A synchronous filter for gear vibration monitoring using computational intelligence

Interaction of various components in rotating machinery like gearboxes may generate excitation forces at various frequencies. These frequencies may sometimes overlap with the frequencies of the forces generated by other components in the system. Conventional vibration spectrum analysis does not atte...

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Main Author: Mdlazi, Lungile Mndileki Zanoxolo
Other Authors: Prof P S Heyns
Published: 2013
Subjects:
Online Access:http://hdl.handle.net/2263/25112
Mdlazi, LMZ 2004, A synchronous filter for gear vibration monitoring using computational intelligence, MEng dissertation, University of Pretoria, Pretoria, viewed yymmdd < http://hdl.handle.net/2263/25112 >
http://upetd.up.ac.za/thesis/available/etd-05302005-095228/
id ndltd-netd.ac.za-oai-union.ndltd.org-up-oai-repository.up.ac.za-2263-25112
record_format oai_dc
collection NDLTD
sources NDLTD
topic Neural networks computer science
Tim-domain analysis
Radial basic functions
Perceptrons
Vibration monitoring
Gearing monitoring
UCTD
spellingShingle Neural networks computer science
Tim-domain analysis
Radial basic functions
Perceptrons
Vibration monitoring
Gearing monitoring
UCTD
Mdlazi, Lungile Mndileki Zanoxolo
A synchronous filter for gear vibration monitoring using computational intelligence
description Interaction of various components in rotating machinery like gearboxes may generate excitation forces at various frequencies. These frequencies may sometimes overlap with the frequencies of the forces generated by other components in the system. Conventional vibration spectrum analysis does not attenuate noise and spectral frequency band overlapping, which in many applications masks the changes in the structural response caused by the deterioration of certain components in the machine. This problem is overcome by the use of time domain averaging (dsynchronous averaging). In time domain averaging, the vibration signal is sampled at a frequency that is synchronized with the rotation of the gear of interest and the samples obtained for each singular position of the gear are ensemble-averaged. When sufficient averages are taken, all the vibration from the gearbox, which is asynchronous with the vibration of the gear, is attenuated. The resulting time synchronously averaged signal obtained through this process indicates the vibration produced during one rotation of the monitored gear. This direct time domain averaging process essentially acts as a broadband noise synchronous filter, which filters out the frequency content that is asynchronous with the vibration of the gear of interest provided that enough averages are taken. The time domain averaging procedure requires an enormous amount of vibration data to execute, making it very difficult to develop online gearbox condition monitoring systems that make use of time domain averaging to enhance their diagnostic capabilities since data acquisition and analysis cannot be done simultaneously. The objective of this research was to develop a more efficient way for calculating the time domain average of a gear vibration signal. A study of Artificial Neural Networks (ANNs) and Support Vector Machines (SVMs) was conducted to assess their suitability for use in time domain averaging. Two time domain averaging models that use ANNs and SVMs were developed. Model 1 uses a single feedforward network configuration to map the input which are rotation synchronized gear vibration signals to the output which is the time domain average of the gear vibration signal, using only a section of the input space. Model 2 operates in two stages. In the first stage, it uses a feedforward network to predict the instantaneous time domain average of the gear vibration after 10 inputs (10 rotation synchronized gear vibration signals) to predict the instantaneous average of the gear rotation. The outputs from the first state are used as inputs to the second stage, where a second feedforward network is used to predict the time domain average of the entire vibration signal. When ANNs and SVMs were implemented, the results indicated that the amount of gear vibration date that is required to calculate the time domain average using Model 1 can be reduced by 75 percent and the amount of gear vibration data that needs to be stored in the data acquisition system when Model 2 is used can be reduced by 83 percent. === Dissertation (M Eng (Mechanical and Aeronautical Engineering))--University of Pretoria, 2006. === Mechanical and Aeronautical Engineering === unrestricted
author2 Prof P S Heyns
author_facet Prof P S Heyns
Mdlazi, Lungile Mndileki Zanoxolo
author Mdlazi, Lungile Mndileki Zanoxolo
author_sort Mdlazi, Lungile Mndileki Zanoxolo
title A synchronous filter for gear vibration monitoring using computational intelligence
title_short A synchronous filter for gear vibration monitoring using computational intelligence
