Optimal multi-agent planning solution for a sample gathering problem

A. Burlacu, M. Kloetzer, F. Ostafi
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引用次数: 5

Abstract

This research targets the problem of automatically planning a team of mobile agents such that they collect the samples scattered throughout an environment in minimum time. Each mobile agent can carry at most one sample at a time and it can travel a maximum total distance, given by agent's available energy. The environment is assumed already abstracted to a finite graph, where a node plays the role of the deposit where the samples should be gathered. Our solution consists in several steps that lead to a formulation of the initial problem as a Mixed Integer Linear Programming one. The solution yields a plan that imposes for each agent the samples and the order for collecting them. This result is optimal from the point of view of collecting all samples in minimum time.
样本收集问题的最优多智能体规划解
本研究的目标是自动规划一个移动代理团队,使他们在最短的时间内收集分散在整个环境中的样本。每个移动智能体一次最多携带一个样本,其移动总距离由智能体的可用能量决定。假设环境已经抽象为一个有限图,其中一个节点扮演了应该收集样本的矿床的角色。我们的解决方案由几个步骤组成,这些步骤导致将初始问题表述为混合整数线性规划问题。该解决方案产生了一个计划,该计划规定了每个代理的样品和收集顺序。从在最短时间内收集所有样品的角度来看,该结果是最佳的。
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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