Fuzzy Multiple Reference Models Adaptive Control of Induction Motors


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A new method of fuzzy multiple reference models adaptive control(FMRMAC) for dealing with significant and unpredictable system parameter variations is presented. In this method, different suitable reference model is chosen by fuzzy rules when changes occurred to the model parameters. A successful application to the speed servo system of dynamic model of induction motor (IM) shows this method works well with high dynamic performance under the condition of command speed change and load torque disturbance.



Advanced Materials Research (Volumes 354-355)

Edited by:

Hao Zhang, Yang Fu and Zhong Tang




H. Xue and Y. F. Wang, "Fuzzy Multiple Reference Models Adaptive Control of Induction Motors", Advanced Materials Research, Vols. 354-355, pp. 1285-1288, 2012

Online since:

October 2011





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