An improved turbomachinery conditionmonitoring method using multivariate statistical analysis
Industrial practitioners require a well-structured, proactive and precise conditionmonitoring package in order to optimize turbomachinery operation. Typically, conventional condition monitoring uses built-in software to capture faults or degradation processes based on threshold limits recommended by...
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my.utm.970042022-09-12T04:07:35Z http://eprints.utm.my/id/eprint/97004/ An improved turbomachinery conditionmonitoring method using multivariate statistical analysis Jeyabalan, Harindharan Ooi, Ching Sheng Hui, Kar Hoou Lim, Meng Hee Leong, Mohd. Salman TJ Mechanical engineering and machinery Industrial practitioners require a well-structured, proactive and precise conditionmonitoring package in order to optimize turbomachinery operation. Typically, conventional condition monitoring uses built-in software to capture faults or degradation processes based on threshold limits recommended by the Original Equipment Manufacturer (OEM). However, because OEM manual concurrent monitoring involves abundant information parameters, it is dependent on human intervention, insensitive to the development of machinery faults and tends to generate error-prone outcomes. This study proposes a simplified and advanced healthmonitoring method for turbomachinery using a multivariate statistical analysis (MSA) technique. By exploiting mathematical relationships between OEM recommended variables, the significance of input parameter is identified based on weighting factor. With a highly-correlated input subset, the revised condition monitoring method delivershigher sensitivity and a more accurate performance in investigating machine assessment mode. IAEME Publication 2017 Article PeerReviewed application/pdf en http://eprints.utm.my/id/eprint/97004/1/MohdSalmanLeong2017_AnImprovedTurbomachineryConditionmonitoringMethodUsingMultivariate.pdf Jeyabalan, Harindharan and Ooi, Ching Sheng and Hui, Kar Hoou and Lim, Meng Hee and Leong, Mohd. Salman (2017) An improved turbomachinery conditionmonitoring method using multivariate statistical analysis. International Journal of Mechanical Engineering and Technology, 8 (5). pp. 1147-1159. ISSN 0976-6340 https://iaeme.com/Home/article_id/IJMET_08_05_120 NA |
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TJ Mechanical engineering and machinery Jeyabalan, Harindharan Ooi, Ching Sheng Hui, Kar Hoou Lim, Meng Hee Leong, Mohd. Salman An improved turbomachinery conditionmonitoring method using multivariate statistical analysis |
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Industrial practitioners require a well-structured, proactive and precise conditionmonitoring package in order to optimize turbomachinery operation. Typically, conventional condition monitoring uses built-in software to capture faults or degradation processes based on threshold limits recommended by the Original Equipment Manufacturer (OEM). However, because OEM manual concurrent monitoring involves abundant information parameters, it is dependent on human intervention, insensitive to the development of machinery faults and tends to generate error-prone outcomes. This study proposes a simplified and advanced healthmonitoring method for turbomachinery using a multivariate statistical analysis (MSA) technique. By exploiting mathematical relationships between OEM recommended variables, the significance of input parameter is identified based on weighting factor. With a highly-correlated input subset, the revised condition monitoring method delivershigher sensitivity and a more accurate performance in investigating machine assessment mode. |
format |
Article |
author |
Jeyabalan, Harindharan Ooi, Ching Sheng Hui, Kar Hoou Lim, Meng Hee Leong, Mohd. Salman |
author_facet |
Jeyabalan, Harindharan Ooi, Ching Sheng Hui, Kar Hoou Lim, Meng Hee Leong, Mohd. Salman |
author_sort |
Jeyabalan, Harindharan |
title |
An improved turbomachinery conditionmonitoring method using multivariate statistical analysis |
title_short |
An improved turbomachinery conditionmonitoring method using multivariate statistical analysis |
title_full |
An improved turbomachinery conditionmonitoring method using multivariate statistical analysis |
title_fullStr |
An improved turbomachinery conditionmonitoring method using multivariate statistical analysis |
title_full_unstemmed |
An improved turbomachinery conditionmonitoring method using multivariate statistical analysis |
title_sort |
improved turbomachinery conditionmonitoring method using multivariate statistical analysis |
publisher |
IAEME Publication |
publishDate |
2017 |
url |
http://eprints.utm.my/id/eprint/97004/1/MohdSalmanLeong2017_AnImprovedTurbomachineryConditionmonitoringMethodUsingMultivariate.pdf http://eprints.utm.my/id/eprint/97004/ https://iaeme.com/Home/article_id/IJMET_08_05_120 |
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