PSO-BP Neural Network-Based Strain Prediction of Wind Turbine Blades

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ID: 112237
2019
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Abstract
The full-scale static testing of wind turbine blades is an effective means to verify the accuracy and rationality of the blade design, and it is an indispensable part in the blade certification process. In the full-scale static experiments, the strain of the wind turbine blade is related to the appl …
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Authors Liu X;Liu Z;Liang Z;Zhu SP;Correia JAFO;De Jesus AMP;;
Journal Materials (Basel, Switzerland)
Year 2019
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