In industrial processes, it is of great significance to carry out steady-state detection (SSD) for effective system modeling, operation optimization, performance evaluation and process monitoring. Traditional SSD approaches often need to identify process state for each variable and obtain a composite index with sliding window technique, which ignores the variable correlations and is time consuming. Moreover, they can only provide the state of each whole window that slides along data series. To deal with these problems, a novel sliding window PCA-IPF (principal component analysis-improved polynomial fitting) based method is proposed for steady-state detection. In the proposed framework, principal component analysis is first used to eliminate...
PubMedID: 21251651Principal Component Analysis (PCA) is a statistical process monitoring technique t...
Online steady state identification (SSID) is an important task to ensure the quality consistence of ...
. Abstract:- A new approach for fault detection and monitoring based on the parameters identificatio...
Pearson’s correlation measure is only able to model linear dependence between random variables. Henc...
In this paper, a new nonlinear process monitoring technique based on kernel principal component anal...
Complex industrial processes are often non-linear and non-Gaussian, while the traditional principal ...
7th International Conference on Electrical and Electronics Engineering, ELECO 2011 --1 December 2011...
Abstract: In this paper, a new nonlinear process monitoring technique based upon kernel principal co...
Kernel principal component analysis (KPCA) has been found to be one of the promising methods for non...
The control charts with the Principal Component Analysis (PCA) approach and its extension are among ...
Sensitive principal component analysis (SPCA) is proposed to improve the principal component analysi...
Conventional process monitoring based on principal component analysis (PCA) has been applied to many...
Principal Component Analysis(PCA) reduces the dimensionality of the process by creating a new set of...
Abnormal event management (AEM) is an important problem in industrial chemical process operations. P...
Scale-invariant principal component analysis (PCA) is prevalent in process monitoring because of its...
PubMedID: 21251651Principal Component Analysis (PCA) is a statistical process monitoring technique t...
Online steady state identification (SSID) is an important task to ensure the quality consistence of ...
. Abstract:- A new approach for fault detection and monitoring based on the parameters identificatio...
Pearson’s correlation measure is only able to model linear dependence between random variables. Henc...
In this paper, a new nonlinear process monitoring technique based on kernel principal component anal...
Complex industrial processes are often non-linear and non-Gaussian, while the traditional principal ...
7th International Conference on Electrical and Electronics Engineering, ELECO 2011 --1 December 2011...
Abstract: In this paper, a new nonlinear process monitoring technique based upon kernel principal co...
Kernel principal component analysis (KPCA) has been found to be one of the promising methods for non...
The control charts with the Principal Component Analysis (PCA) approach and its extension are among ...
Sensitive principal component analysis (SPCA) is proposed to improve the principal component analysi...
Conventional process monitoring based on principal component analysis (PCA) has been applied to many...
Principal Component Analysis(PCA) reduces the dimensionality of the process by creating a new set of...
Abnormal event management (AEM) is an important problem in industrial chemical process operations. P...
Scale-invariant principal component analysis (PCA) is prevalent in process monitoring because of its...
PubMedID: 21251651Principal Component Analysis (PCA) is a statistical process monitoring technique t...
Online steady state identification (SSID) is an important task to ensure the quality consistence of ...
. Abstract:- A new approach for fault detection and monitoring based on the parameters identificatio...