2017
DOI: 10.1002/cjce.22829
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Semiparametric PCA and bayesian network based process fault diagnosis technique

Abstract: Semiparametric Principal Component Analysis has advantages over Principal Component Analysis (PCA), as it can deal with nonlinear and non‐monotonic correlation and non‐Gaussian distribution process data. In Semiparametric PCA the distance correlation coefficient matrix is used to replace the covariance matrix, and a semi‐parametric Gaussian transformation is used to allow variables to follow multivariate Gaussian distribution. To reduce the cost of monitoring and alarm flooding, a fault diagnosis technique, wh… Show more

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Cited by 27 publications
(17 citation statements)
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“…Since the index of component G (XMEAS [35]) is regarded as product quality variable, process faults IDV (3,4), IDV (9,11), IDV (14,15), and IDV (19) have little impact on product quality, while other faults have a significant impact on quality variables, ie, faults IDV (1,2), IDV (5,6,7,8), IDV (12,13), and IDV (20,21) are more serious. [37] Detailed process monitoring charts of two typical faults IDV (8) and IDV (12) are given by Figures 4 and 5.…”
Section: Resultsmentioning
confidence: 99%
See 1 more Smart Citation
“…Since the index of component G (XMEAS [35]) is regarded as product quality variable, process faults IDV (3,4), IDV (9,11), IDV (14,15), and IDV (19) have little impact on product quality, while other faults have a significant impact on quality variables, ie, faults IDV (1,2), IDV (5,6,7,8), IDV (12,13), and IDV (20,21) are more serious. [37] Detailed process monitoring charts of two typical faults IDV (8) and IDV (12) are given by Figures 4 and 5.…”
Section: Resultsmentioning
confidence: 99%
“…Many potential or minor failures may cause unimaginable consequences. Therefore, the significance of fault diagnosis for maintaining the stability of the production system has gained an increasing amount of attention . As a result, in recent years many new methods have been proposed to effectively diagnose process faults, mainly to improve the use of the production process and decrease maintenance costs .…”
Section: Introductionmentioning
confidence: 99%
“…Approaches having seen fusion with PCA for fault diagnosis in NPPs include FDA (Jamil et al, 2016), conditional Gaussian networks (Atoui et al, 2015), multilevel flow modeling (Peng et al, 2018b), ENNs (Liu et al, 2017), and SVMs (Xin et al, 2019). Additionally, Wang et al (2017) used a semiparametric PCA in combination with a BN.…”
Section: Data-driven Methodsmentioning
confidence: 99%
“…The historical data‐based FDD methods, also known as data‐driven FDD methods, can be classified into statistical methods, shallow machine learning methods, and deep learning methods. The statistical methods include principal component analysis (PCA), partial least square (PLS), independent component analysis (ICA), Fisher discriminant analysis (FDA), and Bayesian theory . Shallow machine learning methods refer to the FDD methods that based on traditional machine learning models other than deep neural networks, including shallow artificial neural network (ANN), support vector machine (SVM), artificial immune system (AIS), k‐nearest neighbour (KNN), and Gaussian mixture model (GMM) .…”
Section: Related Workmentioning
confidence: 99%