Cross‐domain bearing fault diagnosis with refined composite multiscale fuzzy entropy and the self organizing fuzzy classifier

Abstract In this article, the use of refined composite multiscale fuzzy entropy (RCMFE) for cross‐domain diagnosis of bearings is introduced and verified with two publicly available datasets of varying operating conditions, a factor that challenges the diagnostic ability of trained models. For class...

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Main Authors: Esther W. Gituku, James K. Kimotho, Jackson G. Njiri
Format: Article
Language:English
Published: Wiley 2021-03-01
Series:Engineering Reports
Subjects:
Online Access:https://doi.org/10.1002/eng2.12307
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spelling doaj-dde951cdda3a4487bcdd8acc05a251c12021-03-11T04:21:42ZengWileyEngineering Reports2577-81962021-03-0133n/an/a10.1002/eng2.12307Cross‐domain bearing fault diagnosis with refined composite multiscale fuzzy entropy and the self organizing fuzzy classifierEsther W. Gituku0James K. Kimotho1Jackson G. Njiri2Department of Mechatronic Engineering Jomo Kenyatta University of Agriculture and Technology Nairobi KenyaDepartment of Mechanical Engineering Jomo Kenyatta University of Agriculture and Technology Nairobi KenyaDepartment of Mechatronic Engineering Jomo Kenyatta University of Agriculture and Technology Nairobi KenyaAbstract In this article, the use of refined composite multiscale fuzzy entropy (RCMFE) for cross‐domain diagnosis of bearings is introduced and verified with two publicly available datasets of varying operating conditions, a factor that challenges the diagnostic ability of trained models. For classification, the self organizing fuzzy (SOF) classifier is used. The diagnostic framework which primarily only involves extracting RCMFE feature and training the SOF classifier, is able to detect and isolate faults with over 97% accuracy when the classes are comprised of a single fault type and size. Compared to related works, the proposed approach does not require deep learning for feature extraction nor any domain adaptation technique as the RCMFE feature is robust against changing operating conditions. Furthermore, the method does not need target domain data during training. With regard to fault isolation, when the classes in the training data contain all the available fault sizes instead of a single size, the classifier can distinguish inner race faults from outer race and ball fault with an average accuracy of 96%. However, the accuracy for differentiating ball and outer race faults falls slightly to an average of 86%. Thus even for the latter arrangement which poses a tougher transfer learning problem, the proposed approach still performs very well.https://doi.org/10.1002/eng2.12307bearingscross domain diagnosisfuzzy entropyRCMFEself organizing classifier
collection DOAJ
language English
format Article
sources DOAJ
author Esther W. Gituku
James K. Kimotho
Jackson G. Njiri
spellingShingle Esther W. Gituku
James K. Kimotho
Jackson G. Njiri
Cross‐domain bearing fault diagnosis with refined composite multiscale fuzzy entropy and the self organizing fuzzy classifier
Engineering Reports
bearings
cross domain diagnosis
fuzzy entropy
RCMFE
self organizing classifier
author_facet Esther W. Gituku
James K. Kimotho
Jackson G. Njiri
author_sort Esther W. Gituku
title Cross‐domain bearing fault diagnosis with refined composite multiscale fuzzy entropy and the self organizing fuzzy classifier
title_short Cross‐domain bearing fault diagnosis with refined composite multiscale fuzzy entropy and the self organizing fuzzy classifier
title_full Cross‐domain bearing fault diagnosis with refined composite multiscale fuzzy entropy and the self organizing fuzzy classifier
title_fullStr Cross‐domain bearing fault diagnosis with refined composite multiscale fuzzy entropy and the self organizing fuzzy classifier
title_full_unstemmed Cross‐domain bearing fault diagnosis with refined composite multiscale fuzzy entropy and the self organizing fuzzy classifier
title_sort cross‐domain bearing fault diagnosis with refined composite multiscale fuzzy entropy and the self organizing fuzzy classifier
publisher Wiley
series Engineering Reports
issn 2577-8196
publishDate 2021-03-01
description Abstract In this article, the use of refined composite multiscale fuzzy entropy (RCMFE) for cross‐domain diagnosis of bearings is introduced and verified with two publicly available datasets of varying operating conditions, a factor that challenges the diagnostic ability of trained models. For classification, the self organizing fuzzy (SOF) classifier is used. The diagnostic framework which primarily only involves extracting RCMFE feature and training the SOF classifier, is able to detect and isolate faults with over 97% accuracy when the classes are comprised of a single fault type and size. Compared to related works, the proposed approach does not require deep learning for feature extraction nor any domain adaptation technique as the RCMFE feature is robust against changing operating conditions. Furthermore, the method does not need target domain data during training. With regard to fault isolation, when the classes in the training data contain all the available fault sizes instead of a single size, the classifier can distinguish inner race faults from outer race and ball fault with an average accuracy of 96%. However, the accuracy for differentiating ball and outer race faults falls slightly to an average of 86%. Thus even for the latter arrangement which poses a tougher transfer learning problem, the proposed approach still performs very well.
topic bearings
cross domain diagnosis
fuzzy entropy
RCMFE
self organizing classifier
url https://doi.org/10.1002/eng2.12307
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AT jacksongnjiri crossdomainbearingfaultdiagnosiswithrefinedcompositemultiscalefuzzyentropyandtheselforganizingfuzzyclassifier
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