Soft sensors have been widely used in the industrial process control to improve the quality of the product and assure safety in the production. The core of a soft sensor is to construct a soft sensing model. This paper introduces support vector regression (SVR), a new powerful machine learning methodbased on a statistical learning theory (SLT) into soft sensor modeling and proposes a new soft sensing modeling method based on SVR. This paper presents an artificial intelligence based hybrid soft sensormodeling and optimization strategies, namely support vector regression – genetic algorithm (SVR-GA) for modeling and optimization of mono ethylene glycol (MEG) quality variable in a commercial glycol plant. In the SVR-GA approach, a support vect...
Soft sensors are used broadly in the industries to predict the process variables which are not meas...
With the predicted depletion of natural resources and alarming environmental issues, sustainable dev...
Soft sensors are used to estimate the process variables that are hard to measure online in a proces...
This paper presents the development of soft sensor empirical models using support vector machine (SV...
The lack of real-time measurement of certain critical product and process characteristics is a major...
The enormous technological growth increases the application of machine learning in the petrochemical...
This paper describes an approach to design self-developing and self-tuning inferential soft sensors ...
In the last two decades Soft Sensors established themselves as a valuable alternative to the traditi...
AbstractSoft sensors are used in chemical plants to estimate process variables that are difficult to...
Neural network-based soft sensors are developed for kerosene properties estimation, a refinery crude...
Soft sensors are an essential component of process systems engineering schemes. While soft sensor de...
In process industries, there is a great demand for additional process information such as the produc...
Low carbon dioxide in cycle gas loop of ethylene glycol (EG) plant improves catalyst selectivity and...
The marine protease fermentation process is a highly nonlinear, time-varying, multivariable, and str...
This work proposes a novel approach to Soft Sensor modelling, where the Soft Sensor is built by a s...
Soft sensors are used broadly in the industries to predict the process variables which are not meas...
With the predicted depletion of natural resources and alarming environmental issues, sustainable dev...
Soft sensors are used to estimate the process variables that are hard to measure online in a proces...
This paper presents the development of soft sensor empirical models using support vector machine (SV...
The lack of real-time measurement of certain critical product and process characteristics is a major...
The enormous technological growth increases the application of machine learning in the petrochemical...
This paper describes an approach to design self-developing and self-tuning inferential soft sensors ...
In the last two decades Soft Sensors established themselves as a valuable alternative to the traditi...
AbstractSoft sensors are used in chemical plants to estimate process variables that are difficult to...
Neural network-based soft sensors are developed for kerosene properties estimation, a refinery crude...
Soft sensors are an essential component of process systems engineering schemes. While soft sensor de...
In process industries, there is a great demand for additional process information such as the produc...
Low carbon dioxide in cycle gas loop of ethylene glycol (EG) plant improves catalyst selectivity and...
The marine protease fermentation process is a highly nonlinear, time-varying, multivariable, and str...
This work proposes a novel approach to Soft Sensor modelling, where the Soft Sensor is built by a s...
Soft sensors are used broadly in the industries to predict the process variables which are not meas...
With the predicted depletion of natural resources and alarming environmental issues, sustainable dev...
Soft sensors are used to estimate the process variables that are hard to measure online in a proces...