Multi-robot Scheduling and Path-Planning for Non-overlapping Operator Attention

S. Zanlongo, Franklin Abodo, P. Long, T. Padır, Leonardo Bobadilla
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引用次数: 6

Abstract

There is a growing need for robots to perform complex tasks autonomously. However, there remain certain tasks that cannot - or should not - be completely automated. While these tasks may require one or several operators, we can oftentimes schedule when an operator should assist. We build on our previous work to present a methodology for allocating operator attention across multiple robots while attempting to minimize the execution time of the robots involved. In this paper, we: 1) Analyze of the complexity of this problem, 2) Provide a scalable methodology for designing robot policies so that few operators can oversee many robots, 3) Describe a methodology for designing both policies and robot trajectories to permit operators to assist many robots, and 4) Present simulation and hardware experiments demonstrating our methodologies.
算子注意力不重叠的多机器人调度与路径规划
对机器人自主执行复杂任务的需求日益增长。然而,仍然有一些任务不能——或者不应该——完全自动化。虽然这些任务可能需要一个或几个操作员,但我们通常可以安排操作员何时提供帮助。我们在之前工作的基础上提出了一种方法,可以在多个机器人之间分配操作员的注意力,同时尽量减少所涉及机器人的执行时间。在本文中,我们:1)分析该问题的复杂性;2)提供一种可扩展的方法来设计机器人策略,以便少数操作员可以监督许多机器人;3)描述一种方法来设计策略和机器人轨迹,以允许操作员协助许多机器人;4)通过仿真和硬件实验来展示我们的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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