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Stable reinforcement learning with recurrent neural networks

Stable reinforcement learning with recurrent neural networks
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摘要 In this paper,we present a technique for ensuring the stability of a large class of adaptively controlled systems.We combine IQC models of both the controlled system and the controller with a method of filtering control parameter updates to ensure stable behavior of the controlled system under adaptation of the controller.We present a specific application to a system that uses recurrent neural networks adapted via reinforcement learning techniques.The work presented extends earlier works on stable reinforcement learning with neural networks.Specifically,we apply an improved IQC analysis for RNNs with time-varying weights and evaluate the approach on more complex control system. In this paper,we present a technique for ensuring the stability of a large class of adaptively controlled systems.We combine IQC models of both the controlled system and the controller with a method of filtering control parameter updates to ensure stable behavior of the controlled system under adaptation of the controller.We present a specific application to a system that uses recurrent neural networks adapted via reinforcement learning techniques.The work presented extends earlier works on stable reinforcement learning with neural networks.Specifically,we apply an improved IQC analysis for RNNs with time-varying weights and evaluate the approach on more complex control system.
出处 《控制理论与应用(英文版)》 EI 2011年第3期410-420,共11页
基金 supported by the National Natural Science Foundation (No.0245291)
关键词 Stability analysis Integral quadratic constraint Recurrent neural network Reinforcement learning Linear matrix inequality Stability analysis Integral quadratic constraint Recurrent neural network Reinforcement learning Linear matrix inequality
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参考文献20

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