On time-optimal behavior scheduling of robotic swarms for achieving multiple goals

S. Nagavalli, N. Chakraborty, K. Sycara
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引用次数: 4

Abstract

Robotic swarms are multi-robot systems whose global behaviors emerge from local interactions between individual robots. Each robot obeys a local control law that can be activated depending on an operator's choice of global swarm behavior. Real missions occur in uncontrolled environments with dynamically arising objectives and require combinations of behaviors. Given a library of swarm behaviors, a supervisory operator commanding the swarm must choose a sequence of behaviors to execute and their execution durations in order to accomplish a particular task during a mission composed of many tasks. In this paper, we address the following problem: given a library of swarm behaviors, the swarm initial state, the final goal and an unordered set of intermediate goals the operator wants to achieve, the objective is to identify a behavior schedule comprised of selected behaviors and associated time intervals of application of the behavior so that the total time to reach the final goal is minimized. Our contributions are as follows: (a) formalization of the problem of behavior scheduling to achieve multiple unordered goals with a robotic swarm, (b) an algorithm that produces a behavior schedule to achieve all intermediate goals and the final goal in minimum time such that the behavior durations are locally optimal and given which the goal sequence has bounded suboptimality and (c) application of this algorithm to configuration control of robot swarms.
面向多目标的机器人群体时间最优行为调度研究
机器人群是一种多机器人系统,其全局行为产生于单个机器人之间的局部相互作用。每个机器人都遵守一个局部控制律,该控制律可以根据操作者对全局群体行为的选择而激活。真正的任务发生在不受控制的环境中,有动态产生的目标,需要行为的组合。给定一个群体行为库,在由多个任务组成的任务中,指挥群体的监督操作员必须选择执行的行为序列及其执行时间,以完成特定的任务。在本文中,我们解决了以下问题:给定一个群体行为库、群体的初始状态、最终目标和一组无序的中间目标,目标是确定一个由选定的行为和行为应用的相关时间间隔组成的行为计划,以使达到最终目标的总时间最小化。我们的贡献如下:(a)行为调度问题的形式化,以实现机器人群体的多个无序目标;(b)产生行为调度的算法,以在最短时间内实现所有中间目标和最终目标,使得行为持续时间是局部最优的,并且给定目标序列具有有界次优性;(c)将该算法应用于机器人群体的配置控制。
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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