A histogram statistical method for the detection of localized faults in deep groove ball bearing

This study aims to use the histogram statistical method to establish a deep groove ball bearing fault diagnosis strategy. First, statistical indicators are used to excavate the fault characteristics buried in the vibration signal, and use the histogram to define the characteristic area for fault dia...

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Main Authors: Lin Shang-Chih, Huang Yennun
Format: Article
Language:English
Published: EDP Sciences 2017-01-01
Series:MATEC Web of Conferences
Online Access:https://doi.org/10.1051/matecconf/201712300009
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spelling doaj-de1c2d350c7d4908aef8c734d083dfad2021-03-02T10:36:30ZengEDP SciencesMATEC Web of Conferences2261-236X2017-01-011230000910.1051/matecconf/201712300009matecconf_icpmmt2017_00009A histogram statistical method for the detection of localized faults in deep groove ball bearingLin Shang-ChihHuang YennunThis study aims to use the histogram statistical method to establish a deep groove ball bearing fault diagnosis strategy. First, statistical indicators are used to excavate the fault characteristics buried in the vibration signal, and use the histogram to define the characteristic area for fault diagnosis. The results show that the indicators 1, 3, 6 have better statistical differences. Based on this, the accuracy of pattern recognition for all test data is 100%. Finally, the statistical significance of ball damage was significant, and the results showed high correlation (56∼73%). The correlation between inner race damage model was 49∼57% and healthy model was 52%. As the inner race damage and health model in the statistical sense, there are some similar, so there is a relatively high correlation. In the future research work, it will be committed to mining more representative indicators to enhance the relevance of abnormal characteristics.https://doi.org/10.1051/matecconf/201712300009
collection DOAJ
language English
format Article
sources DOAJ
author Lin Shang-Chih
Huang Yennun
spellingShingle Lin Shang-Chih
Huang Yennun
A histogram statistical method for the detection of localized faults in deep groove ball bearing
MATEC Web of Conferences
author_facet Lin Shang-Chih
Huang Yennun
author_sort Lin Shang-Chih
title A histogram statistical method for the detection of localized faults in deep groove ball bearing
title_short A histogram statistical method for the detection of localized faults in deep groove ball bearing
title_full A histogram statistical method for the detection of localized faults in deep groove ball bearing
title_fullStr A histogram statistical method for the detection of localized faults in deep groove ball bearing
title_full_unstemmed A histogram statistical method for the detection of localized faults in deep groove ball bearing
title_sort histogram statistical method for the detection of localized faults in deep groove ball bearing
publisher EDP Sciences
series MATEC Web of Conferences
issn 2261-236X
publishDate 2017-01-01
description This study aims to use the histogram statistical method to establish a deep groove ball bearing fault diagnosis strategy. First, statistical indicators are used to excavate the fault characteristics buried in the vibration signal, and use the histogram to define the characteristic area for fault diagnosis. The results show that the indicators 1, 3, 6 have better statistical differences. Based on this, the accuracy of pattern recognition for all test data is 100%. Finally, the statistical significance of ball damage was significant, and the results showed high correlation (56∼73%). The correlation between inner race damage model was 49∼57% and healthy model was 52%. As the inner race damage and health model in the statistical sense, there are some similar, so there is a relatively high correlation. In the future research work, it will be committed to mining more representative indicators to enhance the relevance of abnormal characteristics.
url https://doi.org/10.1051/matecconf/201712300009
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AT linshangchih histogramstatisticalmethodforthedetectionoflocalizedfaultsindeepgrooveballbearing
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