基于强化学习方法的足球机器人多智能体联合动作优化

S. C. Sari, Kuspriyanto, A. Prihatmanto
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引用次数: 1

摘要

为了完成一些任务以达到某个共同目标,智能体需要做出一系列必须作为群体执行的决策。决策是基于可用操作的选择机制做出的。选择任意的行动会导致时间和精力的浪费,因为并不是所有的行动都是最优的。代理不仅需要决定哪一个单独的行动将导致最优的性能,而且还需要决定他们的联合行动。在多智能体的学习过程中应用强化学习,给出了一系列最优联合动作,智能体之间基于此最优联合动作的协作保证了最快的时间达到目标。
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Joint action optimation for robotic soccer multiagent using reinforcement learning method
In order to fulfill some tasks to reach a certain common goal, agents need to make sequence of decisions they have to perform as agroup. The decision is taken based on a selection mechanism of available actions. Choosing arbitrary action will lead to time and energy waste, since not all actions are even optimum. Agents need to decide not only which individual action that will lead to optimum performance, but also their joint actions. Applying reinforcement learning in the multiagent's learning process gives a sequence of optimum joint actions, which collaboration of agents based on this optimum joint actions guarantees the fastest time to reach their goal.
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