A Novel Capsule Network Based on Wide Convolution and Multi-Scale Convolution for Fault Diagnosis

<b> </b>In the prognostics health management (PHM) of rotating machinery, the accurate identification of bearing fault is critical. In recent years, various deep learning methods can well identify bearing fault based on monitoring data. However, facing changing operating conditions and n...

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Main Authors: Yu Wang, Dejun Ning, Songlin Feng
Format: Article
Language:English
Published: MDPI AG 2020-05-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/10/10/3659
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spelling doaj-4695c1058e8a426d8de1b66fe37c983f2020-11-25T02:54:03ZengMDPI AGApplied Sciences2076-34172020-05-01103659365910.3390/app10103659A Novel Capsule Network Based on Wide Convolution and Multi-Scale Convolution for Fault DiagnosisYu Wang0Dejun Ning1Songlin Feng2Shanghai Advanced Research Institute, Chinese Academy of Sciences, Shanghai 201210, ChinaShanghai Advanced Research Institute, Chinese Academy of Sciences, Shanghai 201210, ChinaShanghai Advanced Research Institute, Chinese Academy of Sciences, Shanghai 201210, China<b> </b>In the prognostics health management (PHM) of rotating machinery, the accurate identification of bearing fault is critical. In recent years, various deep learning methods can well identify bearing fault based on monitoring data. However, facing changing operating conditions and noise pollution, the accuracy of these algorithms decreases significantly, which makes the algorithms difficult in practical applications. To solve this problem, a novel capsule network based on wide convolution and multi-scale convolution (WMSCCN) is proposed for fault diagnosis. The proposed WMSCCN algorithm takes one-dimensional vibration signal as an input and no additional manual processing is required. In addition, the adaptive batch normalization (AdaBN) algorithm is introduced to further enhance the adaptability of WMSCCN under noise pollution and load changes. On generalization experiments under different loads, the proposed WMSCCN and WMSCCN-AdaBN algorithms achieve average accuracy rates of 96.44% and 97.44%, respectively, which is superior to other advanced algorithms. In the noise resistance experiment, the proposed WMSCCN-AdaBN can maintain a 92.3% diagnostic accuracy in a strong noise environment with a signal to noise ratio (SNR) = −4 dB, showing a very strong anti-noise ability. When the SNR exceeds 4 dB, the accuracy reaches 100%, indicating that the proposed algorithm has a very good accuracy at low noise levels. Two experiments have effectively verified the validity and generalizability of the proposed model.https://www.mdpi.com/2076-3417/10/10/3659multi-scale convolutioncapsule networkfault diagnosisadaptive batch normalization
collection DOAJ
language English
format Article
sources DOAJ
author Yu Wang
Dejun Ning
Songlin Feng
spellingShingle Yu Wang
Dejun Ning
Songlin Feng
A Novel Capsule Network Based on Wide Convolution and Multi-Scale Convolution for Fault Diagnosis
Applied Sciences
multi-scale convolution
capsule network
fault diagnosis
adaptive batch normalization
author_facet Yu Wang
Dejun Ning
Songlin Feng
author_sort Yu Wang
title A Novel Capsule Network Based on Wide Convolution and Multi-Scale Convolution for Fault Diagnosis
title_short A Novel Capsule Network Based on Wide Convolution and Multi-Scale Convolution for Fault Diagnosis
title_full A Novel Capsule Network Based on Wide Convolution and Multi-Scale Convolution for Fault Diagnosis
title_fullStr A Novel Capsule Network Based on Wide Convolution and Multi-Scale Convolution for Fault Diagnosis
title_full_unstemmed A Novel Capsule Network Based on Wide Convolution and Multi-Scale Convolution for Fault Diagnosis
title_sort novel capsule network based on wide convolution and multi-scale convolution for fault diagnosis
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2020-05-01
description <b> </b>In the prognostics health management (PHM) of rotating machinery, the accurate identification of bearing fault is critical. In recent years, various deep learning methods can well identify bearing fault based on monitoring data. However, facing changing operating conditions and noise pollution, the accuracy of these algorithms decreases significantly, which makes the algorithms difficult in practical applications. To solve this problem, a novel capsule network based on wide convolution and multi-scale convolution (WMSCCN) is proposed for fault diagnosis. The proposed WMSCCN algorithm takes one-dimensional vibration signal as an input and no additional manual processing is required. In addition, the adaptive batch normalization (AdaBN) algorithm is introduced to further enhance the adaptability of WMSCCN under noise pollution and load changes. On generalization experiments under different loads, the proposed WMSCCN and WMSCCN-AdaBN algorithms achieve average accuracy rates of 96.44% and 97.44%, respectively, which is superior to other advanced algorithms. In the noise resistance experiment, the proposed WMSCCN-AdaBN can maintain a 92.3% diagnostic accuracy in a strong noise environment with a signal to noise ratio (SNR) = −4 dB, showing a very strong anti-noise ability. When the SNR exceeds 4 dB, the accuracy reaches 100%, indicating that the proposed algorithm has a very good accuracy at low noise levels. Two experiments have effectively verified the validity and generalizability of the proposed model.
topic multi-scale convolution
capsule network
fault diagnosis
adaptive batch normalization
url https://www.mdpi.com/2076-3417/10/10/3659
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