2022
DOI: 10.5194/wes-7-623-2022
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Model updating of a wind turbine blade finite element Timoshenko beam model with invertible neural networks

Abstract: Abstract. Digitalization, especially in the form of a digital twin, is fast becoming a key instrument for the monitoring of a product's life cycle from manufacturing to operation and maintenance and has recently been applied to wind turbine blades. Here, model updating plays an important role for digital twins, in the form of adjusting the model to best replicate the corresponding real-world counterpart. However, classical updating methods are generally limited to a reduced parameter space due to low computati… Show more

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