Abstract

Switched reluctance motor (SRM) has double salient structure which makes its magnetic characteristics; i.e. flux linkage and torque to be a nonlinear function of stator current and rotor position. For this reason, modeling and control of the SRM is by no means a trivial task. It was proven by many researchers in this area, that a simple mathematical model has never able to represent the complete overall magnetic characteristics. Moreover, there is no distinct guideline about what sort of mathematical model would be suitable. To overcome this modeling problem, a self-organizing polynomial neural network is projected in this paper. With this scheme incorporated, the model is let to evolve iteratively and progressively without any prior knowledge of the plant. Subsequently, MATLAB/SIMULINK is used to model the SRM drive system. Finally, experimental results for both static and dynamic conditions are presented.

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