Automatic Diagnosis of Microgrid Networks’ Power Device Faults Based on Stacked Denoising Autoencoders and Adaptive Affinity Propagation Clustering

This paper presents a model based on stacked denoising autoencoders (SDAEs) in deep learning and adaptive affinity propagation (adAP) for bearing fault diagnosis automatically. First, SDAEs are used to extract potential fault features and directly reduce their high dimension to 3. To prove that the...

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Main Authors: Fan Xu, Xin Shu, Xiaodi Zhang, Bo Fan
Format: Article
Language:English
Published: Hindawi-Wiley 2020-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2020/8509142
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spelling doaj-efe1f53c41244bce9d84b3a06a7c09962020-11-25T03:18:59ZengHindawi-WileyComplexity1076-27871099-05262020-01-01202010.1155/2020/85091428509142Automatic Diagnosis of Microgrid Networks’ Power Device Faults Based on Stacked Denoising Autoencoders and Adaptive Affinity Propagation ClusteringFan Xu0Xin Shu1Xiaodi Zhang2Bo Fan3School of Data Science, City University of Hong Kong, Tat Chee Avenue, Kowloon, Hong Kong 990777, ChinaWuhan Bridge Special Technology Company Limited of China Railway Major Bridge Engineering Group, Wuhan 730072, ChinaState Grid Beijing Electric Power Company, Beijing 100080, ChinaOffice of Scientific Research and Development, Wuhan University, Wuhan 430072, ChinaThis paper presents a model based on stacked denoising autoencoders (SDAEs) in deep learning and adaptive affinity propagation (adAP) for bearing fault diagnosis automatically. First, SDAEs are used to extract potential fault features and directly reduce their high dimension to 3. To prove that the feature extraction capability of SDAEs is better than stacked autoencoders (SAEs), principal component analysis (PCA) is employed to compare and reduce their dimension to 3, except for the final hidden layer. Hence, the extracted 3-dimensional features are chosen as the input for adAP cluster models. Compared with other traditional cluster methods, such as the Fuzzy C-mean (FCM), Gustafson–Kessel (GK), Gath–Geva (GG), and affinity propagation (AP), clustering algorithms can identify fault samples without cluster center number selection. However, AP needs to set two key parameters depending on manual experience—the damping factor and the bias parameter—before its calculation. To overcome this drawback, adAP is introduced in this paper. The adAP clustering algorithm can find the available parameters according to the fitness function automatic. Finally, the experimental results prove that SDAEs with adAP are better than other models, including SDAE-FCM/GK/GG according to the cluster assess index (Silhouette) and the classification error rate.http://dx.doi.org/10.1155/2020/8509142
collection DOAJ
language English
format Article
sources DOAJ
author Fan Xu
Xin Shu
Xiaodi Zhang
Bo Fan
spellingShingle Fan Xu
Xin Shu
Xiaodi Zhang
Bo Fan
Automatic Diagnosis of Microgrid Networks’ Power Device Faults Based on Stacked Denoising Autoencoders and Adaptive Affinity Propagation Clustering
Complexity
author_facet Fan Xu
Xin Shu
Xiaodi Zhang
Bo Fan
author_sort Fan Xu
title Automatic Diagnosis of Microgrid Networks’ Power Device Faults Based on Stacked Denoising Autoencoders and Adaptive Affinity Propagation Clustering
title_short Automatic Diagnosis of Microgrid Networks’ Power Device Faults Based on Stacked Denoising Autoencoders and Adaptive Affinity Propagation Clustering
title_full Automatic Diagnosis of Microgrid Networks’ Power Device Faults Based on Stacked Denoising Autoencoders and Adaptive Affinity Propagation Clustering
title_fullStr Automatic Diagnosis of Microgrid Networks’ Power Device Faults Based on Stacked Denoising Autoencoders and Adaptive Affinity Propagation Clustering
title_full_unstemmed Automatic Diagnosis of Microgrid Networks’ Power Device Faults Based on Stacked Denoising Autoencoders and Adaptive Affinity Propagation Clustering
title_sort automatic diagnosis of microgrid networks’ power device faults based on stacked denoising autoencoders and adaptive affinity propagation clustering
publisher Hindawi-Wiley
series Complexity
issn 1076-2787
1099-0526
publishDate 2020-01-01
description This paper presents a model based on stacked denoising autoencoders (SDAEs) in deep learning and adaptive affinity propagation (adAP) for bearing fault diagnosis automatically. First, SDAEs are used to extract potential fault features and directly reduce their high dimension to 3. To prove that the feature extraction capability of SDAEs is better than stacked autoencoders (SAEs), principal component analysis (PCA) is employed to compare and reduce their dimension to 3, except for the final hidden layer. Hence, the extracted 3-dimensional features are chosen as the input for adAP cluster models. Compared with other traditional cluster methods, such as the Fuzzy C-mean (FCM), Gustafson–Kessel (GK), Gath–Geva (GG), and affinity propagation (AP), clustering algorithms can identify fault samples without cluster center number selection. However, AP needs to set two key parameters depending on manual experience—the damping factor and the bias parameter—before its calculation. To overcome this drawback, adAP is introduced in this paper. The adAP clustering algorithm can find the available parameters according to the fitness function automatic. Finally, the experimental results prove that SDAEs with adAP are better than other models, including SDAE-FCM/GK/GG according to the cluster assess index (Silhouette) and the classification error rate.
url http://dx.doi.org/10.1155/2020/8509142
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AT xiaodizhang automaticdiagnosisofmicrogridnetworkspowerdevicefaultsbasedonstackeddenoisingautoencodersandadaptiveaffinitypropagationclustering
AT bofan automaticdiagnosisofmicrogridnetworkspowerdevicefaultsbasedonstackeddenoisingautoencodersandadaptiveaffinitypropagationclustering
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