任务-运动计划的搜索过程基于蒙特卡罗树搜索(MCTS)搜索策略,以实现勘探-开发平衡。我们在两个具有挑战性的GTAMP领域中评估了我们的框架,并表明与两个最先进的基线相比,它可以在规划时间、最终计划长度和移动对象数量方面生成高质量的任务和运动计划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A MIP-Based Approach for Multi-Robot Geometric Task-and-Motion Planning
We address multi-robot geometric task-and-motion planning (MR-GTAMP) problems in synchronous, monotone setups. The goal of the MR-GTAMP problem is to move objects with multiple robots to goal regions in the presence of other movable objects. To perform the tasks successfully and effectively, the robots have to adopt intelligent collaboration strategies, i.e., decide which robot should move which objects to which positions, and perform collaborative actions, such as handovers. To endow robots with these collaboration capabilities, we propose to first collect occlusion and reachability information for each robot as well as information about whether two robots can perform a handover action by calling motion-planning algorithms. We then propose a method that uses the collected information to build a graph structure which captures the precedence of the manipulations of different objects and supports the implementation of a mixed-integer program to guide the search for highly effective collaborative task-and-motion plans. The search process for collaborative task-and-motion plans is based on a Monte-Carlo Tree Search (MCTS) exploration strategy to achieve exploration-exploitation balance. We evaluate our framework in two challenging GTAMP domains and show that it can generate high-quality task-and-motion plans with respect to the planning time, the resulting plan length and the number of objects moved compared to two state-of-the-art baselines.
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