10.35940/ijrte.C4670.119420
https://zenodo.org/records/5840009
oai:zenodo.org:5840009
Randriamanantenasoa Njeva,
Randriamanantenasoa Njeva
Department of Electricity, University of Antsiranana, Antalaha, Madagascar
Chrysostome Andrianantenaina
Chrysostome Andrianantenaina
Department of Electricity, University of Antsiranana, Antalaha, Madagascar
Jean Claude Rakotoarisoa
Jean Claude Rakotoarisoa
Department of Electricity, University of Antsiranana, Antalaha, Madagascar
Jean Nirinarison Razafinjaka
Jean Nirinarison Razafinjaka
Department of Electricity, University of Antsiranana, Antalaha, Madagascar
Artificial Neural Networks Applied to a Wind Energy System
Zenodo
2020
MPPT, wind energy, DFIG, Artificial Neural Network, optimization.
Blue Eyes Intelligence Engineering and Sciences Publication(BEIESP)
Blue Eyes Intelligence Engineering and Sciences Publication(BEIESP)
Publisher
2020-11-30
eng
2277-3878
Creative Commons Attribution 4.0 International
In this context, we are taking a close interest in the optimization of wind energy production. It consists in designing simple to implement control strategies of a wind energy conversion system, connected to the network based on the Double Fed Induction Generator (DFIG) driven by the Converter Machine Side (CSM) in order to improve the performance of Direct Torque Control (DTC) and Direct Power Control (DPC). For this purpose, the artificial neural networks (ANNs) is used. Hysteresis comparators and voltage vector switching tables have been replaced by a comparator based on artificial neural networks. The same structure is adopted to build the two neural controllers, for the DTC - ANN and for the DPC - ANN. The simulation results show that the combination of classical and artificial neural network methods permit a double advantage: remarkable performances compared to the DTC-C and DPC-C and a significant reduction of the fluctuations of the output quantities of the DFIG and especially the improvement of the harmonics rate currents generated by the machine.