Classification of machine fault using principle component analysis, general regression neural network and probabilistic neural network

As a major industry prime mover, induction motor plays an important role in manufacturing. In fact, production can cease its operation if there is some error or fault in the induction motor. In the industry, bearing, stator and rotor fault are the highest among other faults. Thus, this paper is to c...

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Main Authors: Talib, Muhamad Farihin, Nor Azli, Nor Hayati, Othman, Mohd. Fauzi
Format: Article
Published: Universiti Teknikal Malaysia Melaka 2016
Subjects:
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author Talib, Muhamad Farihin
Nor Azli, Nor Hayati
Othman, Mohd. Fauzi
author_facet Talib, Muhamad Farihin
Nor Azli, Nor Hayati
Othman, Mohd. Fauzi
author_sort Talib, Muhamad Farihin
collection ePrints
description As a major industry prime mover, induction motor plays an important role in manufacturing. In fact, production can cease its operation if there is some error or fault in the induction motor. In the industry, bearing, stator and rotor fault are the highest among other faults. Thus, this paper is to compare the accuracy of bearing, stator and rotor fault classification between General Regression Neural Network (GRNN) and Probabilistic Neural Network (PNN) with the previous work using Principle Component Analysis (PCA). The accuracy of fault classification for each method is improved by the selection of features extraction and number of classification. The features extraction used are mean, root mean square, skewness, kurtosis and crest factor. The sample data has been taken from Machinery Fault Simulator using accelerometer sensor, logged to text file using Labview software and analysed by using Matlab software. The accuracy of fault classification using GRNN method is higher than PNN because the sample data is classified through the regression of data as long as the sample data is redundant and lies on the regression distribution.
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spelling utm.eprints-670212017-11-20T08:52:05Z http://eprints.utm.my/67021/ Classification of machine fault using principle component analysis, general regression neural network and probabilistic neural network Talib, Muhamad Farihin Nor Azli, Nor Hayati Othman, Mohd. Fauzi T Technology As a major industry prime mover, induction motor plays an important role in manufacturing. In fact, production can cease its operation if there is some error or fault in the induction motor. In the industry, bearing, stator and rotor fault are the highest among other faults. Thus, this paper is to compare the accuracy of bearing, stator and rotor fault classification between General Regression Neural Network (GRNN) and Probabilistic Neural Network (PNN) with the previous work using Principle Component Analysis (PCA). The accuracy of fault classification for each method is improved by the selection of features extraction and number of classification. The features extraction used are mean, root mean square, skewness, kurtosis and crest factor. The sample data has been taken from Machinery Fault Simulator using accelerometer sensor, logged to text file using Labview software and analysed by using Matlab software. The accuracy of fault classification using GRNN method is higher than PNN because the sample data is classified through the regression of data as long as the sample data is redundant and lies on the regression distribution. Universiti Teknikal Malaysia Melaka 2016-01-12 Article PeerReviewed Talib, Muhamad Farihin and Nor Azli, Nor Hayati and Othman, Mohd. Fauzi (2016) Classification of machine fault using principle component analysis, general regression neural network and probabilistic neural network. Journal of Telecommunication, Electronic & Computer Engineering, 8 (11). pp. 93-98. ISSN 2180-1843 http://journal.utem.edu.my/index.php/jtec/article/view/1416
spellingShingle T Technology
Talib, Muhamad Farihin
Nor Azli, Nor Hayati
Othman, Mohd. Fauzi
Classification of machine fault using principle component analysis, general regression neural network and probabilistic neural network
title Classification of machine fault using principle component analysis, general regression neural network and probabilistic neural network
title_full Classification of machine fault using principle component analysis, general regression neural network and probabilistic neural network
title_fullStr Classification of machine fault using principle component analysis, general regression neural network and probabilistic neural network
title_full_unstemmed Classification of machine fault using principle component analysis, general regression neural network and probabilistic neural network
title_short Classification of machine fault using principle component analysis, general regression neural network and probabilistic neural network
title_sort classification of machine fault using principle component analysis general regression neural network and probabilistic neural network
topic T Technology
work_keys_str_mv AT talibmuhamadfarihin classificationofmachinefaultusingprinciplecomponentanalysisgeneralregressionneuralnetworkandprobabilisticneuralnetwork
AT norazlinorhayati classificationofmachinefaultusingprinciplecomponentanalysisgeneralregressionneuralnetworkandprobabilisticneuralnetwork
AT othmanmohdfauzi classificationofmachinefaultusingprinciplecomponentanalysisgeneralregressionneuralnetworkandprobabilisticneuralnetwork