Fault Detection using ANFIS for the Magnetically Saturated Induction Motor

نویسنده

  • Mohamed Mahmoud Ismail
چکیده

The problem of fault detection of the π-model induction motor with magnetic saturation is considered in this paper. In this paper we use a new technique which is the Adaptive Neuro Fuzzy Inference Systems (ANFIS) technique for online identification of the different motor fault conditions. A simulation study is illustrated using MATLAB simulink depending on stator currents measurement only for online detection of the motor faults. The proposed technique shows promising results using the simulation model. [Mohamed Mahmoud Ismail. Fault Detection using ANFIS for the Magnetically Saturated Induction Motor Journal of American Science 2011;7(7):530-537].(ISSN: 1545-1003). http://www.americanscience.org.

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تاریخ انتشار 2011