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An Analysis of Reinforcement Learning Applied to Coach Task in IEEE Very Small Size Soccer

机译:对IEEE非常小的足球的教练任务应用分析

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The IEEE Very Small Size Soccer (VSSS) is a robot soccer competition in which two teams of three small robots play against each other. Traditionally, a deterministic coach agent will choose the most suitable strategy and formation for each adversary's strategy. Therefore, the role of a coach is of great importance to the game. In this sense, this paper proposes an end-to-end approach for the coaching task based on Reinforcement Learning (RL). The proposed system processes the information during the simulated matches to learn an optimal policy that chooses the current formation, depending on the opponent and game conditions. We trained two RL policies against three different teams (balanced, offensive, and heavily offensive) in a simulated environment. Our results were assessed against one of the top teams of the VSSS league, showing promising results after achieving a win/loss ratio of approximately 2.0.
机译:IEEE非常小的足球(VSSS)是一种机器人足球比赛,其中三个小型机器人的两队互相竞争。传统上,确定性教练代理人将为每个敌人的战略选择最合适的策略和形成。因此,教练的作用非常重视游戏。从这个意义上讲,本文提出了一种基于钢筋学习(RL)的教练任务的端到端方法。所提出的系统在模拟匹配期间处理信息以了解选择当前形成的最佳策略,具体取决于对手和游戏条件。我们在模拟环境中训练了两个rl对三个不同的团队(平衡,冒犯,非常冒犯的攻击性)的政策。我们的结果是针对VSSS联赛的一个顶级团队评估,在实现胜利/损失比率约为2.0后呈现有希望的结果。

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