Fault diagnostic model for rotating machinery based on principal component analysis and neural network
In the current economic challenge, methods to accurately predict system failure has become a holy grail in maintenance with the goal to reduce the cost of unavailability due to unscheduled shutdown. This has led to the current research with the aim to achieve a more accurate fault diagnosis for rota...
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Asian Research Publishing Network
2016
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my.utp.eprints.253162021-08-27T12:57:14Z Fault diagnostic model for rotating machinery based on principal component analysis and neural network Muhammad, M.B Sarwar, U. Tahan, M.R. Abdul Karim, Z.A. In the current economic challenge, methods to accurately predict system failure has become a holy grail in maintenance with the goal to reduce the cost of unavailability due to unscheduled shutdown. This has led to the current research with the aim to achieve a more accurate fault diagnosis for rotating machinery using a neural network (NN) with principal component analysis (PCA) as a pre-processing step to fuse multiple sensor data. The multisensor data fusion has been proven to improve the fault detection ability for machinery compared to single source condition monitoring. In this paper, an NN-based methodology is presented, where PCA is applied as preprocessing step to detect the rotating machinery faults during operation. The effectiveness of the proposed model is illustrated by a case study on two shaft industrial gas turbine where the real-time performance monitoring data collected from the plant and used to train and test the proposed algorithm. The analysis results show that the PCA-based fusion process has significantly enhanced the performance of NNbased model when compared against NN algorithm without PCA. © 2006-2016 Asian Research Publishing Network (ARPN). All rights reserved. Asian Research Publishing Network 2016 Article NonPeerReviewed https://www.scopus.com/inward/record.uri?eid=2-s2.0-85009230977&partnerID=40&md5=fca03f86730f7990ca001fa0e14380df Muhammad, M.B and Sarwar, U. and Tahan, M.R. and Abdul Karim, Z.A. (2016) Fault diagnostic model for rotating machinery based on principal component analysis and neural network. ARPN Journal of Engineering and Applied Sciences, 11 (24). pp. 14327-14331. http://eprints.utp.edu.my/25316/ |
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In the current economic challenge, methods to accurately predict system failure has become a holy grail in maintenance with the goal to reduce the cost of unavailability due to unscheduled shutdown. This has led to the current research with the aim to achieve a more accurate fault diagnosis for rotating machinery using a neural network (NN) with principal component analysis (PCA) as a pre-processing step to fuse multiple sensor data. The multisensor data fusion has been proven to improve the fault detection ability for machinery compared to single source condition monitoring. In this paper, an NN-based methodology is presented, where PCA is applied as preprocessing step to detect the rotating machinery faults during operation. The effectiveness of the proposed model is illustrated by a case study on two shaft industrial gas turbine where the real-time performance monitoring data collected from the plant and used to train and test the proposed algorithm. The analysis results show that the PCA-based fusion process has significantly enhanced the performance of NNbased model when compared against NN algorithm without PCA. © 2006-2016 Asian Research Publishing Network (ARPN). All rights reserved. |
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Article |
author |
Muhammad, M.B Sarwar, U. Tahan, M.R. Abdul Karim, Z.A. |
spellingShingle |
Muhammad, M.B Sarwar, U. Tahan, M.R. Abdul Karim, Z.A. Fault diagnostic model for rotating machinery based on principal component analysis and neural network |
author_facet |
Muhammad, M.B Sarwar, U. Tahan, M.R. Abdul Karim, Z.A. |
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Muhammad, M.B |
title |
Fault diagnostic model for rotating machinery based on principal component analysis and neural network |
title_short |
Fault diagnostic model for rotating machinery based on principal component analysis and neural network |
title_full |
Fault diagnostic model for rotating machinery based on principal component analysis and neural network |
title_fullStr |
Fault diagnostic model for rotating machinery based on principal component analysis and neural network |
title_full_unstemmed |
Fault diagnostic model for rotating machinery based on principal component analysis and neural network |
title_sort |
fault diagnostic model for rotating machinery based on principal component analysis and neural network |
publisher |
Asian Research Publishing Network |
publishDate |
2016 |
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https://www.scopus.com/inward/record.uri?eid=2-s2.0-85009230977&partnerID=40&md5=fca03f86730f7990ca001fa0e14380df http://eprints.utp.edu.my/25316/ |
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