Intelligent Online Monitoring of Rolling Bearing: Diagnosis and Prognosis

This paper suggests a new method to predict the Remaining Useful Life (RUL) of rolling bearings based on Long Short Term Memory (LSTM), in order to obtain the degradation condition of the rolling bearings and realize the predictive maintenance. The approach is divided into three parts: the first par...

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Main Authors: Hassane Hotait, Xavier Chiementin, Lanto Rasolofondraibe
Format: Article
Language:English
Published: MDPI AG 2021-06-01
Series:Entropy
Subjects:
RUL
Online Access:https://www.mdpi.com/1099-4300/23/7/791
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spelling doaj-4b66fb48071148a5b0acaa620bb6c50b2021-07-23T13:39:28ZengMDPI AGEntropy1099-43002021-06-012379179110.3390/e23070791Intelligent Online Monitoring of Rolling Bearing: Diagnosis and PrognosisHassane Hotait0Xavier Chiementin1Lanto Rasolofondraibe2ITheMM, Institute of Thermics, Mechanics and Material, University of Reims Champagne-Ardenne, Moulin de la Housse, 51687 Reims, FranceITheMM, Institute of Thermics, Mechanics and Material, University of Reims Champagne-Ardenne, Moulin de la Housse, 51687 Reims, FranceCReSTIC, University of Reims Champagne-Ardenne, Moulin de la Housse, 51687 Reims, FranceThis paper suggests a new method to predict the Remaining Useful Life (RUL) of rolling bearings based on Long Short Term Memory (LSTM), in order to obtain the degradation condition of the rolling bearings and realize the predictive maintenance. The approach is divided into three parts: the first part is the clustering to detect the damage state by the density-based spatial clustering of applications with noise. The second one is the health indicator construction which could give a better reflection of the bearing degradation tendency and is selected as the input for the prediction model. In the third part of the RUL prediction, the LSTM approach is employed to improve the accuracy of the prediction. The rationale of this work is to combine the two methods—the density-based spatial clustering of applications with noise and LSTM—to identify the abnormal state in rolling bearings, then estimate the RUL. The suggested method is confirmed by experimental data of bearing life cycle, and the RUL prediction results of the model LSTM are compared with the nonlinear au-regressive model with exogenous input model. In addition, the constructed health indicator is compared with the spectral kurtosis feature. The results demonstrated that the suggested method is more appropriate than the nonlinear au-regressive model with exogenous input model for the prediction of bearing RUL.https://www.mdpi.com/1099-4300/23/7/791bearingsvibration signalDBSCANhealth indicatorLSTMRUL
collection DOAJ
language English
format Article
sources DOAJ
author Hassane Hotait
Xavier Chiementin
Lanto Rasolofondraibe
spellingShingle Hassane Hotait
Xavier Chiementin
Lanto Rasolofondraibe
Intelligent Online Monitoring of Rolling Bearing: Diagnosis and Prognosis
Entropy
bearings
vibration signal
DBSCAN
health indicator
LSTM
RUL
author_facet Hassane Hotait
Xavier Chiementin
Lanto Rasolofondraibe
author_sort Hassane Hotait
title Intelligent Online Monitoring of Rolling Bearing: Diagnosis and Prognosis
title_short Intelligent Online Monitoring of Rolling Bearing: Diagnosis and Prognosis
title_full Intelligent Online Monitoring of Rolling Bearing: Diagnosis and Prognosis
title_fullStr Intelligent Online Monitoring of Rolling Bearing: Diagnosis and Prognosis
title_full_unstemmed Intelligent Online Monitoring of Rolling Bearing: Diagnosis and Prognosis
title_sort intelligent online monitoring of rolling bearing: diagnosis and prognosis
publisher MDPI AG
series Entropy
issn 1099-4300
publishDate 2021-06-01
description This paper suggests a new method to predict the Remaining Useful Life (RUL) of rolling bearings based on Long Short Term Memory (LSTM), in order to obtain the degradation condition of the rolling bearings and realize the predictive maintenance. The approach is divided into three parts: the first part is the clustering to detect the damage state by the density-based spatial clustering of applications with noise. The second one is the health indicator construction which could give a better reflection of the bearing degradation tendency and is selected as the input for the prediction model. In the third part of the RUL prediction, the LSTM approach is employed to improve the accuracy of the prediction. The rationale of this work is to combine the two methods—the density-based spatial clustering of applications with noise and LSTM—to identify the abnormal state in rolling bearings, then estimate the RUL. The suggested method is confirmed by experimental data of bearing life cycle, and the RUL prediction results of the model LSTM are compared with the nonlinear au-regressive model with exogenous input model. In addition, the constructed health indicator is compared with the spectral kurtosis feature. The results demonstrated that the suggested method is more appropriate than the nonlinear au-regressive model with exogenous input model for the prediction of bearing RUL.
topic bearings
vibration signal
DBSCAN
health indicator
LSTM
RUL
url https://www.mdpi.com/1099-4300/23/7/791
work_keys_str_mv AT hassanehotait intelligentonlinemonitoringofrollingbearingdiagnosisandprognosis
AT xavierchiementin intelligentonlinemonitoringofrollingbearingdiagnosisandprognosis
AT lantorasolofondraibe intelligentonlinemonitoringofrollingbearingdiagnosisandprognosis
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