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Modular-Fuzzy Cooperation Algorithm for Multi-agent Systems

机译:多主体系统的模块化-模糊合作算法

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摘要

The application of reinforcement learning to multi-agent systems has attracted recent attention. In multi-agent systems, the state space to be handled constitutes a major problem efficiently in learning of agents. In order to cooperate agents in the same environment, it is needed to observe and evaluate the action of other agents in the multi-agent system. This case increases the dimension of state space proportional to the number of agents, exponentially. This paper presents a novel approach to overcome this problem. The approach uses together the advantages of the modular architecture, internal model and fuzzy logic in multi-agent systems. In our cooperation method, one agent estimates its action according to the internal model of the other agent. The internal model is acquired by the observation and evaluation of the other agent's actions. Fuzzy logic maps from input fuzzy sets, representing state space of each learning module to the output fuzzy sets representing the action space. The fuzzy rule base of each learning module is built through the Q-learning. Experimental results handled on pursuit domain show the effectiveness and applicability of the proposed approach.
机译:强化学习在多主体系统中的应用引起了近期的关注。在多主体系统中,要处理的状态空间有效地构成了主体学习中的主要问题。为了在同一环境中协作代理,需要观察和评估多代理系统中其他代理的行为。这种情况会成比例地增加与代理数量成比例的状态空间尺寸。本文提出了一种新颖的方法来克服此问题。该方法结合了多主体系统中模块化体系结构,内部模型和模糊逻辑的优势。在我们的合作方法中,一个代理根据另一个代理的内部模型来估计其行为。通过观察和评估其他代理的行为来获取内部模型。模糊逻辑从代表每个学习模块状态空间的输入模糊集到代表动作空间的输出模糊集映射。每个学习模块的模糊规则库都是通过Q学习建立的。在追踪域上进行的实验结果表明了该方法的有效性和适用性。

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