title_full A synchronous filter for gear vibration monitoring using computational intelligence
title_fullStr A synchronous filter for gear vibration monitoring using computational intelligence
title_full_unstemmed A synchronous filter for gear vibration monitoring using computational intelligence
title_sort synchronous filter for gear vibration monitoring using computational intelligence
publishDate 2013
url http://hdl.handle.net/2263/25112
Mdlazi, LMZ 2004, A synchronous filter for gear vibration monitoring using computational intelligence, MEng dissertation, University of Pretoria, Pretoria, viewed yymmdd < http://hdl.handle.net/2263/25112 >
http://upetd.up.ac.za/thesis/available/etd-05302005-095228/
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spelling ndltd-netd.ac.za-oai-union.ndltd.org-up-oai-repository.up.ac.za-2263-251122017-07-20T04:10:47Z A synchronous filter for gear vibration monitoring using computational intelligence Mdlazi, Lungile Mndileki Zanoxolo Prof P S Heyns upetd@up.ac.za Prof T Marwala Mr C J Stander Neural networks computer science Tim-domain analysis Radial basic functions Perceptrons Vibration monitoring Gearing monitoring UCTD Interaction of various components in rotating machinery like gearboxes may generate excitation forces at various frequencies. These frequencies may sometimes overlap with the frequencies of the forces generated by other components in the system. Conventional vibration spectrum analysis does not attenuate noise and spectral frequency band overlapping, which in many applications masks the changes in the structural response caused by the deterioration of certain components in the machine. This problem is overcome by the use of time domain averaging (dsynchronous averaging). In time domain averaging, the vibration signal is sampled at a frequency that is synchronized with the rotation of the gear of interest and the samples obtained for each singular position of the gear are ensemble-averaged. When sufficient averages are taken, all the vibration from the gearbox, which is asynchronous with the vibration of the gear, is attenuated. The resulting time synchronously averaged signal obtained through this process indicates the vibration produced during one rotation of the monitored gear. This direct time domain averaging process essentially acts as a broadband noise synchronous filter, which filters out the frequency content that is asynchronous with the vibration of the gear of interest provided that enough averages are taken. The time domain averaging procedure requires an enormous amount of vibration data to execute, making it very difficult to develop online gearbox condition monitoring systems that make use of time domain averaging to enhance their diagnostic capabilities since data acquisition and analysis cannot be done simultaneously. The objective of this research was to develop a more efficient way for calculating the time domain average of a gear vibration signal. A study of Artificial Neural Networks (ANNs) and Support Vector Machines (SVMs) was conducted to assess their suitability for use in time domain averaging. Two time domain averaging models that use ANNs and SVMs were developed. Model 1 uses a single feedforward network configuration to map the input which are rotation synchronized gear vibration signals to the output which is the time domain average of the gear vibration signal, using only a section of the input space. Model 2 operates in two stages. In the first stage, it uses a feedforward network to predict the instantaneous time domain average of the gear vibration after 10 inputs (10 rotation synchronized gear vibration signals) to predict the instantaneous average of the gear rotation. The outputs from the first state are used as inputs to the second stage, where a second feedforward network is used to predict the time domain average of the entire vibration signal. When ANNs and SVMs were implemented, the results indicated that the amount of gear vibration date that is required to calculate the time domain average using Model 1 can be reduced by 75 percent and the amount of gear vibration data that needs to be stored in the data acquisition system when Model 2 is used can be reduced by 83 percent. Dissertation (M Eng (Mechanical and Aeronautical Engineering))--University of Pretoria, 2006. Mechanical and Aeronautical Engineering unrestricted 2013-09-06T19:20:11Z 2005-06-03 2013-09-06T19:20:11Z 2004-09-01 2006-06-03 2005-05-30 Dissertation http://hdl.handle.net/2263/25112 Mdlazi, LMZ 2004, A synchronous filter for gear vibration monitoring using computational intelligence, MEng dissertation, University of Pretoria, Pretoria, viewed yymmdd < http://hdl.handle.net/2263/25112 > H150/ag http://upetd.up.ac.za/thesis/available/etd-05302005-095228/ © 2004, University of Pretoria. All rights reserved. The copyright in this work vests in the University of Pretoria. No part of this work may be reproduced or transmitted in any form or by any means, without the prior written permission of the University of Pretoria.