Machine Learning Applications for a Wind Turbine Blade under Continuous Fatigue Loading

KEY ENGINEERING MATERIALS(2014)

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摘要
Structural health monitoring (SHM) systems will be one of the leading factors in the successful establishment of wind turbines in the energy arena. Detection of damage at an early stage is a vital issue as blade failure would be a catastrophic result for the entire wind turbine. In this study the SHM analysis will be based on experimental measurements of vibration analysis, extracted of a 9m CX-100 blade under fatigue loading. For analysis, machine learning techniques utilised for failure detection of wind turbine blades will be applied, like non-linear Neural Networks, including Auto-Associative Neural Network (AANN) and Radial Basis Function (RBF) networks models.
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关键词
Damage detection,Novelty analysis,Radial Basis Function Networks,Auto-associative Neural Networks,Fatigue test,Wind turbine blade
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