Works matching IS 10954244 AND DT 2023 AND VI 26 AND IP 10
Results: 6
Convolutional neural network framework for wind turbine electromechanical fault detection.
- Published in:
- Wind Energy, 2023, v. 26, n. 10, p. 1082, doi. 10.1002/we.2857
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- Publication type:
- Article
Short‐term wind power prediction based on stacked denoised auto‐encoder deep learning and multi‐level transfer learning.
- Published in:
- Wind Energy, 2023, v. 26, n. 10, p. 1066, doi. 10.1002/we.2856
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- Publication type:
- Article
Erosion modelling on reconstructed rough surfaces of wind turbine blades.
- Published in:
- Wind Energy, 2023, v. 26, n. 10, p. 1017, doi. 10.1002/we.2848
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- Publication type:
- Article
Issue Information.
- Published in:
- Wind Energy, 2023, v. 26, n. 10, p. 1013, doi. 10.1002/we.2751
- Publication type:
- Article
The flow in the induction and entrance regions of lab‐scale wind farms.
- Published in:
- Wind Energy, 2023, v. 26, n. 10, p. 1049, doi. 10.1002/we.2855
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- Publication type:
- Article
Feasibility study on a full‐scale wind turbine blade monitoring campaign: Comparing performance and robustness of features extracted from medium‐frequency active vibrations.
- Published in:
- Wind Energy, 2023, v. 26, n. 10, p. 1027, doi. 10.1002/we.2854
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- Publication type:
- Article