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Cooperative behavior acquisition mechanism for a multi-robot system based on reinforcement learning in continuous space

机译:连续空间中基于强化学习的多机器人系统协同行为获取机制

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This paper describes an approach to controlling an autonomous multi-robot system. One of the most important issues for this type of system is how to design an on-line autonomous behavior acquisition mechanism which is capable of developing each robot's role in an embedded environment. Our approach is applying reinforcement learning that uses Bayesian discrimination method for segmenting the continuous state and action spaces simultaneously. In addition to this, neural networks are provided for predicting the other robots' moves at the next time step in order to support the learning in a dynamic environment that originates from the other learning robots. The output signals are utilized as the sensory information for the reinforcement learning to increase the stability of the learning problem. A homogeneous multi-robot system is built for evaluation.
机译:本文介绍了一种控制自主多机器人系统的方法。这种系统最重要的问题之一是如何设计一种在线自主行为获取机制,该机制能够在嵌入式环境中发展每个机器人的角色。我们的方法是应用强化学习,该学习使用贝叶斯判别方法同时对连续状态空间和动作空间进行分段。除此之外,还提供了神经网络,用于预测下一时间步长的其他机器人的运动,以支持在源自其他学习机器人的动态环境中进行学习。输出信号被用作增强学习的感觉信息,以增加学习问题的稳定性。建立了同类的多机器人系统进行评估。

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