多智能体环境下嵌入式足球智能体的模糊强化学习

A.M. Tehrani, M. Kamel, A. Khamis
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引用次数: 9

摘要

本文提出的工作旨在将模糊函数近似和强化学习相结合,以创建能够在从经验中学习的同时协调其局部和社会行为的机器人足球代理。这种同步协调和学习能力可以在提高机器人足球代理的行为使用中发挥至关重要的作用。为了实现这一目标,首先研究了单个智能体的模糊强化学习技术,然后将该技术应用于多个智能体。通过足球仿真系统进行的实验表明,该方法提高了机器人得分速度的性能。
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Fuzzy Reinforcement Learning for Embedded Soccer Agents in a Multi-Agent Context
The work presented in this paper aims at combining fuzzy function approximation and reinforcement learning in order to create robotic soccer agents that are able to coordinate their behaviours locally and socially while learning from experience. This simultaneous coordination and learning ability can play a crucial role in improving the behaviour usage of robotic soccer agents. To achieve this goal, a fuzzy reinforcement learning technique for a single agent is first examined and then this technique is applied to multiple agents. The conducted experiments through a soccer simulation system show that the performance of robot scoring speed is improved using the proposed approach.
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