Bearing Health Monitoring and Fault Diagnosis Based on Joint Feature Extraction in 1D- CNN

被引:0
|
作者
Liu L. [1 ]
Zhu J.-C. [1 ]
Han G.-J. [1 ]
Bi Y.-G. [2 ]
机构
[1] College of Internet of Things Engineering, Hohai University, Changzhou
[2] School of Computer Science and Engineering, Northeastern University, Shenyang
来源
Ruan Jian Xue Bao/Journal of Software | 2021年 / 32卷 / 08期
关键词
Bearing; Fault diagnosis; Industrial Internet of things; Joint feature; One-dimensional convolution neural network;
D O I
10.13328/j.cnki.jos.006188
中图分类号
学科分类号
摘要
Data-driven fault diagnosis models for specific mechanical equipment lack generalization capabilities. As a core component of various types of machinery, the health status of bearings makes sense in analyzing derivative failures of different machinery. This study proposes a bearing health monitoring and fault diagnosis algorithm based on 1D-CNN (one-dimensional convolution neural network) joint feature extraction. The algorithm first partitions the original vibration signal of the bearing in segmentations. The signal segmentations are used as feature learning spaces and input into the 1D-CNN in parallel to extract the representative feature domain under each working condition. To avoid processing overlapping information generated by faults, a bearing health status discriminant model is built in advance based on the feature domain sensitive to health status. If the health model recognizes that the bearing is not in a healthy state, the feature domain will be reconstructed jointly with the original signal and coupled with an automatic encoder for failure mode classification. Bearing data provided by Case Western Reserve University are used to carry out experiments. Experimental results demonstrate that the proposed algorithm inherits the accuracy and robustness of the deep learning model, and has higher diagnosis accuracy and lower time delay. © Copyright 2021, Institute of Software, the Chinese Academy of Sciences. All rights reserved.
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收藏
页码:2379 / 2390
页数:11
相关论文
共 28 条
  • [1] Wang FY, Zhang J., Internet of minds: The concept, issues and platforms, Acta Automatica Sinica, 43, 12, pp. 2061-2070, (2017)
  • [2] Chen BT, Wan JF, Shu L, Et al., Smart factory of industry 4.0: Key technologies, application case, and challenges, IEEE Access, 6, pp. 6505-6519, (2018)
  • [3] Rani S, Ahmed SH, Talwar R, Malhotra J., Can sensors collect big data? An energy-efficient big data gathering algorithm for a WSN, IEEE Trans. on Industrial Informatics, 13, 4, pp. 1961-1968, (2017)
  • [4] Hsu J, Wang YF, Lin KC, Et al., Wind turbine fault diagnosis and predictive maintenance through statistical process control and machine learning, IEEE Access, 8, pp. 23427-23439, (2020)
  • [5] Wen CL, Lv FY, Bao ZJ, Liu MQ., A review of data driven-based incipient fault diagnosis, Acta Automatica Sinica, 42, 9, pp. 1285-1299, (2016)
  • [6] Jiang SF, Wu TJ, Peng X, Li JQ, Li Z, Sun T., Data driven fault diagnosis method based on XGBoost feature extraction, China Mechanical Engineering, 31, 10, pp. 1232-1239, (2020)
  • [7] Hu HX, Tang B, Gong XJ, Wei W, Wang HH., Intelligent fault diagnosis of the high-speed train with big data based on deep neural networks, IEEE Trans. on Industrial Informatics, 13, 4, pp. 2106-2116, (2017)
  • [8] Fravolini ML, del Core G, Papa U, Valigi P, Napolitano MR., Data-driven schemes for robust fault detection of air data system sensors, IEEE Trans. on Control Systems Technology, 27, 1, pp. 234-248, (2019)
  • [9] Shahriar MR, Borghesani P, Tan ACC., Electrical signature analysis-based detection of external bearing faults in electromechanical drivetrains, IEEE Trans. on Industrial Electronics, 65, 7, pp. 5941-5950, (2018)
  • [10] Li YM, Cao HR, Zhu YS., Study on nonlinear stiffness of rolling ball bearing under varied operating conditions, Proc. of the 2013 IEEE Int'l Symp. on Assembly and Manufacturing (ISAM), pp. 8-11, (2013)