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Journal article ยท Conference paper

Wind turbine load estimation using machine learning and transfer learning

From

Technical University of Denmark1

Delft University of Technology2

Wind Turbine Design Division, Department of Wind and Energy Systems, Technical University of Denmark3

Response, Aeroelasticity, Control and Hydrodynamics, Wind Turbine Design Division, Department of Wind and Energy Systems, Technical University of Denmark4

Department of Wind and Energy Systems, Technical University of Denmark5

Machine learning method has always been popular to solve wind turbine related problems at a data level. However, with the limitation of the availability of relevant data, transfer learning has gained increasing attention. In this study, traditional machine learning method of artificial neural networks (ANN), together with parameter-based transfer learning method has been used to estimate wind turbine load.

First, ANN load model was built for DTU 10MW wind turbine as well as NREL 5MW wind turbine. Then, parameter-based transfer learning has been applied to the above-mentioned models to estimate load for a different turbine type or two mixed turbine types. Results indicate that ANN method provides good estimation on wind turbine fatigue load.

For DTU 10MW ANN model, the trend of accuracy becomes steady as the number of input samples increases and 1500 samples is deemed as the optimal number of samples for training DTU 10MW. In addition, with transfer learning, it was succeeded in building NREL 5MW model with corresponding DTU 10MW pretrained model but failed in establishing mixed dataset model neither with DTU 10MW nor with NREL 5MW pretrained model.

Language: English
Publisher: IOP Publishing
Year: 2022
Pages: 032108
Proceedings: The Science of Making Torque from Wind 2022European Academy of Wind Energy : The Science of Making Torque from Wind
Series: Journal of Physics: Conference Series
ISSN: 17426596 and 17426588
Types: Journal article and Conference paper
DOI: 10.1088/1742-6596/2265/3/032108
ORCIDs: Kim, Taeseong

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