This work presents three data-driven models based on process data, to estimate different indicators related to process performance in a steel production process. The generated models allow the optimization of the process parameters to achieve optimal performance and quality levels. A new approach based on ensembles has been developed with feature selection methods and four state-of-the-art regression approximations (random forest, gradient boosting, xgboost and neural networks). The results show that the proposed approach makes the prediction more stable reducing the variance for all cases, even in one case, slightly reducing the bias. Furthermore, from the four machine learning paradigms presented, random forest is the one with the best re...
The electric arc furnace has been the subject of extensive research due to its complex and chaotic n...
In the steel industry, the optimization of production processes has become increasingly important in...
Accurate prediction of the roll separating force is critical to assuring the quality of the final pr...
This work presents three data-driven models based on process data, to estimate different indicators ...
© 2018 IEEE. Recent advances in the steel industry have encountered challenges in soliciting decisio...
Iron and steel making processes are very complex in nature and we need prediction tools which can ac...
The steelmaking industry is one of the most energy-intensive industries and is responsible for 4% of...
In process optimization, the setting of the process variables is usually determined by estimating a ...
Forecasting algorithms have been used to support decision making in companies, and it is necessary t...
Export of heat treated steel goods has an important impact on the Swedish economy which brings perfo...
This paper studies an operation optimization problem in a steelmaking process. Shortly before the ta...
Resistance Spot Welding (RSW) is the dominant process to fabricate body closures and structural comp...
In this paper, a novel prediction method for low carbon steel is proposed based on an improved twin ...
This paper proposes a dynamic analytics method based on the least squares support vector machine wit...
Raw data and processed data used in the paper "A predicting model for properties of steel using the ...
The electric arc furnace has been the subject of extensive research due to its complex and chaotic n...
In the steel industry, the optimization of production processes has become increasingly important in...
Accurate prediction of the roll separating force is critical to assuring the quality of the final pr...
This work presents three data-driven models based on process data, to estimate different indicators ...
© 2018 IEEE. Recent advances in the steel industry have encountered challenges in soliciting decisio...
Iron and steel making processes are very complex in nature and we need prediction tools which can ac...
The steelmaking industry is one of the most energy-intensive industries and is responsible for 4% of...
In process optimization, the setting of the process variables is usually determined by estimating a ...
Forecasting algorithms have been used to support decision making in companies, and it is necessary t...
Export of heat treated steel goods has an important impact on the Swedish economy which brings perfo...
This paper studies an operation optimization problem in a steelmaking process. Shortly before the ta...
Resistance Spot Welding (RSW) is the dominant process to fabricate body closures and structural comp...
In this paper, a novel prediction method for low carbon steel is proposed based on an improved twin ...
This paper proposes a dynamic analytics method based on the least squares support vector machine wit...
Raw data and processed data used in the paper "A predicting model for properties of steel using the ...
The electric arc furnace has been the subject of extensive research due to its complex and chaotic n...
In the steel industry, the optimization of production processes has become increasingly important in...
Accurate prediction of the roll separating force is critical to assuring the quality of the final pr...