This paper gives a general overview of the challenges present in the research field of Soft Sensor building and proposes a novel architecture for building of Soft Sensors, which copes with the identified challenges. The architecture is inspired and making use of nature-related techniques for computational intelligence. Another aspect, which is addressed by the proposed architecture, are the identified characteristics of the process industry data. The data recorded in the process industry consist usually of certain amount of missing values or sample exceeding meaningful values of the measurements, called data outliers. Other process industry data properties causing problems for the modelling are the collinearity of the data, drifting d...
Soft sensors are used broadly in the industries to predict the process variables which are not meas...
Soft sensors are an essential component of process systems engineering schemes. While soft sensor de...
When it comes to application of computational learning techniques in practical scenarios, like for ...
In process industries, there is a great demand for additional process information such as the produc...
In process industries, there is a great demand for additional process information such as the produc...
In the last two decades Soft Sensors established themselves as a valuable alternative to the traditi...
This work proposes a novel approach to Soft Sensor modelling, where the Soft Sensor is built by a s...
With the predicted depletion of natural resources and alarming environmental issues, sustainable dev...
In the last two decades there has been a large progress in the computational intelligence research ...
The lack of real-time measurement of certain critical product and process characteristics is a major...
Automatic data acquisition systems provide large amounts of streaming data generated by physical sen...
Data-driven soft sensors have gained popularity due to availability of the recorded historical plant...
Recent data-driven soft sensors often use multiple adaptive mechanisms to cope with non-stationary e...
Soft sensors are a gradually expanding technique in the field of industrial measurement. These senso...
Soft Sensors (SSs) are inferential dynamical models employed in industries to perform prediction of ...
Soft sensors are used broadly in the industries to predict the process variables which are not meas...
Soft sensors are an essential component of process systems engineering schemes. While soft sensor de...
When it comes to application of computational learning techniques in practical scenarios, like for ...
In process industries, there is a great demand for additional process information such as the produc...
In process industries, there is a great demand for additional process information such as the produc...
In the last two decades Soft Sensors established themselves as a valuable alternative to the traditi...
This work proposes a novel approach to Soft Sensor modelling, where the Soft Sensor is built by a s...
With the predicted depletion of natural resources and alarming environmental issues, sustainable dev...
In the last two decades there has been a large progress in the computational intelligence research ...
The lack of real-time measurement of certain critical product and process characteristics is a major...
Automatic data acquisition systems provide large amounts of streaming data generated by physical sen...
Data-driven soft sensors have gained popularity due to availability of the recorded historical plant...
Recent data-driven soft sensors often use multiple adaptive mechanisms to cope with non-stationary e...
Soft sensors are a gradually expanding technique in the field of industrial measurement. These senso...
Soft Sensors (SSs) are inferential dynamical models employed in industries to perform prediction of ...
Soft sensors are used broadly in the industries to predict the process variables which are not meas...
Soft sensors are an essential component of process systems engineering schemes. While soft sensor de...
When it comes to application of computational learning techniques in practical scenarios, like for ...