NN-IMC Control for DFIG Based Wind Power Generation System RSC

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Abstract:

The rotor side converter of DFIG with stator flux-oriented vector control was presented with the mathematical model created and the control structure analyzed. The neural networks internal model control was proposed in this control system which composed of NNC and NNM, the NNC was the inverse model of neural networks, which serve as controller, NNM was the positive model of neural networks, the control feature was verified with simulation.

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2839-2842

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February 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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