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Gearbox fault diagnosis using improved feature representation and multitask learning

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Abstract
A gearbox is a critical rotating component that is used to transmit torque from
one shaft to another. This paper presents a data-driven gearbox fault diagnosis
system in which the issue of variable working conditions namely uneven speed
and the load of the machinery is addressed. Moreover, a mechanism is
suggested that how an improved feature extraction process and data from
multiple tasks can contribute to the overall performance of a fault diagnosis
model. The variable working conditions make a gearbox fault diagnosis a
challenging task. The performance of the existing algorithms in the literature
deteriorates under variable working conditions. In this paper, a refined feature
extraction technique and multitask learning are adopted to address this
variability issue. The feature extraction step helps to explore unique fault
signatures which are helpful to perform gearbox fault diagnosis under
uneven speed and load conditions. Later, these extracted features are
provided to a convolutional neural network (CNN) based multitask learning
(MTL) network to identify the faults in the provided gearbox dataset. A
comparison of the experimental results of the proposed model with that of
several already published state-of-the-art diagnostic techniques suggests the
superiority of the proposed model under uneven speed and load conditions.
Therefore, based on the results the proposed approach can be used for gearbox
fault diagnosis under uneven speed and load conditions.
Author(s)
Muhammad SohaibShahid MunirM. M. Manjurul IslamJungpil ShinFaisal TariqS. M. Mamun Ar RashidJong-Myon Kim
Issued Date
2022
Type
Article
Keyword
gearboxfault diagnosis and prognosiscondition-based monitoringfeature learningnatural language processingmultitask learning
DOI
10.3389/fenrg.2022.998760
URI
https://oak.ulsan.ac.kr/handle/2021.oak/15586
Publisher
FRONTIERS IN ENERGY RESEARCH
Language
영어
ISSN
2296-598X
Citation Volume
10
Citation Number
998760
Citation Start Page
1
Citation End Page
12
Appears in Collections:
Engineering > IT Convergence
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