Visibility Graph Feature Model of Vibration Signals: A Novel Bearing Fault Diagnosis Approach

Reliable fault diagnosis of rolling bearings is an important issue for the normal operation of many rotating machines. Information about the structure dynamics is always hidden in the vibration response of the bearings, and it is often very difficult to extract them correctly due to the nonlinear/ch...

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Main Authors: Zhe Zhang, Yong Qin, Limin Jia, Xin’an Chen
Format: Article
Language:English
Published: MDPI AG 2018-11-01
Series:Materials
Subjects:
Online Access:https://www.mdpi.com/1996-1944/11/11/2262
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spelling doaj-1b61845c3eb541518c52d45984f830112020-11-24T23:12:09ZengMDPI AGMaterials1996-19442018-11-011111226210.3390/ma11112262ma11112262Visibility Graph Feature Model of Vibration Signals: A Novel Bearing Fault Diagnosis ApproachZhe Zhang0Yong Qin1Limin Jia2Xin’an Chen3State Key Lab of Rail Traffic Control and Safety, Beijing Jiaotong University, Beijing 100044, ChinaState Key Lab of Rail Traffic Control and Safety, Beijing Jiaotong University, Beijing 100044, ChinaState Key Lab of Rail Traffic Control and Safety, Beijing Jiaotong University, Beijing 100044, ChinaState Key Lab of Rail Traffic Control and Safety, Beijing Jiaotong University, Beijing 100044, ChinaReliable fault diagnosis of rolling bearings is an important issue for the normal operation of many rotating machines. Information about the structure dynamics is always hidden in the vibration response of the bearings, and it is often very difficult to extract them correctly due to the nonlinear/chaotic nature of the vibration signal. This paper proposes a new feature extraction model of vibration signals for bearing fault diagnosis by employing a recently-developed concept in graph theory, the visibility graph (VG). The VG approach is used to convert the vibration signals into a binary matrix. We extract 15 VG features from the binary matrix by using the network analysis and image processing methods. The three global VG features are proposed based on the complex network theory to describe the global characteristics of the binary matrix. The 12 local VG features are proposed based on the texture analysis method of images, Gaussian Markov random fields, to describe the local characteristics of the binary matrix. The feature selection algorithm is applied to select the VG feature subsets with the best performance. Experimental results are shown for the Case Western Reserve University Bearing Data. The efficiency of the visibility graph feature model is verified by the higher diagnosis accuracy compared to the statistical and wavelet package feature model. The VG features can be used to recognize the fault of rolling bearings under variable working conditions.https://www.mdpi.com/1996-1944/11/11/2262rolling bearingnonlinear vibration signalsvisibility graph featuresGaussian Markov random fields
collection DOAJ
language English
format Article
sources DOAJ
author Zhe Zhang
Yong Qin
Limin Jia
Xin’an Chen
spellingShingle Zhe Zhang
Yong Qin
Limin Jia
Xin’an Chen
Visibility Graph Feature Model of Vibration Signals: A Novel Bearing Fault Diagnosis Approach
Materials
rolling bearing
nonlinear vibration signals
visibility graph features
Gaussian Markov random fields
author_facet Zhe Zhang
Yong Qin
Limin Jia
Xin’an Chen
author_sort Zhe Zhang
title Visibility Graph Feature Model of Vibration Signals: A Novel Bearing Fault Diagnosis Approach
title_short Visibility Graph Feature Model of Vibration Signals: A Novel Bearing Fault Diagnosis Approach
title_full Visibility Graph Feature Model of Vibration Signals: A Novel Bearing Fault Diagnosis Approach
title_fullStr Visibility Graph Feature Model of Vibration Signals: A Novel Bearing Fault Diagnosis Approach
title_full_unstemmed Visibility Graph Feature Model of Vibration Signals: A Novel Bearing Fault Diagnosis Approach
title_sort visibility graph feature model of vibration signals: a novel bearing fault diagnosis approach
publisher MDPI AG
series Materials
issn 1996-1944
publishDate 2018-11-01
description Reliable fault diagnosis of rolling bearings is an important issue for the normal operation of many rotating machines. Information about the structure dynamics is always hidden in the vibration response of the bearings, and it is often very difficult to extract them correctly due to the nonlinear/chaotic nature of the vibration signal. This paper proposes a new feature extraction model of vibration signals for bearing fault diagnosis by employing a recently-developed concept in graph theory, the visibility graph (VG). The VG approach is used to convert the vibration signals into a binary matrix. We extract 15 VG features from the binary matrix by using the network analysis and image processing methods. The three global VG features are proposed based on the complex network theory to describe the global characteristics of the binary matrix. The 12 local VG features are proposed based on the texture analysis method of images, Gaussian Markov random fields, to describe the local characteristics of the binary matrix. The feature selection algorithm is applied to select the VG feature subsets with the best performance. Experimental results are shown for the Case Western Reserve University Bearing Data. The efficiency of the visibility graph feature model is verified by the higher diagnosis accuracy compared to the statistical and wavelet package feature model. The VG features can be used to recognize the fault of rolling bearings under variable working conditions.
topic rolling bearing
nonlinear vibration signals
visibility graph features
Gaussian Markov random fields
url https://www.mdpi.com/1996-1944/11/11/2262
work_keys_str_mv AT zhezhang visibilitygraphfeaturemodelofvibrationsignalsanovelbearingfaultdiagnosisapproach
AT yongqin visibilitygraphfeaturemodelofvibrationsignalsanovelbearingfaultdiagnosisapproach
AT liminjia visibilitygraphfeaturemodelofvibrationsignalsanovelbearingfaultdiagnosisapproach
AT xinanchen visibilitygraphfeaturemodelofvibrationsignalsanovelbearingfaultdiagnosisapproach
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