A Fault Diagnostic Method for Induction Motors Based on Feature Incremental Broad Learning and Singular Value Decomposition

The occurrence of fault in induction motors is dangerous in our daily life. It is significant to diagnose motor component faults accurately and quickly. In this paper, we propose an efficient and responsive motor fault diagnostic method based on Feature Incremental Broad Learning (FIBL) and Singular...

Full description

Bibliographic Details
Main Authors: Sai Biao Jiang, Pak Kin Wong, Yan Chun Liang
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8886469/
id doaj-3c295824f05a48988bb35f577797b3da
record_format Article
spelling doaj-3c295824f05a48988bb35f577797b3da2021-03-30T00:19:06ZengIEEEIEEE Access2169-35362019-01-01715779615780610.1109/ACCESS.2019.29502408886469A Fault Diagnostic Method for Induction Motors Based on Feature Incremental Broad Learning and Singular Value DecompositionSai Biao Jiang0https://orcid.org/0000-0002-1409-5851Pak Kin Wong1Yan Chun Liang2Zhuhai College of Jilin University, Zhuhai, ChinaDepartment of Electromechanical Engineering, University of Macau, Taipa, MacauZhuhai College of Jilin University, Zhuhai, ChinaThe occurrence of fault in induction motors is dangerous in our daily life. It is significant to diagnose motor component faults accurately and quickly. In this paper, we propose an efficient and responsive motor fault diagnostic method based on Feature Incremental Broad Learning (FIBL) and Singular Value Decomposition (SVD). Firstly, we extract fault features from raw signals with Particle Swarm Optimization-Variation Model Decomposition, Sample Entropy and Time Domain Statistical Features. Secondly, these features are input into a broad learning system to train a network. Then we use FIBL to retrain the network if the diagnosis accuracy is unsatisfactory. Finally, SVD is used to further simplify the system structure to reduce diagnostic errors. In order to evaluate the performance of the diagnostic system, experiments are conducted. Experimental results show that with the proposed diagnostic method, motor component faults detection is quicker and more accurate.https://ieeexplore.ieee.org/document/8886469/Fault diagnosisfeature extractionincremental broad learningsingular value decompositioninduction motor
collection DOAJ
language English
format Article
sources DOAJ
author Sai Biao Jiang
Pak Kin Wong
Yan Chun Liang
spellingShingle Sai Biao Jiang
Pak Kin Wong
Yan Chun Liang
A Fault Diagnostic Method for Induction Motors Based on Feature Incremental Broad Learning and Singular Value Decomposition
IEEE Access
Fault diagnosis
feature extraction
incremental broad learning
singular value decomposition
induction motor
author_facet Sai Biao Jiang
Pak Kin Wong
Yan Chun Liang
author_sort Sai Biao Jiang
title A Fault Diagnostic Method for Induction Motors Based on Feature Incremental Broad Learning and Singular Value Decomposition
title_short A Fault Diagnostic Method for Induction Motors Based on Feature Incremental Broad Learning and Singular Value Decomposition
title_full A Fault Diagnostic Method for Induction Motors Based on Feature Incremental Broad Learning and Singular Value Decomposition
title_fullStr A Fault Diagnostic Method for Induction Motors Based on Feature Incremental Broad Learning and Singular Value Decomposition
title_full_unstemmed A Fault Diagnostic Method for Induction Motors Based on Feature Incremental Broad Learning and Singular Value Decomposition
title_sort fault diagnostic method for induction motors based on feature incremental broad learning and singular value decomposition
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2019-01-01
description The occurrence of fault in induction motors is dangerous in our daily life. It is significant to diagnose motor component faults accurately and quickly. In this paper, we propose an efficient and responsive motor fault diagnostic method based on Feature Incremental Broad Learning (FIBL) and Singular Value Decomposition (SVD). Firstly, we extract fault features from raw signals with Particle Swarm Optimization-Variation Model Decomposition, Sample Entropy and Time Domain Statistical Features. Secondly, these features are input into a broad learning system to train a network. Then we use FIBL to retrain the network if the diagnosis accuracy is unsatisfactory. Finally, SVD is used to further simplify the system structure to reduce diagnostic errors. In order to evaluate the performance of the diagnostic system, experiments are conducted. Experimental results show that with the proposed diagnostic method, motor component faults detection is quicker and more accurate.
topic Fault diagnosis
feature extraction
incremental broad learning
singular value decomposition
induction motor
url https://ieeexplore.ieee.org/document/8886469/
work_keys_str_mv AT saibiaojiang afaultdiagnosticmethodforinductionmotorsbasedonfeatureincrementalbroadlearningandsingularvaluedecomposition
AT pakkinwong afaultdiagnosticmethodforinductionmotorsbasedonfeatureincrementalbroadlearningandsingularvaluedecomposition
AT yanchunliang afaultdiagnosticmethodforinductionmotorsbasedonfeatureincrementalbroadlearningandsingularvaluedecomposition
AT saibiaojiang faultdiagnosticmethodforinductionmotorsbasedonfeatureincrementalbroadlearningandsingularvaluedecomposition
AT pakkinwong faultdiagnosticmethodforinductionmotorsbasedonfeatureincrementalbroadlearningandsingularvaluedecomposition
AT yanchunliang faultdiagnosticmethodforinductionmotorsbasedonfeatureincrementalbroadlearningandsingularvaluedecomposition
_version_ 1724188428715687936