Neural bearing faults classifier using inputs based on Fourier and wavelet packet transforms

In this paper one method for bearings diagnosis is proposed and evaluated. This method use signal pattern recognition from mechanical vibrations. Wavelet and Fourier transforms are used for pre-processing the signal and an Artificial Neural Network (ANN) is used as a classifier. Analysis of varianc...

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Main Authors: Víctor Gómez, Ricardo Moreno
Format: Article
Language:English
Published: Universidad de Antioquia 2013-08-01
Series:Revista Facultad de Ingeniería Universidad de Antioquia
Subjects:
Online Access:https://revistas.udea.edu.co/index.php/ingenieria/article/view/16316
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author Víctor Gómez
Ricardo Moreno
author_facet Víctor Gómez
Ricardo Moreno
author_sort Víctor Gómez
collection DOAJ
description In this paper one method for bearings diagnosis is proposed and evaluated. This method use signal pattern recognition from mechanical vibrations. Wavelet and Fourier transforms are used for pre-processing the signal and an Artificial Neural Network (ANN) is used as a classifier. Analysis of variance (ANOVA) is used for evaluating the ANN inputs. ANOVA is performed to compare the effect of the factors: speed, load, outer race fault and rolling element fault on each of the parameters proposed as inputs of the ANN, looking for the best parameters for classifying the faults. About 2000 ANN structures were trained in order to find the most appropriate classifier. The results show that the average of success in classifying was 88,5 % for the scaled conjugate gradient algorithm (trainscg), while the Levenberg Marquardt algorithm (trainlm) presented 91,8 %. Besides, it was possible to achieve 100 % of success in classifying in 7 cases.
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spelling doaj.art-b319405683b94cdfb506a2b998fad3552023-03-23T12:34:23ZengUniversidad de AntioquiaRevista Facultad de Ingeniería Universidad de Antioquia0120-62302422-28442013-08-016710.17533/udea.redin.16316Neural bearing faults classifier using inputs based on Fourier and wavelet packet transformsVíctor Gómez0Ricardo Moreno1University of PamplonaUniversity of Antioquia In this paper one method for bearings diagnosis is proposed and evaluated. This method use signal pattern recognition from mechanical vibrations. Wavelet and Fourier transforms are used for pre-processing the signal and an Artificial Neural Network (ANN) is used as a classifier. Analysis of variance (ANOVA) is used for evaluating the ANN inputs. ANOVA is performed to compare the effect of the factors: speed, load, outer race fault and rolling element fault on each of the parameters proposed as inputs of the ANN, looking for the best parameters for classifying the faults. About 2000 ANN structures were trained in order to find the most appropriate classifier. The results show that the average of success in classifying was 88,5 % for the scaled conjugate gradient algorithm (trainscg), while the Levenberg Marquardt algorithm (trainlm) presented 91,8 %. Besides, it was possible to achieve 100 % of success in classifying in 7 cases. https://revistas.udea.edu.co/index.php/ingenieria/article/view/16316fault diagnosisbearingsartificial neural networks wavelet packet transformmechanical vibrations
spellingShingle Víctor Gómez
Ricardo Moreno
Neural bearing faults classifier using inputs based on Fourier and wavelet packet transforms
Revista Facultad de Ingeniería Universidad de Antioquia
fault diagnosis
bearings
artificial neural networks
wavelet packet transform
mechanical vibrations
title Neural bearing faults classifier using inputs based on Fourier and wavelet packet transforms
title_full Neural bearing faults classifier using inputs based on Fourier and wavelet packet transforms
title_fullStr Neural bearing faults classifier using inputs based on Fourier and wavelet packet transforms
title_full_unstemmed Neural bearing faults classifier using inputs based on Fourier and wavelet packet transforms
title_short Neural bearing faults classifier using inputs based on Fourier and wavelet packet transforms
title_sort neural bearing faults classifier using inputs based on fourier and wavelet packet transforms
topic fault diagnosis
bearings
artificial neural networks
wavelet packet transform
mechanical vibrations
url https://revistas.udea.edu.co/index.php/ingenieria/article/view/16316
work_keys_str_mv AT victorgomez neuralbearingfaultsclassifierusinginputsbasedonfourierandwaveletpackettransforms
AT ricardomoreno neuralbearingfaultsclassifierusinginputsbasedonfourierandwaveletpackettransforms