Industries are faced with the choice of suitable process control policies to improve costs, quality and raw material consumption. In the paper pulp industry, it is important to estimate quickly the Chemical Oxygen Demand (COD), a parameter that is highly correlated to product quality. Soft Sensors (SSs) have been established as alternative to hardware sensors and laboratory measurements for mon-itoring and control purposes. However, in real setups it is often difficult to get sufficient data for SS development. This work proposes Ensemble Methods (EMs) as a way to improve the SS performance for small datasets. EMs use a set of models to obtain better prediction. Their success is usually attributed to the diversity. Bootstrap and noise in-je...
Automatic data acquisition systems provide large amounts of streaming data generated by physical sen...
Recent data-driven soft sensors often use multiple adaptive mechanisms to cope with non-stationary e...
In chemical processes, online measurements of all the process variables and parameters required for ...
A soft sensor is an empirical model, which estimates variables that is infeasible to measure on-line...
The enormous technological growth increases the application of machine learning in the petrochemical...
Soft sensors are vital for online predictions of quality-related yet difficult-to-measure variables ...
In Waste-Water Treatment Plant (WWTP) automation, "soft" sensors might be used in conjunction with "...
Recent data-driven soft sensors often use multiple adaptive mechanisms to cope with non-stationary e...
A soft-sensing methodology applicable to batch processes operated under changeable initial condition...
With increasing computational power and the rise of artificial intelligence, there is a growing dema...
The lack of real-time measurement of certain critical product and process characteristics is a major...
In the development of soft sensors for chemical processes, outliers of input variables and the time-...
Abstract In refinery plants key process variables, like contents of process stream and various fuel ...
This paper considers the development of multivariate statistical soft sensors for the online estimat...
Advanced technology for process monitoring and fault diagnosis is widely used in complex industrial ...
Automatic data acquisition systems provide large amounts of streaming data generated by physical sen...
Recent data-driven soft sensors often use multiple adaptive mechanisms to cope with non-stationary e...
In chemical processes, online measurements of all the process variables and parameters required for ...
A soft sensor is an empirical model, which estimates variables that is infeasible to measure on-line...
The enormous technological growth increases the application of machine learning in the petrochemical...
Soft sensors are vital for online predictions of quality-related yet difficult-to-measure variables ...
In Waste-Water Treatment Plant (WWTP) automation, "soft" sensors might be used in conjunction with "...
Recent data-driven soft sensors often use multiple adaptive mechanisms to cope with non-stationary e...
A soft-sensing methodology applicable to batch processes operated under changeable initial condition...
With increasing computational power and the rise of artificial intelligence, there is a growing dema...
The lack of real-time measurement of certain critical product and process characteristics is a major...
In the development of soft sensors for chemical processes, outliers of input variables and the time-...
Abstract In refinery plants key process variables, like contents of process stream and various fuel ...
This paper considers the development of multivariate statistical soft sensors for the online estimat...
Advanced technology for process monitoring and fault diagnosis is widely used in complex industrial ...
Automatic data acquisition systems provide large amounts of streaming data generated by physical sen...
Recent data-driven soft sensors often use multiple adaptive mechanisms to cope with non-stationary e...
In chemical processes, online measurements of all the process variables and parameters required for ...