Fuzzy control based on reinforcement learning for voice coil motor

T.S. Liu, W. Chang
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引用次数: 2

Abstract

Dealing with voice coil motors, this paper presents reinforcement learning based fuzzy control, which incorporates characteristics of reinforcement learning into fuzzy control. Fuzzy control has excellent characteristics of dealing with model uncertainty and nonlinearity. To complement and improve fuzzy control, reinforcement learning is used to process rough feedback signals. This work constructs fuzzy rules based model based on input-output data of plants and tune fuzzy membership functions by reinforcement learning
基于强化学习的音圈电机模糊控制
针对音圈电机,提出了一种基于强化学习的模糊控制方法,将强化学习的特点融入到模糊控制中。模糊控制具有处理模型不确定性和非线性的优良特性。为了补充和改进模糊控制,采用强化学习对粗糙反馈信号进行处理。本文以植物的输入输出数据为基础,构建了基于模糊规则的模型,并通过强化学习对模糊隶属函数进行了调整
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