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Cooperative Capture by Multi-Agent using Reinforcement Learning: Application for Security Patrol Systems

机译:使用强化学习的多助手合作捕获:安全巡逻系统的应用

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Aim of this study is to create a security patrol system which is a cooperative capturing system by using multi-agent in the building. A host computer deploys autonomous robots as agents and find the best strategy to enclose an intruder. From the view point of the pursuit problem by multi-agent, reinforcement learning theory is one of choices to find way how to enclose an intruder. In order to apply reinforcement learning theory to security patrol systems, this study introduces how to discretize patrol areas. Some RFID tags are embedded in the floor and each autonomous robot can know the location where it is by sensing RFID tags, then sends locational information to the host computer. The host computer calculates positioning of the autonomous robots based on received locational data through wireless network. We make a prototype of patrol system and show how it works in this paper.
机译:本研究的目的是创建一种安全巡逻系统,该系统是通过在建筑物中使用多代理的合作捕获系统。主计算机将自主机器人作为代理部署,并找到封闭入侵者的最佳策略。从追求问题的追求问题通过多助手,加强学习理论是找到如何封闭入侵者的选择之一。为了将加强学习理论应用于安全巡逻系统,本研究介绍了如何离散巡逻区域。一些RFID标签嵌入在地板中,每个自治机器人都可以知道通过传感RFID标签的位置,然后向主机发送位置信息。主计算机基于通过无线网络基于接收的位置数据计算自主机器人的定位。我们制作了巡逻系统的原型,并展示了它在本文中的工作原理。

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