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AC servo system based on MEC optimization and fuzzy neural network control | IEEE Conference Publication | IEEE Xplore

AC servo system based on MEC optimization and fuzzy neural network control


Abstract:

To satisfy the requirements of higher accuracy and faster response in AC servo system, a system with a fuzzy neural network controller based on mind evolutionary computat...Show More

Abstract:

To satisfy the requirements of higher accuracy and faster response in AC servo system, a system with a fuzzy neural network controller based on mind evolutionary computation (MEC) optimization was designed. The controller combined the advantage of fast searching optimization of MEC and the advantage of not depending on controlled plant of fuzzy neural network controller. This method uses MEC to search the optimal mean, the optimal standard deviation and the optimal weights that connect membership layer and rule layer. Simulation and experimental results verified the effectiveness of the method. The results show that this method has good control effect on both system regulating and set-point following. For AC system in practice, this method has quite good disturbance resistance and strong robustness, and both dynamic and steady performances were improved evidently.
Date of Conference: 22-24 July 2011
Date Added to IEEE Xplore: 25 August 2011
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Conference Location: Yantai, China
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