In this paper, a novel methodology based on principal component analysis (PCA) is proposed to select the most suitable secondary process variables to be used as soft sensor inputs. In the proposed approach, a matrix is defined that measures the instantaneous sensitivity of each secondary variable to the primary variables to be estimated. The most sensitive secondary variables are then extracted from this matrix by exploiting the properties of PCA, and they are used as input variables for the development of a regression model suitable for on-line implementation. This method has been evaluated by developing a soft sensor that uses temperature measurements and a process regression model to estimate on-line the product compositions for a simula...
Abstract: Since the online measurement of melt index (MI) of polyethylene is difficult, a virtual se...
The main objective in refining units is to keep the product quality within specifications in the fac...
The lack of real-time measurement of certain critical product and process characteristics is a major...
The properties of two multivariate regression techniques, principal component analysis and partial l...
The properties of two multivariate regression techniques, principal component analysis and partial l...
A PLS-based model is developed for a batch distillation process in order to estimate the product com...
The enormous technological growth increases the application of machine learning in the petrochemical...
The development of an inferential soft sensor for a pilot-plant distillation column separating an et...
With increasing computational power and the rise of artificial intelligence, there is a growing dema...
This paper presents the integration of active disturbance rejection control (ADRC) with soft sensors...
A soft sensor is an empirical model, which estimates variables that is infeasible to measure on-line...
Abstract: Measurements of temperatures and flows and pressures are used to estimate the dry point of...
Sensitive principal component analysis (SPCA) is proposed to improve the principal component analysi...
Traditional single model based soft sensors may have poor performance on quality prediction for batc...
AbstractThe distillation is widely used separation technique in oil and gas refineries. Accurate mea...
Abstract: Since the online measurement of melt index (MI) of polyethylene is difficult, a virtual se...
The main objective in refining units is to keep the product quality within specifications in the fac...
The lack of real-time measurement of certain critical product and process characteristics is a major...
The properties of two multivariate regression techniques, principal component analysis and partial l...
The properties of two multivariate regression techniques, principal component analysis and partial l...
A PLS-based model is developed for a batch distillation process in order to estimate the product com...
The enormous technological growth increases the application of machine learning in the petrochemical...
The development of an inferential soft sensor for a pilot-plant distillation column separating an et...
With increasing computational power and the rise of artificial intelligence, there is a growing dema...
This paper presents the integration of active disturbance rejection control (ADRC) with soft sensors...
A soft sensor is an empirical model, which estimates variables that is infeasible to measure on-line...
Abstract: Measurements of temperatures and flows and pressures are used to estimate the dry point of...
Sensitive principal component analysis (SPCA) is proposed to improve the principal component analysi...
Traditional single model based soft sensors may have poor performance on quality prediction for batc...
AbstractThe distillation is widely used separation technique in oil and gas refineries. Accurate mea...
Abstract: Since the online measurement of melt index (MI) of polyethylene is difficult, a virtual se...
The main objective in refining units is to keep the product quality within specifications in the fac...
The lack of real-time measurement of certain critical product and process characteristics is a major...