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Cooperative behavior acquisition of autonomous arm robots through reinforcement learning

机译:通过强化学习获得自主臂机器人的合作行为

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We describe a distributed approach to controlling autonomous arm robots. The robots need to acquire cooperative behaviors in order to smoothly lift an object. Each arm robot has its own reinforcement learning unit for decision-making. In investigating this task, we are primarily interested in the question of how to design a reinforcement learning control system for a multi-agent system. An applied reinforcement learning algorithm uses Bayesian discrimination method to segment continuous state and action spaces simultaneously, thereby generating of a set of effective rules. The proposed approach is examined empirically with two real arm robots. The basic dynamics of the reinforcement learning process are also analyzed.
机译:我们描述了控制自动臂机器人的分布式方法。 机器人需要获得合作行为,以便平稳地举起物体。 每个ARM机器人都有自己的加强学习单元,用于决策。 在调查这项任务时,我们主要对如何为多智能体系设计设计强化学习控制系统的问题感兴趣。 应用加强学习算法使用贝叶斯辨别方法同时分割连续状态和动作空间,从而产生一组有效规则。 拟议的方法是用两个真正的手臂机器人审查的经验。 还分析了加强学习过程的基本动态。

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