Thermal condition monitoring system using log-polar mapping, quaternion correlation and max-product fuzzy neural network classification

Nowadays most factories rely on machines to help boost up their production and process Therefore an effective machine condition monitoring system plays an important role in these factories to ensure that their production and process are running smoothly all the time In this paper a new and effective...

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Main Authors: Wong, W.K., Loo, C.K., Lim, W.S., Tan, P.N.
Format: Article
Published: 2010
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Online Access:http://eprints.um.edu.my/5199/
http://ac.els-cdn.com/S0925231210003024/1-s2.0-S0925231210003024-main.pdf?_tid=b2dcac94-2ca1-11e2-90f5-00000aacb362&acdnat=1352708557_acd9ca6c138ab957f487cd45232dbfb3
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spelling my.um.eprints.51992013-03-21T02:04:32Z http://eprints.um.edu.my/5199/ Thermal condition monitoring system using log-polar mapping, quaternion correlation and max-product fuzzy neural network classification Wong, W.K. Loo, C.K. Lim, W.S. Tan, P.N. T Technology (General) Nowadays most factories rely on machines to help boost up their production and process Therefore an effective machine condition monitoring system plays an important role in these factories to ensure that their production and process are running smoothly all the time In this paper a new and effective machine condition monitoring system using log-polar mapper quaternion based thermal image correlator and max-product fuzzy neural network classifier is proposed Two classification characteristics namely peak to sidelobe ratio (PSR) and real to complex ratio of the discrete quaternion correlation output (p-value) are applied in this proposed machine condition monitoring system Large PSR and p-value showed a good match among correlation of the input thermal image with a particular reference image but reversely for small PSR and p-value match In the simulation log-polar mapping is found to have solved the rotation and scaling invariant problems in quaternion based thermal image correlation Besides log-polar mapping can possess two fold data compression capability Log-polar mapping helps smoothen up the output correlation plane hence making better measurement for PSR and p-values The simulation results have also proven that the proposed system is an efficient machine condition monitoring system with an accuracy of more than 94 (C) 2010 Elsevier B V All rights reserved 2010 Article PeerReviewed Wong, W.K. and Loo, C.K. and Lim, W.S. and Tan, P.N. (2010) Thermal condition monitoring system using log-polar mapping, quaternion correlation and max-product fuzzy neural network classification. Neurocomputing, 74 (1-3). pp. 164-177. ISSN 0925-2312 http://ac.els-cdn.com/S0925231210003024/1-s2.0-S0925231210003024-main.pdf?_tid=b2dcac94-2ca1-11e2-90f5-00000aacb362&acdnat=1352708557_acd9ca6c138ab957f487cd45232dbfb3
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic T Technology (General)
spellingShingle T Technology (General)
Wong, W.K.
Loo, C.K.
Lim, W.S.
Tan, P.N.
Thermal condition monitoring system using log-polar mapping, quaternion correlation and max-product fuzzy neural network classification
description Nowadays most factories rely on machines to help boost up their production and process Therefore an effective machine condition monitoring system plays an important role in these factories to ensure that their production and process are running smoothly all the time In this paper a new and effective machine condition monitoring system using log-polar mapper quaternion based thermal image correlator and max-product fuzzy neural network classifier is proposed Two classification characteristics namely peak to sidelobe ratio (PSR) and real to complex ratio of the discrete quaternion correlation output (p-value) are applied in this proposed machine condition monitoring system Large PSR and p-value showed a good match among correlation of the input thermal image with a particular reference image but reversely for small PSR and p-value match In the simulation log-polar mapping is found to have solved the rotation and scaling invariant problems in quaternion based thermal image correlation Besides log-polar mapping can possess two fold data compression capability Log-polar mapping helps smoothen up the output correlation plane hence making better measurement for PSR and p-values The simulation results have also proven that the proposed system is an efficient machine condition monitoring system with an accuracy of more than 94 (C) 2010 Elsevier B V All rights reserved
format Article
author Wong, W.K.
Loo, C.K.
Lim, W.S.
Tan, P.N.
author_facet Wong, W.K.
Loo, C.K.
Lim, W.S.
Tan, P.N.
author_sort Wong, W.K.
title Thermal condition monitoring system using log-polar mapping, quaternion correlation and max-product fuzzy neural network classification
title_short Thermal condition monitoring system using log-polar mapping, quaternion correlation and max-product fuzzy neural network classification
title_full Thermal condition monitoring system using log-polar mapping, quaternion correlation and max-product fuzzy neural network classification
title_fullStr Thermal condition monitoring system using log-polar mapping, quaternion correlation and max-product fuzzy neural network classification
title_full_unstemmed Thermal condition monitoring system using log-polar mapping, quaternion correlation and max-product fuzzy neural network classification
title_sort thermal condition monitoring system using log-polar mapping, quaternion correlation and max-product fuzzy neural network classification
publishDate 2010
url http://eprints.um.edu.my/5199/
http://ac.els-cdn.com/S0925231210003024/1-s2.0-S0925231210003024-main.pdf?_tid=b2dcac94-2ca1-11e2-90f5-00000aacb362&acdnat=1352708557_acd9ca6c138ab957f487cd45232dbfb3
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score 13.214268