Ultrasonic acoustic health monitoring of ball bearings using neural network pattern classification of power spectral density
This thesis presents a generic passive non-contact based acoustic health monitoring approach using ultrasonic acoustic emissions (UAE) to facilitate classification of bearing health via neural networks. This generic approach is applied to classifying the operating condition of conventional ball bea...
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ndltd-VTETD-oai-vtechworks.lib.vt.edu-10919-361302020-09-29T05:46:47Z Ultrasonic acoustic health monitoring of ball bearings using neural network pattern classification of power spectral density Kirchner, William Thomas Mechanical Engineering Southward, Steve C. Inman, Daniel J. Ahmadian, Mehdi Artificial Training Data Bearings Artificial Neural Networks Health Monitoring Acoustics Emissions Ultrasonic This thesis presents a generic passive non-contact based acoustic health monitoring approach using ultrasonic acoustic emissions (UAE) to facilitate classification of bearing health via neural networks. This generic approach is applied to classifying the operating condition of conventional ball bearings. The acoustic emission signals used in this study are in the ultrasonic range (20-120 kHz), which is significantly higher than the majority of the research in this area thus far. A direct benefit of working in this frequency range is the inherent directionality of the microphones capable of measurement in this range, which becomes particularly useful when operating in environments with low signal-to-noise ratios. Using the UAE power spectrum signature, it is possible to pose the health monitoring problem as a multi-class classification problem, and make use of a multi-layer artificial neural network (ANN) to classify the UAE signature. One major problem limiting the usefulness of ANN's for failure classification is the need for large quantities of training data. Artificial training data, based on statistical properties of a significantly smaller experimental data set is created using the combination of a normal distribution and a coordinate transformation. The artificial training data provides a sufficient sized data set to train the neural network, as well as overcome the curse of dimensionality. The combination of the artificial training methods and ultrasonic frequency range being used results in an approach generic enough to suggest that this particular method is applicable to a variety of systems and components where persistent UAE exist. Master of Science 2014-03-14T20:49:32Z 2014-03-14T20:49:32Z 2009-11-11 2009-12-14 2010-01-12 2010-01-12 Thesis etd-12142009-110105 http://hdl.handle.net/10919/36130 http://scholar.lib.vt.edu/theses/available/etd-12142009-110105/ Beena_Vision_Copyright_Approval.pdf Avisoft_Copyright_Approval.pdf Kirchner_WT_T_2009.pdf In Copyright http://rightsstatements.org/vocab/InC/1.0/ application/pdf application/pdf application/pdf Virginia Tech |
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Artificial Training Data Bearings Artificial Neural Networks Health Monitoring Acoustics Emissions Ultrasonic |
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Artificial Training Data Bearings Artificial Neural Networks Health Monitoring Acoustics Emissions Ultrasonic Kirchner, William Thomas Ultrasonic acoustic health monitoring of ball bearings using neural network pattern classification of power spectral density |
description |
This thesis presents a generic passive non-contact based acoustic health monitoring approach using ultrasonic acoustic emissions (UAE) to facilitate classification of bearing health via neural networks. This generic approach is applied to classifying the operating condition of conventional ball bearings. The acoustic emission signals used in this study are in the ultrasonic range (20-120 kHz), which is significantly higher than the majority of the research in this area thus far. A direct benefit of working in this frequency range is the inherent directionality of the microphones capable of measurement in this range, which becomes particularly useful when operating in environments with low signal-to-noise ratios. Using the UAE power spectrum signature, it is possible to pose the health monitoring problem as a multi-class classification problem, and make use of a multi-layer artificial neural network (ANN) to classify the UAE signature. One major problem limiting the usefulness of ANN's for failure classification is the need for large quantities of training data. Artificial training data, based on statistical properties of a significantly smaller experimental data set is created using the combination of a normal distribution and a coordinate transformation. The artificial training data provides a sufficient sized data set to train the neural network, as well as overcome the curse of dimensionality. The combination of the artificial training methods and ultrasonic frequency range being used results in an approach generic enough to suggest that this particular method is applicable to a variety of systems and components where persistent UAE exist. === Master of Science |
author2 |
Mechanical Engineering |
author_facet |
Mechanical Engineering Kirchner, William Thomas |
author |
Kirchner, William Thomas |
author_sort |
Kirchner, William Thomas |
title |
Ultrasonic acoustic health monitoring of ball bearings using neural network pattern classification of power spectral density |
title_short |
Ultrasonic acoustic health monitoring of ball bearings using neural network pattern classification of power spectral density |
title_full |
Ultrasonic acoustic health monitoring of ball bearings using neural network pattern classification of power spectral density |
title_fullStr |
Ultrasonic acoustic health monitoring of ball bearings using neural network pattern classification of power spectral density |
title_full_unstemmed |
Ultrasonic acoustic health monitoring of ball bearings using neural network pattern classification of power spectral density |
title_sort |
ultrasonic acoustic health monitoring of ball bearings using neural network pattern classification of power spectral density |
publisher |
Virginia Tech |
publishDate |
2014 |
url |
http://hdl.handle.net/10919/36130 http://scholar.lib.vt.edu/theses/available/etd-12142009-110105/ |
work_keys_str_mv |
AT kirchnerwilliamthomas ultrasonicacoustichealthmonitoringofballbearingsusingneuralnetworkpatternclassificationofpowerspectraldensity |
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1719346485971124224 |