Multi-Agent Open Framework: Developing a Holistic System to Solve MAPF (Student Abstract)

Enrico Saccon
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Abstract

Automation in industries is becoming an ever-increasing necessity, especially in the sector of logistics. In many cases, this means having many different automated guided vehicles (AGVs) moving at the same time, hence needing coordination to avoid conflicts between different agents. The problem of organizing a fleet of autonomous robots is known as the Multi-Agent Path Finding (MAPF) problem in the literature for which several optimal and sub-optimal algorithms have been proposed. When faced with real-life scenarios, these algorithms must provide the best feasible solution in the shortest time possible, therefore they must scale for large scenarios and be efficient. In this work, we briefly describe our open-source framework we are working on and we lay down the research paths we are going to focus on. The goal is to develop a holistic system that allows to control different aspects of the MAPF problem, from graph topology to goal scheduling.
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多智能体开放框架:开发解决MAPF的整体系统(学生摘要)
工业自动化正成为日益增长的需求,特别是在物流领域。在许多情况下,这意味着有许多不同的自动引导车辆(agv)同时移动,因此需要协调以避免不同代理之间的冲突。组织一组自主机器人的问题被称为多智能体寻径(MAPF)问题,在文献中已经提出了几种最优和次最优算法。当面对现实场景时,这些算法必须在尽可能短的时间内提供最佳可行的解决方案,因此它们必须适用于大场景并且高效。在本文中,我们简要介绍了我们正在开发的开源框架,并列出了我们将重点关注的研究路径。目标是开发一个整体系统,允许控制MAPF问题的不同方面,从图拓扑到目标调度。
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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