Advanced technology for process monitoring and fault diagnosis is widely used in complex industrial processes. An important issue that needs to be considered is the ability to monitor key performance indicators (KPIs), which often cannot be measured sufficiently quickly or accurately. This paper proposes a data-driven approach based on maximizing the coefficient of determination for probabilistic soft sensor development when data are missing. Firstly, the problem of missing data in the training sample set is solved using the expectation maximization (EM) algorithm. Then, by maximizing the coefficient of determination, a probability model between secondary variables and the KPIs is developed. Finally, a Gaussian mixture model (GMM) is used t...
Operation performance of chemical, petrochemical and biochemical processes can be enhanced considera...
This paper considers the development of multivariate statistical soft sensors for the online estimat...
Soft-sensor is the most common strategy to estimate the hard-to-measure variables in the chemical pr...
Advanced technology for process monitoring and fault diagnosis is widely used in complex industrial ...
In the development of soft sensors for chemical processes, outliers of input variables and the time-...
Industries are faced with the choice of suitable process control policies to improve costs, quality ...
Prediction uncertainty has rarely been integrated into traditional soft sensors in industrial proces...
In Waste-Water Treatment Plant (WWTP) automation, "soft" sensors might be used in conjunction with "...
The objective of this work is to develop a framework, along with the tools required, for the develop...
This thesis proposes an improved algorithm attributed to its abilities to deal with non-Gaussian dis...
Chemical use advanced automation systems that provide large amounts of accurate data information fro...
Soft sensors have been widely used in the industrial process control to improve the quality of the p...
The lack of real-time measurement of certain critical product and process characteristics is a major...
Principal component regression (PCR) has been widely used for soft sensor modeling and quality predi...
A soft sensor is an empirical model, which estimates variables that is infeasible to measure on-line...
Operation performance of chemical, petrochemical and biochemical processes can be enhanced considera...
This paper considers the development of multivariate statistical soft sensors for the online estimat...
Soft-sensor is the most common strategy to estimate the hard-to-measure variables in the chemical pr...
Advanced technology for process monitoring and fault diagnosis is widely used in complex industrial ...
In the development of soft sensors for chemical processes, outliers of input variables and the time-...
Industries are faced with the choice of suitable process control policies to improve costs, quality ...
Prediction uncertainty has rarely been integrated into traditional soft sensors in industrial proces...
In Waste-Water Treatment Plant (WWTP) automation, "soft" sensors might be used in conjunction with "...
The objective of this work is to develop a framework, along with the tools required, for the develop...
This thesis proposes an improved algorithm attributed to its abilities to deal with non-Gaussian dis...
Chemical use advanced automation systems that provide large amounts of accurate data information fro...
Soft sensors have been widely used in the industrial process control to improve the quality of the p...
The lack of real-time measurement of certain critical product and process characteristics is a major...
Principal component regression (PCR) has been widely used for soft sensor modeling and quality predi...
A soft sensor is an empirical model, which estimates variables that is infeasible to measure on-line...
Operation performance of chemical, petrochemical and biochemical processes can be enhanced considera...
This paper considers the development of multivariate statistical soft sensors for the online estimat...
Soft-sensor is the most common strategy to estimate the hard-to-measure variables in the chemical pr...