Publication | Closed Access
Improving Site-Dependent Wind Turbine Performance Prediction Accuracy Using Machine Learning
18
Citations
17
References
2022
Year
EngineeringMachine LearningMachine Learning ToolWind EngineeringRandom Forest RegressionData ScienceWind TurbinesExtreme GradientSystems EngineeringWind EnergyWind Power GenerationMachine Learning ModelPredictive AnalyticsComputer ScienceForecastingTurbulence IntensityEnergy PredictionWind Turbine BladesWind Energy Technology
Abstract Data-driven wind turbine performance predictions, such as power and loads, are important for planning and operation. Current methods do not take site-specific conditions such as turbulence intensity and shear into account, which could result in errors of up to 10%. In this work, four different machine learning models (k-nearest neighbors regression, random forest regression, extreme gradient boosting regression and artificial neural networks (ANN)) are trained and tested, first on a simulation dataset and then on a real dataset. It is found that machine learning methods that take site-specific conditions into account can improve prediction accuracy by a factor of two to three, depending on the error indicator chosen. Similar results are observed for multi-output ANNs for simulated in- and out-of-plane rotor blade tip deflection and root loads. Future work focuses on understanding transferability of results between different turbines within a wind farm and between different wind turbine types.
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