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Anomaly Detection on Small Wind Turbine Blades Using Deep Learning Algorithms

Author

Listed:
  • Bridger Altice

    (Information Dynamics Lab., Electrical and Computer Engineering Department, Utah State University, Logan, UT 84322, USA)

  • Edwin Nazario

    (Machine Learning and Drone Lab., Engineering Department, Utah Valley University, Orem, UT 84097, USA)

  • Mason Davis

    (Machine Learning and Drone Lab., Engineering Department, Utah Valley University, Orem, UT 84097, USA)

  • Mohammad Shekaramiz

    (Machine Learning and Drone Lab., Engineering Department, Utah Valley University, Orem, UT 84097, USA)

  • Todd K. Moon

    (Information Dynamics Lab., Electrical and Computer Engineering Department, Utah State University, Logan, UT 84322, USA)

  • Mohammad A. S. Masoum

    (Machine Learning and Drone Lab., Engineering Department, Utah Valley University, Orem, UT 84097, USA)

Abstract

Wind turbine blade maintenance is expensive, dangerous, time-consuming, and prone to misdiagnosis. A potential solution to aid preventative maintenance is using deep learning and drones for inspection and early fault detection. In this research, five base deep learning architectures are investigated for anomaly detection on wind turbine blades, including Xception, Resnet-50, AlexNet, and VGG-19, along with a custom convolutional neural network. For further analysis, transfer learning approaches were also proposed and developed, utilizing these architectures as the feature extraction layers. In order to investigate model performance, a new dataset containing 6000 RGB images was created, making use of indoor and outdoor images of a small wind turbine with healthy and damaged blades. Each model was tuned using different layers, image augmentations, and hyperparameter tuning to achieve optimal performance. The results showed that the proposed Transfer Xception outperformed other architectures by attaining 99.92% accuracy on the test data of this dataset. Furthermore, the performance of the investigated models was compared on a dataset containing faulty and healthy images of large-scale wind turbine blades. In this case, our results indicated that the best-performing model was also the proposed Transfer Xception, which achieved 100% accuracy on the test data. These accuracies show promising results in the adoption of machine learning for wind turbine blade fault identification.

Suggested Citation

  • Bridger Altice & Edwin Nazario & Mason Davis & Mohammad Shekaramiz & Todd K. Moon & Mohammad A. S. Masoum, 2024. "Anomaly Detection on Small Wind Turbine Blades Using Deep Learning Algorithms," Energies, MDPI, vol. 17(5), pages 1-21, February.
  • Handle: RePEc:gam:jeners:v:17:y:2024:i:5:p:982-:d:1342099
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    References listed on IDEAS

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    1. Cristian Velandia-Cardenas & Yolanda Vidal & Francesc Pozo, 2021. "Wind Turbine Fault Detection Using Highly Imbalanced Real SCADA Data," Energies, MDPI, vol. 14(6), pages 1-26, March.
    2. Ahmed Samour & Usman Mehmood & Magdalena Radulescu & Radu Alexandru Budu & Rares Mihai Nitu, 2023. "Examining the Role of Renewable Energy, Technological Innovation, and the Insurance Market in Environmental Sustainability in the United States: A Step toward COP26 Targets," Energies, MDPI, vol. 16(17), pages 1-15, August.
    3. Xu, Xiaofeng & Wei, Zhifei & Ji, Qiang & Wang, Chenglong & Gao, Guowei, 2019. "Global renewable energy development: Influencing factors, trend predictions and countermeasures," Resources Policy, Elsevier, vol. 63(C), pages 1-1.
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