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ICPR
2006
IEEE

Control Double Inverted Pendulum by Reinforcement Learning with Double CMAC Network

14 years 6 months ago
Control Double Inverted Pendulum by Reinforcement Learning with Double CMAC Network
To accelerate the learning of reinforcement learning, many types of function approximation are used to represent state value. However function approximation reduces the accuracy of state value, and brings difficulty in the convergence. To solve the problems of tradeoff between the generalization and accuracy in reinforcement learning, we represent state-action value by two CMAC networks with different generalization parameters. The accuracy CMAC network can represent values exactly, which achieves precise control in the states around target area. And the generalization CMAC network can extend experiences to unknown area, and guide the learning of accuracy CMAC network. The algorithm proposed in this paper can effectively avoid the dilemma of achieving tradeoff between generalization and accuracy. Simulation results for the control of double inverted pendulum are presented to show effectiveness of the proposed algorithm.
Siwei Luo, Yu Zheng, Ziang Lv
Added 09 Nov 2009
Updated 09 Nov 2009
Type Conference
Year 2006
Where ICPR
Authors Siwei Luo, Yu Zheng, Ziang Lv
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