4.7 Article

Data-driven fault diagnosis method based on the conversion of erosion operation signals into images and convolutional neural network

期刊

PROCESS SAFETY AND ENVIRONMENTAL PROTECTION
卷 149, 期 -, 页码 591-601

出版社

ELSEVIER
DOI: 10.1016/j.psep.2021.03.016

关键词

Convolutional neural network (CNN); Fault diagnosis; Data-driven; EOSTI

资金

  1. National Natural Science Foundation of China [51905496]
  2. Opening Project of Shanxi Key Laboratory of Advanced Manufacturing Technology [XJZZ201902]
  3. Shanxi Provincial Natural Science Foundation of China [201801D121186, 201801D221237]
  4. Science Foundation of the North University of China [XJJ201802]
  5. Shanxi Province Applied basic research project of China [201701D121061]
  6. Open Research Foundation of Key Discipline Laboratory of Damage Technology [DXMBJJ201901]

向作者/读者索取更多资源

This study introduces a new fault diagnosis method based on data-driven approach using AlexNet CNN. The method achieves high prediction accuracy for fault classification in different bearing datasets and has been proven feasible in engineering practice.
In the industrial process, the safety and reliability of the mechanical system determine the quality of the product, and whether small faults can be diagnosed in time is the key to ensuring the safe operation of the system and restraining the deterioration of faults. In recent years, the data-driven fault diagnosis has attracted widespread attention in academia. However, the traditional data-driven fault diagnosis methods rely on the features extracted from expert systems, so that the effect of fault diagnosis is entirely reliant on how well the expert system can extract the features. This paper proposes a new fault diagnosis method based on AlexNet Convolutional neural network (CNN) from a data-driven perspective. Firstly, a new method for converting time-domain vibration signal into RGB image based on erosion operation (EOSTI) is proposed. Initially converted three-dimensional (3-D) images have relatively close structural elements and are difficult to identify. For such defects, the target separated RGB image is generated. Secondly, explore the classification accuracy of AlexNet to make it more suitable for fault classification of different bearing datasets. Finally, the proposed method which is tested on two datasets, including coal washing machine dataset, maintenance fault dataset, has achieved prediction accuracy of 99.43 % and 99.67 %, respectively. The results have been compared with other methods. The comparisons show the effectiveness and accuracy of the proposed approach. The result shows that this method is feasible in engineering practice. ? 2021 Institution of Chemical Engineers. Published by Elsevier B.V. All rights reserved.

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