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Generalized Reinforcement Learning Fuzzy Control with Vague States

机译:含模糊状态的广义强化学习模糊控制

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This paper presents a generalized method for tuning a fuzzy logic controller based on reinforcement learning in a dynamic environment. We extend the Generalized Approximate Reasoning-base Intelligent Controller (GARIC) model of Berenji and Khedkar to be able to work in presence of vagueness in states. Similar to GARIC, the proposed architecture, i.e., Generalized Reinforcement Learning Fuzzy Controller (GRLFC), has the self-tuning capability even when only a weak reinforcement signal such a binary failure signal is available. The proposed controller shows a better performance, regarding learning speed and robustness to changes in controlled system dynamics, than similar models even in the presence of uncertainty in states.
机译:本文提出了一种在动态环境中基于强化学习的模糊控制器优化方法。我们扩展了Berenji和Khedkar的基于通用近似推理的智能控制器(GARIC)模型,使其能够在州的模糊环境下工作。与GARIC相似,即使只有微弱的增强信号(如二进制故障信号)可用,所提出的体系结构(即通用增强学习模糊控制器(GRLFC))也具有自整定能力。提出的控制器在学习速度和对受控系统动力学变化的鲁棒性方面表现出比类似模型更好的性能,即使状态不确定。

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