Conventional process monitoring based on principal component analysis (PCA) has been applied to many industrial chemical processes. However, such PCA-based approaches assume that the process is operating in a steady state and consequently that the process data are normally distributed and contain no time correlations. These assumptions significantly limit the applicability of PCA-based approaches to the monitoring of real processes. In this paper, we propose a more exact and realistic process monitoring method that does not require that the process data be normally distributed. Specifically, the concept of conventional PCA is expanded such that a Gaussian mixture model (GMM) is used to approximate the data pattern in the model subspace obta...
Meeting product specifications and process safety have been major concerns in the chemical industry....
Abstract: A robust method for dealing with the gross errors in the data collected for PCA model is p...
Extensive overload of data obtained from batch processes see the need for reduced dimensional analys...
This study proposes a new statistical process monitoring method based on variable distribution chara...
Abnormal event management (AEM) is an important problem in industrial chemical process operations. P...
To better utilize historical process data from faulty operations, supervised learning methods, such ...
To better utilize historical process data from faulty operations, supervised learning methods, such ...
The statistical monitoring of batch manufacturing processes is considered. It is known that conventi...
The statistical monitoring of batch manufacturing processes is considered. It is known that conventi...
Nowadays, modern process plants are following the trend of highly integrated and complex processes a...
Dynamics are inherent characteristics of batch processes, and they may exist not only within a parti...
To better utilize historical process data from faulty operations, supervised learning methods, such ...
Sensitive principal component analysis (SPCA) is proposed to improve the principal component analysi...
Meeting product specifications and process safety have been major concerns in the chemical industry....
Monitoring process upsets and malfunctions as early as possible and then finding and removing the fa...
Meeting product specifications and process safety have been major concerns in the chemical industry....
Abstract: A robust method for dealing with the gross errors in the data collected for PCA model is p...
Extensive overload of data obtained from batch processes see the need for reduced dimensional analys...
This study proposes a new statistical process monitoring method based on variable distribution chara...
Abnormal event management (AEM) is an important problem in industrial chemical process operations. P...
To better utilize historical process data from faulty operations, supervised learning methods, such ...
To better utilize historical process data from faulty operations, supervised learning methods, such ...
The statistical monitoring of batch manufacturing processes is considered. It is known that conventi...
The statistical monitoring of batch manufacturing processes is considered. It is known that conventi...
Nowadays, modern process plants are following the trend of highly integrated and complex processes a...
Dynamics are inherent characteristics of batch processes, and they may exist not only within a parti...
To better utilize historical process data from faulty operations, supervised learning methods, such ...
Sensitive principal component analysis (SPCA) is proposed to improve the principal component analysi...
Meeting product specifications and process safety have been major concerns in the chemical industry....
Monitoring process upsets and malfunctions as early as possible and then finding and removing the fa...
Meeting product specifications and process safety have been major concerns in the chemical industry....
Abstract: A robust method for dealing with the gross errors in the data collected for PCA model is p...
Extensive overload of data obtained from batch processes see the need for reduced dimensional analys...