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A Neuro-fuzzy Network with Reinforcement Learning Algorithms for Swarm Learning

机译:带有强化学习算法的群体学习神经模糊网络

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An internal model of autonomous mobile robots (agent) is proposed in this paper. A TSK-type fuzzy net is used as a classifier of environment information, i.e., the state of an agent, and reinforcement learning methods such as Q-learning, sarsa-learning are used to make multiple agents acquire adaptive behaviors. Goal navigated exploration problem was simulated to confirm the effectiveness of the proposed methods, and the results showed that the new learning methods are more efficient than actor-critic method which was proposed by our previous work.
机译:本文提出了一种自主移动机器人(智能体)的内部模型。 TSK型模糊网络被用作环境信息(即主体的状态)的分类器,并且强化学习方法(例如Q学习,sarsa学习)用于使多个主体获得自适应行为。对目标导航探索问题进行了仿真,以验证所提出方法的有效性,结果表明,新的学习方法比之前的工作提出的行为者批评方法更有效。

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