Transfer learning-based fault detection in wind turbine blades using radar plots and deep learning models
收藏Taylor & Francis Group2024-02-13 更新2026-04-16 收录
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https://tandf.figshare.com/articles/dataset/Transfer_learning-based_fault_detection_in_wind_turbine_blades_using_radar_plots_and_deep_learning_models/24080729/1
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资源简介:
Faults in wind turbine blades are considered a critical issue that can affect the safety and performance of wind turbines. The proposed research aimed to monitor wind turbine blades and identify fault conditions using a transfer learning approach. The study utilized one good and four faulty blade conditions: bend, hub-blade loose connection, erosion, and pitch angle twist. Vibration signals for each blade condition were collected and converted as radar plots that were fed and analyzed using pre-trained deep learning models including ResNet-50, AlexNet, VGG-16, and GoogleNet. Hyperparameters including optimizer, train-test split ratio, batch size, epochs, and learning rate were examined to determine the optimal configuration for each network. The study’s core findings indicate that ResNet-50 outperformed all other models, achieving an impressive accuracy rate of 99.00%. The other models achieved lower accuracy rates, with AlexNet achieving 96.70%, GoogleNet achieving 97.00%, and VGG-16 achieving 95.00%. These findings highlight the potential of using deep learning models for wind turbine monitoring and fault detection, which could significantly improve the efficiency and reliability of wind turbines.
提供机构:
Ngoenmeesri, Rattaporn; M., Arjun Jaikrishna; Velmurugan, Karthikeyan; Dhanraj, Joshuva Arockia; S, Naveen Venkatesh; Sirisamphanwong, Chatchai; Sirisamphanwong, Chattariya; V, Sugumaran
创建时间:
2023-09-04



