Title of article :
ANFIS modeling and validation of a variable speed wind turbine based on actual data
Author/Authors :
Fazlollahi, Vahid School of Mechanical and Energy Engineering - Shahid Beheshti University, Tehran , Taghizadeh, Mostafa School of Mechanical and Energy Engineering - Shahid Beheshti University, Tehran , A.Shirazi, Farzad School of Mechanical Engineering - University of Tehran, Tehran
Abstract :
In this research paper, ANFIS modeling and validation of Vestas 660 kW
wind turbine based on actual data obtained from Eoun‐Ebn‐Ali wind
farm in Tabriz, Iran, and FAST is performed. The turbine modeling is
performed by deriving the non‐linear dynamic equations of different
subsystems. Then, the model parameters are identified to match the
actual response. ANFIS is an artificial intelligent technique which creates
a fuzzy inference system based on input and output information of the
model. In this research, the ANFIS algorithm combines neural network
and fuzzy logic with 5 layers which utilize different node functions for
learning and setting fuzzy inference system parameters. After learning, by
assuming constant parameters, a hybrid method is used to update the
results. Employing the proposed method, computation time and
complexity are remarkably reduced. Results of the proposed method are
then compared and validated with the actual data of Eoun‐Ebn‐Ali wind
farm in Tabriz. It is shown and concluded that the proposed model
matches favorably well with the actual data and FAST model.
Keywords :
Wind Turbine , ANFIS , Validation , FAST
Journal title :
Astroparticle Physics