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Action Learning to single robot using MAS - A proposal of Agents action decision method based repeated consultation

机译:使用MAS学习单个机器人的行动 - 基于代理的代理程序的提议重复咨询

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Robots can employ a multi-agent system (MAS) as a technique to adapt to complex environments. In a MAS, numerous agents operate autonomously, but each agent is required to make decisions by considering other agents. Thus, agent cooperation is an important feature of a MAS. In this study, we focus on a MAS where the agents make connections by reinforcement learning. We propose a method that allows agents to learn and cooperate via communication. The actions of other agents are added to the state of each agent. Each agent performs virtual action selection and communicates with other agents to produce each action output.
机译:机器人可以采用多代理系统(MAS)作为适应复杂环境的技术。在一个MAS中,许多代理商自主运作,但每个代理人都需要通过考虑其他代理来做出决定。因此,代理商合作是MAS的重要特征。在这项研究中,我们专注于代理商通过加强学习结合的MAS。我们提出了一种允许代理商通过沟通学习和合作的方法。其他代理人的行为被添加到每个试剂的状态。每个代理执行虚拟操作选择并与其他代理通信以生成每个操作输出。

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