Features for Fault Diagnosis and Prognosis of Gearbox

Good features are critical for both fault diagnosis and prognosis of gearbox. Most traditional features are effective only when the gearbox is under stationary operating condition. Some features which are modified based on the traditional features are no longer sensitive to load changes and remain s...

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Main Authors: X. Zhang, J. Kang, J.S. Zhao, D.C. Cao
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/6379
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spelling doaj-958ee41185224fca9afa6f18538095a62021-02-21T21:06:22ZengAIDIC Servizi S.r.l.Chemical Engineering Transactions2283-92162013-07-013310.3303/CET1333172Features for Fault Diagnosis and Prognosis of GearboxX. ZhangJ. KangJ.S. ZhaoD.C. CaoGood features are critical for both fault diagnosis and prognosis of gearbox. Most traditional features are effective only when the gearbox is under stationary operating condition. Some features which are modified based on the traditional features are no longer sensitive to load changes and remain sensitive to fault propagation. However, it is only permit the load changing in a very small range. In engineering applications, some machines usually work in a non-stationary operating condition; both speed and load are varying over a wide range (e.g. wind turbine). So, in order to solve this dilemma, we propose using the energy ratio between residual signal and deterministic periodic signal which is separated by autoregressive model as the condition indicator for fault diagnosis and prognosis. The effectiveness of this feature is demonstrated and compared to other traditional features using two run-to-failure data sets of gearbox collected in laboratory.https://www.cetjournal.it/index.php/cet/article/view/6379
collection DOAJ
language English
format Article
sources DOAJ
author X. Zhang
J. Kang
J.S. Zhao
D.C. Cao
spellingShingle X. Zhang
J. Kang
J.S. Zhao
D.C. Cao
Features for Fault Diagnosis and Prognosis of Gearbox
Chemical Engineering Transactions
author_facet X. Zhang
J. Kang
J.S. Zhao
D.C. Cao
author_sort X. Zhang
title Features for Fault Diagnosis and Prognosis of Gearbox
title_short Features for Fault Diagnosis and Prognosis of Gearbox
title_full Features for Fault Diagnosis and Prognosis of Gearbox
title_fullStr Features for Fault Diagnosis and Prognosis of Gearbox
title_full_unstemmed Features for Fault Diagnosis and Prognosis of Gearbox
title_sort features for fault diagnosis and prognosis of gearbox
publisher AIDIC Servizi S.r.l.
series Chemical Engineering Transactions
issn 2283-9216
publishDate 2013-07-01
description Good features are critical for both fault diagnosis and prognosis of gearbox. Most traditional features are effective only when the gearbox is under stationary operating condition. Some features which are modified based on the traditional features are no longer sensitive to load changes and remain sensitive to fault propagation. However, it is only permit the load changing in a very small range. In engineering applications, some machines usually work in a non-stationary operating condition; both speed and load are varying over a wide range (e.g. wind turbine). So, in order to solve this dilemma, we propose using the energy ratio between residual signal and deterministic periodic signal which is separated by autoregressive model as the condition indicator for fault diagnosis and prognosis. The effectiveness of this feature is demonstrated and compared to other traditional features using two run-to-failure data sets of gearbox collected in laboratory.
url https://www.cetjournal.it/index.php/cet/article/view/6379
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AT jkang featuresforfaultdiagnosisandprognosisofgearbox
AT jszhao featuresforfaultdiagnosisandprognosisofgearbox
AT dccao featuresforfaultdiagnosisandprognosisofgearbox
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