Research on Parameter Influence of Offshore Wind Turbines Based on Measured Data Analysis
Research on Parameter Influence of Offshore Wind Turbines Based on Measured Data Analysis
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Offshore wind turbines are prone to structural damage over time due to environmental factors, which increases operational costs and the risk of accidents.
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.Early detection of structural damage through monitoring systems can help reduce maintenance costs.However, under complex external conditions and varying structural parameters, existing methods struggle to accurately and quickly detect damage.Understanding the factors that influence structural health is critical for effective long-term monitoring, as these factors directly affect the accuracy and timeliness of damage identification.
This study comprehensively analyzed 5 MW offshore wind turbine measurement data, including constructing a digital twin model, establishing a surrogate model, and performing a sensitivity analysis.For monopile-based turbines, sensors in x and y directions were installed at four heights on the pile foundation and tower.Via Bayesian optimization, the finite element model’s structural parameters were updated to align its modal parameters with sensor data analysis results.The update efficiencies of different objective functions and the impacts of neural network hyperparameters on the surrogate model were examined.
The sensitivity of the turbine’s structural parameters to modal parameters was studied.
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.The results showed that the modal flexibility matrix is more effective in iteration.A 128-neuron, double-hidden-layer neural network balanced computational efficiency and accuracy well in the surrogate model for modal analysis.Flange damage and soil degradation near the pile mainly impacted the turbine’s health.