Remaining Useful Life Prediction for Rolling Element Bearing Based on Ensemble Learning

Information fusion is becoming state-of-the-art methodology for performance assessment of engineering assets. Efficiently and smartly combining multi-source information and relevant models from the interested object, more accurate and reliable diagnostic and prognostic results regarding the object c...

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Main Authors: B. Zhang, L. Zhang, J. Xu
Format: Article
Language:English
Published: AIDIC Servizi S.r.l. 2013-07-01
Series:Chemical Engineering Transactions
Online Access:https://www.cetjournal.it/index.php/cet/article/view/6234
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spelling doaj-ae7ba47e458c48db87ffb9b5b49641c52021-02-21T21:08:57ZengAIDIC Servizi S.r.l.Chemical Engineering Transactions2283-92162013-07-013310.3303/CET1333027Remaining Useful Life Prediction for Rolling Element Bearing Based on Ensemble LearningB. ZhangL. ZhangJ. XuInformation fusion is becoming state-of-the-art methodology for performance assessment of engineering assets. Efficiently and smartly combining multi-source information and relevant models from the interested object, more accurate and reliable diagnostic and prognostic results regarding the object can be achieved, which are especially significant for the condition-based maintenance and prognostics and health management applications. Ensemble learning, as a typical machine learning and decision fusion method, has long been applied in the pattern recognition field and demonstrated promising performance. However, scarce applications of ensemble learning have been found for remaining useful life (RUL) predictions. RUL prediction based on ensemble learning by merging multi-piece information and dynamically updating is proposed in this paper. Specifically, multiple base learners are trained to work as one RUL estimator and weighted averaging with dynamically updated weights upon the latest condition monitoring information is employed to aggregate these RULs to form the final RUL. Rolling element bearing degradation experimental data is used to verify and validate the effectiveness of the proposed method.https://www.cetjournal.it/index.php/cet/article/view/6234
collection DOAJ
language English
format Article
sources DOAJ
author B. Zhang
L. Zhang
J. Xu
spellingShingle B. Zhang
L. Zhang
J. Xu
Remaining Useful Life Prediction for Rolling Element Bearing Based on Ensemble Learning
Chemical Engineering Transactions
author_facet B. Zhang
L. Zhang
J. Xu
author_sort B. Zhang
title Remaining Useful Life Prediction for Rolling Element Bearing Based on Ensemble Learning
title_short Remaining Useful Life Prediction for Rolling Element Bearing Based on Ensemble Learning
title_full Remaining Useful Life Prediction for Rolling Element Bearing Based on Ensemble Learning
title_fullStr Remaining Useful Life Prediction for Rolling Element Bearing Based on Ensemble Learning
title_full_unstemmed Remaining Useful Life Prediction for Rolling Element Bearing Based on Ensemble Learning
title_sort remaining useful life prediction for rolling element bearing based on ensemble learning
publisher AIDIC Servizi S.r.l.
series Chemical Engineering Transactions
issn 2283-9216
publishDate 2013-07-01
description Information fusion is becoming state-of-the-art methodology for performance assessment of engineering assets. Efficiently and smartly combining multi-source information and relevant models from the interested object, more accurate and reliable diagnostic and prognostic results regarding the object can be achieved, which are especially significant for the condition-based maintenance and prognostics and health management applications. Ensemble learning, as a typical machine learning and decision fusion method, has long been applied in the pattern recognition field and demonstrated promising performance. However, scarce applications of ensemble learning have been found for remaining useful life (RUL) predictions. RUL prediction based on ensemble learning by merging multi-piece information and dynamically updating is proposed in this paper. Specifically, multiple base learners are trained to work as one RUL estimator and weighted averaging with dynamically updated weights upon the latest condition monitoring information is employed to aggregate these RULs to form the final RUL. Rolling element bearing degradation experimental data is used to verify and validate the effectiveness of the proposed method.
url https://www.cetjournal.it/index.php/cet/article/view/6234
work_keys_str_mv AT bzhang remainingusefullifepredictionforrollingelementbearingbasedonensemblelearning
AT lzhang remainingusefullifepredictionforrollingelementbearingbasedonensemblelearning
AT jxu remainingusefullifepredictionforrollingelementbearingbasedonensemblelearning
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