Fuzzy-Control with Gray-Predictor for Time-Varying Delay Systems

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Abstract:

A control structure, integrated with the virtue of high approximate capability of neural network, strong adaptability of gray prediction and strong robustness of fuzzy control, is proposed in this paper, in which the time-delay identify, varying step response predict and fuzzy control are achieved at one time. The results of computer simulation indicate that the control scheme can dramatically satisfy the desire of fast dynamic response and stability.

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306-310

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October 2011

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© 2012 Trans Tech Publications Ltd. All Rights Reserved

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