Fault Analysis Of Process System Using Multi Block Principal Component Analysis

This research looks into the issues of the quality improvement based on process control instead of product control using multivariate statistical process contro. A deterministic model of a proton exchange membrane fuel cell (PEM-FC) power plant was used as a case study to represent a multi variable...

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Main Authors: S. B. Sasongko, K. A. Ibrahim, A. Ahmad
Format: Article
Language:English
Published: Diponegoro University 2017-06-01
Series:Reaktor
Subjects:
Online Access:https://ejournal.undip.ac.id/index.php/reaktor/article/view/15004
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author S. B. Sasongko
K. A. Ibrahim
A. Ahmad
author_facet S. B. Sasongko
K. A. Ibrahim
A. Ahmad
author_sort S. B. Sasongko
collection DOAJ
description This research looks into the issues of the quality improvement based on process control instead of product control using multivariate statistical process contro. A deterministic model of a proton exchange membrane fuel cell (PEM-FC) power plant was used as a case study to represent a multi variable or mukti equipment system. A three-step approach is proposed which  can be classified into fault detection, fault isolation, and faulr diagnosis. The fault detection and the isolation utilize the multivariate analysis and yhe contro chart method , which uses the series multi-block principal component analysis  of extended of PCA method. The series block principal component abalysis is solved using the non linear iteration partial least squares (NIPALS) algorithm. The SB-PCA can advangeouly incorporate the control chart, namely, T2 Hotelling control chart. In the fault diagnosis chart, the normalized variable method was successfully applied in this study with promising results. As a conclution, the result of this study demonstrated the potentials of multivariate statistical process control in solving fault detection and diagnosis problem for multi variable and multi equipment system. Keywords : statistical process control, principal component, fault analysis
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spelling doaj.art-c801bde4acc94872afe892a63c7941e52022-12-21T20:36:34ZengDiponegoro UniversityReaktor0852-07982407-59732017-06-01702616510.14710/reaktor.7.02.61-6511418Fault Analysis Of Process System Using Multi Block Principal Component AnalysisS. B. SasongkoK. A. IbrahimA. AhmadThis research looks into the issues of the quality improvement based on process control instead of product control using multivariate statistical process contro. A deterministic model of a proton exchange membrane fuel cell (PEM-FC) power plant was used as a case study to represent a multi variable or mukti equipment system. A three-step approach is proposed which  can be classified into fault detection, fault isolation, and faulr diagnosis. The fault detection and the isolation utilize the multivariate analysis and yhe contro chart method , which uses the series multi-block principal component analysis  of extended of PCA method. The series block principal component abalysis is solved using the non linear iteration partial least squares (NIPALS) algorithm. The SB-PCA can advangeouly incorporate the control chart, namely, T2 Hotelling control chart. In the fault diagnosis chart, the normalized variable method was successfully applied in this study with promising results. As a conclution, the result of this study demonstrated the potentials of multivariate statistical process control in solving fault detection and diagnosis problem for multi variable and multi equipment system. Keywords : statistical process control, principal component, fault analysishttps://ejournal.undip.ac.id/index.php/reaktor/article/view/15004statistical process control, principal component, fault analysis
spellingShingle S. B. Sasongko
K. A. Ibrahim
A. Ahmad
Fault Analysis Of Process System Using Multi Block Principal Component Analysis
Reaktor
statistical process control, principal component, fault analysis
title Fault Analysis Of Process System Using Multi Block Principal Component Analysis
title_full Fault Analysis Of Process System Using Multi Block Principal Component Analysis
title_fullStr Fault Analysis Of Process System Using Multi Block Principal Component Analysis
title_full_unstemmed Fault Analysis Of Process System Using Multi Block Principal Component Analysis
title_short Fault Analysis Of Process System Using Multi Block Principal Component Analysis
title_sort fault analysis of process system using multi block principal component analysis
topic statistical process control, principal component, fault analysis
url https://ejournal.undip.ac.id/index.php/reaktor/article/view/15004
work_keys_str_mv AT sbsasongko faultanalysisofprocesssystemusingmultiblockprincipalcomponentanalysis
AT kaibrahim faultanalysisofprocesssystemusingmultiblockprincipalcomponentanalysis
AT aahmad faultanalysisofprocesssystemusingmultiblockprincipalcomponentanalysis