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Global and Local Feature Extraction Using a Convolutional Autoencoder and Neural Networks for Diagnosing Centrifugal Pump Mechanical Faults

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Abstract
Centrifugal pumps are important types of electro-mechanical machines used for uid and
energy conveyance. Mechanical faults in centrifugal pumps lead to abnormal impacts in the vibration signal
of the system. Those impacts induce nonstationarity in vibration signals and hence complex time-frequency
domain signal analysis techniques are required to investigate the mechanical fault features of centrifugal
pumps. In this paper, an end-to-end pipeline for diagnosing faults in centrifugal pumps is proposed. To create
a two-dimensional representation of the transients that appear in the vibration signals due to centrifugal pump
operating conditions, rst, a 1/3-binary tree fast kurtogram is computed. Next, a convolutional autoencoder
and convolutional neural network are trained to autonomously extract global and local features from the
kurtograms. Then, global, and local features are merged to form a joined feature vector that contains different
visual features that are extracted using convolutional deep architectures using their specic loss functions
during the training. Finally, this feature vector is propagated to a shallow-structured articial neural network
to accomplish fault identication. The proposed framework has been validated by the dataset collected
from a real industrial centrifugal pump test rig. The results obtained during the series of experimental trials
demonstrated that the introduced method achieved high classication accuracies when diagnosing faults
based on signals collected under 3.0 and 4.0 bars of pressure.
Author(s)
프로스비린 알렉산데르아흐마드 자후르김종면
Issued Date
2021
Type
Article
Keyword
Artificial neural networkcentrifugal pumpConvolutionconvolutional autoencoderconvolutional neural networkData miningdeep learningFault diagnosisFeature extractionkurtogramPumpsSealsvibration signalsVibrations
DOI
10.1109/ACCESS.2021.3076571
URI
https://oak.ulsan.ac.kr/handle/2021.oak/9144
https://ulsan-primo.hosted.exlibrisgroup.com/primo-explore/fulldisplay?docid=TN_cdi_doaj_primary_oai_doaj_org_article_6a7feaea69ba4cd9b7ebb53a72a2f83f&context=PC&vid=ULSAN&lang=ko_KR&search_scope=default_scope&adaptor=primo_central_multiple_fe&tab=default_tab&query=any,contains,Global%20and%20Local%20Feature%20Extraction%20Using%20a%20Convolutional%20Autoencoder%20and%20Neural%20Networks%20for%20Diagnosing%20Centrifugal%20Pump%20Mechanical%20Faults&offset=0&pcAvailability=true
Publisher
IEEE ACCESS
Location
미국
Language
영어
ISSN
2169-3536
Citation Volume
9
Citation Number
1
Citation Start Page
65838
Citation End Page
65854
Appears in Collections:
Engineering > IT Convergence
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