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A 2DCNN-RF Model for Offshore Wind Turbine High-Speed Bearing-Fault Diagnosis under Noisy Environment

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  • Shujie Yang

    (School of Marine Engineering Equipment, Zhejiang Ocean University, Zhoushan 316022, China)

  • Peikun Yang

    (School of Marine Engineering Equipment, Zhejiang Ocean University, Zhoushan 316022, China)

  • Hao Yu

    (Institute of Ocean Engineering and Technology, Ocean College, Zhejiang University, Zhoushan 316021, China)

  • Jing Bai

    (School of Marine Engineering Equipment, Zhejiang Ocean University, Zhoushan 316022, China)

  • Wuwei Feng

    (School of Marine Engineering Equipment, Zhejiang Ocean University, Zhoushan 316022, China)

  • Yuxiang Su

    (School of Marine Engineering Equipment, Zhejiang Ocean University, Zhoushan 316022, China)

  • Yulin Si

    (Institute of Ocean Engineering and Technology, Ocean College, Zhejiang University, Zhoushan 316021, China)

Abstract

The vibration signals for offshore wind-turbine high-speed bearings are often contaminated with noises due to complex environmental and structural loads, which increase the difficulty of fault detection and diagnosis. In view of this problem, we propose a fault-diagnosis strategy with good noise immunity in this paper by integrating the two-dimensional convolutional neural network (2DCNN) with random forest (RF), which is supposed to utilize both CNN’s automatic feature-extraction capability and the robust discrimination performance of RF classifiers. More specifically, the raw 1D time-domain bearing-vibration signals are transformed into 2D grayscale images at first, which are then fed to the 2DCNN-RF model for fault diagnosis. At the same time, three procedures, including exponential linear unit (ELU), batch normalization (BN), and dropout, are introduced in the model to improve feature-extraction performance and the noise immune capability. In addition, when the 2DCNN feature extractor is trained, the obtained feature vectors are passed to the RF classifier to improve the classification accuracy and generalization ability of the model. The experimental results show that the diagnostic accuracy of the 2DCNN-RF model could achieve 99.548% on the CWRU high-speed bearing dataset, which outperforms the standard CNN and other standard machine-learning and deep-learning algorithms. Furthermore, when the vibration signals are polluted with noises, the 2DCNN-RF model, without retraining the model or any denoising process, still achieves satisfying performance with higher accuracy than the other methods.

Suggested Citation

  • Shujie Yang & Peikun Yang & Hao Yu & Jing Bai & Wuwei Feng & Yuxiang Su & Yulin Si, 2022. "A 2DCNN-RF Model for Offshore Wind Turbine High-Speed Bearing-Fault Diagnosis under Noisy Environment," Energies, MDPI, vol. 15(9), pages 1-16, May.
  • Handle: RePEc:gam:jeners:v:15:y:2022:i:9:p:3340-:d:808461
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    References listed on IDEAS

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    1. Shiza Mushtaq & M. M. Manjurul Islam & Muhammad Sohaib, 2021. "Deep Learning Aided Data-Driven Fault Diagnosis of Rotatory Machine: A Comprehensive Review," Energies, MDPI, vol. 14(16), pages 1-24, August.
    2. Chen, Xuejun & Yang, Yongming & Cui, Zhixin & Shen, Jun, 2019. "Vibration fault diagnosis of wind turbines based on variational mode decomposition and energy entropy," Energy, Elsevier, vol. 174(C), pages 1100-1109.
    3. Rong Jia & Fuqi Ma & Jian Dang & Guangyi Liu & Huizhi Zhang, 2018. "Research on Multidomain Fault Diagnosis of Large Wind Turbines under Complex Environment," Complexity, Hindawi, vol. 2018, pages 1-13, July.
    4. Li, Xiang & Zhang, Wei & Ding, Qian, 2019. "Deep learning-based remaining useful life estimation of bearings using multi-scale feature extraction," Reliability Engineering and System Safety, Elsevier, vol. 182(C), pages 208-218.
    5. Hisahide Nakamura & Yukio Mizuno, 2022. "Diagnosis for Slight Bearing Fault in Induction Motor Based on Combination of Selective Features and Machine Learning," Energies, MDPI, vol. 15(2), pages 1-12, January.
    6. Li, Yanting & Jiang, Wenbo & Zhang, Guangyao & Shu, Lianjie, 2021. "Wind turbine fault diagnosis based on transfer learning and convolutional autoencoder with small-scale data," Renewable Energy, Elsevier, vol. 171(C), pages 103-115.
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    Cited by:

    1. Miguel Louro & Luís Ferreira, 2022. "Estimation of Underground MV Network Failure Types by Applying Machine Learning Methods to Indirect Observations," Energies, MDPI, vol. 15(17), pages 1-15, August.

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