Soft Sensors (SSs) are inferential dynamical models employed in industries to perform prediction of process hard-to-measure variables based on their relation with easily accessible ones. They allow implementation of real-time control and monitoring of the plants and present other advantages in terms of costs and efforts. Given the complexity of industrial processes, these models are generally designed with data-driven black-box machine learning (ML) techniques. ML methods work well only if the data on which the prediction is performed share the same distribution with the one on which the model was trained. This is not always possible, since plants can often show new working conditions. Even similar plants show different data distributions, ...
In process industries, there is a great demand for additional process information such as the produc...
Abstract – Soft sensors are used widely to estimate a process variable which is difficult to measure...
The lack of real-time measurement of certain critical product and process characteristics is a major...
Soft sensors are a gradually expanding technique in the field of industrial measurement. These senso...
The enormous technological growth increases the application of machine learning in the petrochemical...
Soft-sensor is the most common strategy to estimate the hard-to-measure variables in the chemical pr...
A soft sensor is an empirical model, which estimates variables that is infeasible to measure on-line...
Soft-sensors are widely utilized for predictions of important but hard-to-measure variables in indus...
In this paper, a novel soft sensor is developed by combining long short-term memory (LSTM) network w...
Soft-sensors are widely utilized for predictions of important but hard-to-measure variables in indus...
Soft-sensors are widely utilized for predictions of important but hard-to-measure variables in indus...
In process industries, there is a great demand for additional process information such as the produc...
We propose a soft sensing method using local partial least squares models with adaptive process stat...
This work proposes a novel approach to Soft Sensor modelling, where the Soft Sensor is built by a s...
This paper gives a general overview of the challenges present in the research field of Soft Sensor ...
In process industries, there is a great demand for additional process information such as the produc...
Abstract – Soft sensors are used widely to estimate a process variable which is difficult to measure...
The lack of real-time measurement of certain critical product and process characteristics is a major...
Soft sensors are a gradually expanding technique in the field of industrial measurement. These senso...
The enormous technological growth increases the application of machine learning in the petrochemical...
Soft-sensor is the most common strategy to estimate the hard-to-measure variables in the chemical pr...
A soft sensor is an empirical model, which estimates variables that is infeasible to measure on-line...
Soft-sensors are widely utilized for predictions of important but hard-to-measure variables in indus...
In this paper, a novel soft sensor is developed by combining long short-term memory (LSTM) network w...
Soft-sensors are widely utilized for predictions of important but hard-to-measure variables in indus...
Soft-sensors are widely utilized for predictions of important but hard-to-measure variables in indus...
In process industries, there is a great demand for additional process information such as the produc...
We propose a soft sensing method using local partial least squares models with adaptive process stat...
This work proposes a novel approach to Soft Sensor modelling, where the Soft Sensor is built by a s...
This paper gives a general overview of the challenges present in the research field of Soft Sensor ...
In process industries, there is a great demand for additional process information such as the produc...
Abstract – Soft sensors are used widely to estimate a process variable which is difficult to measure...
The lack of real-time measurement of certain critical product and process characteristics is a major...