Huadian Technology ›› 2021, Vol. 43 ›› Issue (5): 75-79.doi: 10.3969/j.issn.1674-1951.2021.05.012

• New Energy • Previous Articles     Next Articles

Wind speed correction for wind turbine based on convolutional neural network

YANG Mingming()   

  1. China Resources Power Technology Research Institute Company Limited,Shenzhen 518002,China
  • Received:2020-08-19 Revised:2021-02-18 Online:2021-05-25 Published:2021-05-18

Abstract:

The wind turbine nacelle anemometer is affected by the wake of turbines and disturbance of blade.International Electrotechnical Commission(IEC) indicated that nacelle transfer function cannot accurately describe the complex relationship between measured wind velocity and inflowing wind velocity.A nacelle wind speed correction model based on convolution neural network is proposed.The model adopting multi-layer convolution pooling can effectively filter the influence brought by turbine wake and blade disturbance,abstract feature variables,and improve the accuracy of the corrected wind speed.The engineering example shows that the fitting accuracy R2 of the convolution neural network method is 0.844 7,and its mean absolute error (MAE) is only 0.071.The difference between the power calculated by this method and the one measured by anemometers is only 4.07%.All the deviation indexes are better than those made by IEC nacelle transfer function,which fully reflects the advantages of the wind speed correction model.

Key words: wind turbine, convolutional neural network, IEC nacelle transfer function, nacelle wind speed, inflowing wind velocity, free flow velocity, power curve, wind speed correction

CLC Number: