The correlation relations of batch process variables are quite complex. For local abnormalities, there is a problem that the variant features are overwhelmed. In addition, batch process variables have obvious non-Gaussian distributions. In response to the above two problems, a new multiple subspace monitoring method called principal component analysis - multiple subspace support vector data description (PCA-MSSVDD) is proposed, which combines the subspace design of latent variables with the SVDD modeling method. Firstly, PCA is introduced to obtain latent variables for removing redundant information. Secondly, the subspace design result is obtained through K-means clustering. Finally, SVDD is introduced to build the monitoring model. Numeri...
In this article, the statistical modeling and online monitoring of nonlinear batch processes are add...
Dynamics are inherent characteristics of batch processes, which may be not only within a batch, but ...
A multimode processes monitoring method using global–local MIC-PCA-SVDD is presented. Our method con...
The correlation relations of batch process variables are quite complex. For local abnormalities, the...
Process monitoring can be considered as a one-class classification problem, the aim of which is to d...
For dynamic batch process monitoring, a two-dimensional dynamic modeling framework has recently been...
Batch process monitoring remains a challenging task due to the inherent time-varying dynamics. The o...
Online batch process monitoring has been a challenging task, as batch processes do not operate aroun...
Complex industrial processes are often non-linear and non-Gaussian, while the traditional principal ...
Complex industrial processes are often non-linear and non-Gaussian, while the traditional principal ...
\ud \ud Online batch process monitoring has been a challenging task, as batch processes do not opera...
Batch processes have been applied in many industries to manufacture high-value-added products and me...
On-line monitoring of penicillin cultivation processes is crucial to the safe production of high-qua...
Abstract: Batch process monitoring to detect the existence and magnitude of changes that cause a dev...
In many industries, the effective monitoring and control of batch processes is crucial to the produc...
In this article, the statistical modeling and online monitoring of nonlinear batch processes are add...
Dynamics are inherent characteristics of batch processes, which may be not only within a batch, but ...
A multimode processes monitoring method using global–local MIC-PCA-SVDD is presented. Our method con...
The correlation relations of batch process variables are quite complex. For local abnormalities, the...
Process monitoring can be considered as a one-class classification problem, the aim of which is to d...
For dynamic batch process monitoring, a two-dimensional dynamic modeling framework has recently been...
Batch process monitoring remains a challenging task due to the inherent time-varying dynamics. The o...
Online batch process monitoring has been a challenging task, as batch processes do not operate aroun...
Complex industrial processes are often non-linear and non-Gaussian, while the traditional principal ...
Complex industrial processes are often non-linear and non-Gaussian, while the traditional principal ...
\ud \ud Online batch process monitoring has been a challenging task, as batch processes do not opera...
Batch processes have been applied in many industries to manufacture high-value-added products and me...
On-line monitoring of penicillin cultivation processes is crucial to the safe production of high-qua...
Abstract: Batch process monitoring to detect the existence and magnitude of changes that cause a dev...
In many industries, the effective monitoring and control of batch processes is crucial to the produc...
In this article, the statistical modeling and online monitoring of nonlinear batch processes are add...
Dynamics are inherent characteristics of batch processes, which may be not only within a batch, but ...
A multimode processes monitoring method using global–local MIC-PCA-SVDD is presented. Our method con...