Modified Gaussian convolutional deep belief network and infrared thermal imaging for intelligent fault diagnosis of rotor-bearing system under time-varying speeds

Li Xin, Shao Haidong, Jiang Hongkai, Xiang Jiawei

Research output: Contribution to journalArticlepeer-review

76 Scopus citations

Abstract

The vast majority of the existing diagnostic studies using deep learning techniques for rotating machinery focus on the vibration analysis under steady rotating speed. Nevertheless, the collected vibration signals are sensitive to time-varying speeds and the vibration sensors may cause structure damage of equipment after long-term close contact. Aiming at these aforementioned problems, a modified Gaussian convolutional deep belief network driven by infrared thermal imaging is proposed to automatically diagnose different faults of rotor-bearing system under time-varying speeds. First, infrared thermal images are measured to characterize the working states of rotor-bearing system to reduce the impact of changeable speeds. Second, Gaussian units are used to construct Gaussian convolutional deep belief network to well deal with infrared thermal images. Finally, trackable learning rate is designed to modify the training algorithm to enhance the performance. The comparison results verify the feasibility of the proposed method, which outperforms the other methods.

Original languageEnglish
Pages (from-to)339-353
Number of pages15
JournalStructural Health Monitoring
Volume21
Issue number2
DOIs
StatePublished - Mar 2022

Keywords

  • infrared thermal images
  • intelligent fault diagnosis
  • modified GCDBN
  • Rotor-bearing system
  • time-varying speeds
  • trackable learning rate

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