Bearing Fault Diagnosis under Variable Rotational Speeds Using Stockwell Transform-Based Vibration Imaging and Transfer Learning

In this paper, discrete orthonormal Stockwell transform (DOST)-based vibration imaging is proposed as a preprocessing step for supporting load and rotational speed invariant scenarios for signals of various health conditions. For any health condition, features can easily be extracted from its genera...

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Main Authors: Md Junayed Hasan, Jong-Myon Kim
Format: Article
Language:English
Published: MDPI AG 2018-11-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/8/12/2357
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spelling doaj-9d544d948fde47d99a8e3fb7608eee032020-11-25T00:56:46ZengMDPI AGApplied Sciences2076-34172018-11-01812235710.3390/app8122357app8122357Bearing Fault Diagnosis under Variable Rotational Speeds Using Stockwell Transform-Based Vibration Imaging and Transfer LearningMd Junayed Hasan0Jong-Myon Kim1School of Computer Engineering and Information Technology, University of Ulsan, Ulsan 44610, KoreaSchool of Computer Engineering and Information Technology, University of Ulsan, Ulsan 44610, KoreaIn this paper, discrete orthonormal Stockwell transform (DOST)-based vibration imaging is proposed as a preprocessing step for supporting load and rotational speed invariant scenarios for signals of various health conditions. For any health condition, features can easily be extracted from its generated health pattern. To automate the feature selection process, a convolutional neural network (CNN)-based transfer learning (TL) approach for diagnosis has also been introduced. Transfer learning allows an established model to use feature knowledge obtained under one set of working conditions through hidden layers to diagnose faults that occur under other working conditions. The network learns from the massive source dataset, and that knowledge is applied to the target data to identify faults. Using the bearing dataset of Case Western Reserve University, the proposed approach yields an average 99.8% classification accuracy and, specifically, 99.99% for healthy condition (HC), 99.95% for inner race fault (IRF), 99.96% for ball fault (BF), 99.68% for outer race fault for 12 o’clock sensor position (ORF@12), 99.93% for outer race fault for 3 o’clock sensor position (ORF@3), and 99.89% for outer race fault for 6 o’clock sensor position (ORF@6). In this paper, the proposed approach is compared with conventional artificial neural networks (ANNs), support vector machines (SVMs), hierarchical CNNs, and deep autoencoders. The proposed approach outperforms these conventional methods in the accuracy under all working conditions.https://www.mdpi.com/2076-3417/8/12/2357Stockwell transformvibration imagingfault diagnosistransfer learningneural networkvibration signals
collection DOAJ
language English
format Article
sources DOAJ
author Md Junayed Hasan
Jong-Myon Kim
spellingShingle Md Junayed Hasan
Jong-Myon Kim
Bearing Fault Diagnosis under Variable Rotational Speeds Using Stockwell Transform-Based Vibration Imaging and Transfer Learning
Applied Sciences
Stockwell transform
vibration imaging
fault diagnosis
transfer learning
neural network
vibration signals
author_facet Md Junayed Hasan
Jong-Myon Kim
author_sort Md Junayed Hasan
title Bearing Fault Diagnosis under Variable Rotational Speeds Using Stockwell Transform-Based Vibration Imaging and Transfer Learning
title_short Bearing Fault Diagnosis under Variable Rotational Speeds Using Stockwell Transform-Based Vibration Imaging and Transfer Learning
title_full Bearing Fault Diagnosis under Variable Rotational Speeds Using Stockwell Transform-Based Vibration Imaging and Transfer Learning
title_fullStr Bearing Fault Diagnosis under Variable Rotational Speeds Using Stockwell Transform-Based Vibration Imaging and Transfer Learning
title_full_unstemmed Bearing Fault Diagnosis under Variable Rotational Speeds Using Stockwell Transform-Based Vibration Imaging and Transfer Learning
title_sort bearing fault diagnosis under variable rotational speeds using stockwell transform-based vibration imaging and transfer learning
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2018-11-01
description In this paper, discrete orthonormal Stockwell transform (DOST)-based vibration imaging is proposed as a preprocessing step for supporting load and rotational speed invariant scenarios for signals of various health conditions. For any health condition, features can easily be extracted from its generated health pattern. To automate the feature selection process, a convolutional neural network (CNN)-based transfer learning (TL) approach for diagnosis has also been introduced. Transfer learning allows an established model to use feature knowledge obtained under one set of working conditions through hidden layers to diagnose faults that occur under other working conditions. The network learns from the massive source dataset, and that knowledge is applied to the target data to identify faults. Using the bearing dataset of Case Western Reserve University, the proposed approach yields an average 99.8% classification accuracy and, specifically, 99.99% for healthy condition (HC), 99.95% for inner race fault (IRF), 99.96% for ball fault (BF), 99.68% for outer race fault for 12 o’clock sensor position (ORF@12), 99.93% for outer race fault for 3 o’clock sensor position (ORF@3), and 99.89% for outer race fault for 6 o’clock sensor position (ORF@6). In this paper, the proposed approach is compared with conventional artificial neural networks (ANNs), support vector machines (SVMs), hierarchical CNNs, and deep autoencoders. The proposed approach outperforms these conventional methods in the accuracy under all working conditions.
topic Stockwell transform
vibration imaging
fault diagnosis
transfer learning
neural network
vibration signals
url https://www.mdpi.com/2076-3417/8/12/2357
work_keys_str_mv AT mdjunayedhasan bearingfaultdiagnosisundervariablerotationalspeedsusingstockwelltransformbasedvibrationimagingandtransferlearning
AT jongmyonkim bearingfaultdiagnosisundervariablerotationalspeedsusingstockwelltransformbasedvibrationimagingandtransferlearning
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