Induction motor bearing fault classification using deep neural network with particle swarm optimization‐extreme gradient boosting

Abstract Intelligent motor fault diagnosis in industrial applications requires identifying key characteristics to differentiate various fault types effectively. Solely relying on statistical features cannot guarantee high classification accuracy, while complex feature extraction techniques can pose...

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Main Authors: Chun‐Yao Lee, Edu Daryl C. Maceren
Format: Article
Language:English
Published: Wiley 2024-03-01
Series:IET Electric Power Applications
Subjects:
Online Access:https://doi.org/10.1049/elp2.12389
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author Chun‐Yao Lee
Edu Daryl C. Maceren
author_facet Chun‐Yao Lee
Edu Daryl C. Maceren
author_sort Chun‐Yao Lee
collection DOAJ
description Abstract Intelligent motor fault diagnosis in industrial applications requires identifying key characteristics to differentiate various fault types effectively. Solely relying on statistical features cannot guarantee high classification accuracy, while complex feature extraction techniques can pose challenges for industry practitioners. Conversely, advanced feature extraction may not ensure that the model effectively learns these features for classification. A feature fusion approach that combines statistical and deep learning features to address these challenges is proposed. Since statistical features form the foundation for general feature extraction, statistical and deep learning features are combined using Extreme Gradient Boosting (XGBoost) algorithm with Particle Swarm Optimization (PSO). The PSO algorithm automates parameter tuning for XGBoost. A deep neural network (DNN) adaptively extracts hidden features, improving bearing fault classification precision using t‐SNE representation. Results successfully prove the DNN's ability to classify diverse motor faults using deep learning features. Thus, integrating statistical features with XGBoost further enhances DNN's performance. To ensure robustness, the proposed method has been compared with different motor fault classification methods and validated across different motor fault datasets, showcasing improved classification accuracy and robust performance, even amidst varying noise levels. This approach represents a promising advancement in intelligent fault diagnosis within industrial contexts.
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spelling doaj.art-229ac409d8524390b07469c1ae12a9392024-03-09T07:01:25ZengWileyIET Electric Power Applications1751-86601751-86792024-03-0118329731110.1049/elp2.12389Induction motor bearing fault classification using deep neural network with particle swarm optimization‐extreme gradient boostingChun‐Yao Lee0Edu Daryl C. Maceren1Department of Electrical Engineering National Taiwan University of Science and Technology Taipei City TaiwanDepartment of Electrical Engineering Chung Yuan Christian University Taoyuan City TaiwanAbstract Intelligent motor fault diagnosis in industrial applications requires identifying key characteristics to differentiate various fault types effectively. Solely relying on statistical features cannot guarantee high classification accuracy, while complex feature extraction techniques can pose challenges for industry practitioners. Conversely, advanced feature extraction may not ensure that the model effectively learns these features for classification. A feature fusion approach that combines statistical and deep learning features to address these challenges is proposed. Since statistical features form the foundation for general feature extraction, statistical and deep learning features are combined using Extreme Gradient Boosting (XGBoost) algorithm with Particle Swarm Optimization (PSO). The PSO algorithm automates parameter tuning for XGBoost. A deep neural network (DNN) adaptively extracts hidden features, improving bearing fault classification precision using t‐SNE representation. Results successfully prove the DNN's ability to classify diverse motor faults using deep learning features. Thus, integrating statistical features with XGBoost further enhances DNN's performance. To ensure robustness, the proposed method has been compared with different motor fault classification methods and validated across different motor fault datasets, showcasing improved classification accuracy and robust performance, even amidst varying noise levels. This approach represents a promising advancement in intelligent fault diagnosis within industrial contexts.https://doi.org/10.1049/elp2.12389fault currentsfeature extractionfeedforward neural netsinduction motorsrolling bearingsvibrational signal processing
spellingShingle Chun‐Yao Lee
Edu Daryl C. Maceren
Induction motor bearing fault classification using deep neural network with particle swarm optimization‐extreme gradient boosting
IET Electric Power Applications
fault currents
feature extraction
feedforward neural nets
induction motors
rolling bearings
vibrational signal processing
title Induction motor bearing fault classification using deep neural network with particle swarm optimization‐extreme gradient boosting
title_full Induction motor bearing fault classification using deep neural network with particle swarm optimization‐extreme gradient boosting
title_fullStr Induction motor bearing fault classification using deep neural network with particle swarm optimization‐extreme gradient boosting
title_full_unstemmed Induction motor bearing fault classification using deep neural network with particle swarm optimization‐extreme gradient boosting
title_short Induction motor bearing fault classification using deep neural network with particle swarm optimization‐extreme gradient boosting
title_sort induction motor bearing fault classification using deep neural network with particle swarm optimization extreme gradient boosting
topic fault currents
feature extraction
feedforward neural nets
induction motors
rolling bearings
vibrational signal processing
url https://doi.org/10.1049/elp2.12389
work_keys_str_mv AT chunyaolee inductionmotorbearingfaultclassificationusingdeepneuralnetworkwithparticleswarmoptimizationextremegradientboosting
AT edudarylcmaceren inductionmotorbearingfaultclassificationusingdeepneuralnetworkwithparticleswarmoptimizationextremegradientboosting