Abstract detail

253 / 2021-04-15 10:50:54
Fault diagnosis of wind turbine bearing based on Ensemble Empirical Mode Decomposition and Improved Deep Convolutional Neural Network
Wind turbine bearings fault diagnosis; Ensemble empirical mode decomposition; Improved deep convolutional neural network; Batch normalization
Machine condition monitoring and fault diagnosis
Abstract Accepted
Liang Meng / Shandong University of Technology
Tongle Xu / Shandong University of Technology
In order to solve the difficulties in extracting early weak fault features and the low diagnosis efficiency of wind turbine rolling bearings, thus a fault diagnosis method of wind turbine bearing based on Ensemble Empirical Mode Decomposition and Improved Deep convolutional Neural Network (EEMD-IDCNN) is proposed in this paper. The EEMD-IDCNN method can realize an end-to-end processing of the original vibration signal and improve the adaptability of the algorithm. Firstly, the periodic extension method of signal is used to solve the end effect of Ensemble Empirical Mode Decomposition (EEMD). Secondly, the Intrinsic Mode Function (IMF) components generated by EEMD are obtained, and the Continuous Wavelet Transform (CWT) is used to get the time-frequency characteristic diagram. Then, the time-frequency characteristic diagram is convoluted to obtain the feature matrix, and the batch normalization layer is added between the convolution layer and the pooling layer to reduce the uncertainty of the data features and improve the generalization ability of fault diagnosis. Finally, through the experimental analysis of bearing data collected by actual engineering, it is proved that this method is more accurate than other methods and has a wider diagnostic range.

Countdown

  • 00

    Days

  • 00

    Hours

  • 00

    Minutes

  • 00

    Seconds

Important Dates

Abstract Submission Deadline:

 31st March 2021 15th April 2021

Extended Deadline: 1st Aug. 2022

 

Abstract Acceptance:

30th April  2021 Rollover

 

Full Paper Submission Deadline:

30th June 2021  14th July 2021

Extended Deadline: 15th Aug. 2022 

 

Notification of Acceptance:

15th August 2021 1st Sept. 2021

1st Sept. 2022

Contact Us

  Tel: 86-0532-6897 5191 (Ms Yuan)

  Mob: 184 5327 6561
  E-mailsecretariat@apvc2021.org
               organizer@apvc2021.org

Visitors