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Sulphide capacity prediction of CaO–SiO <sub>2</sub> –MgO–Al <sub>2</sub> O <sub>3</sub> slag system by using regularized extreme learning machine

Zicheng Xin, Jiangshan Zhang, Wen‐Hui Lin, Junguo Zhang, Yu Jin, Jin Zheng, Jiafeng Cui, Qing Liu

2020Ironmaking & Steelmaking Processes Products and Applications23 citationsDOI

Abstract

Desulphurization is essential in the steelmaking process for high-quality steel production, and sulphide capacity has proven to be an effective index to evaluate the desulphurization ability of molten slag or flux. Several analytical or empirical models have been proposed to calculate the sulphide capacity. However, these models usually show insufficient generalization ability when new variables/data are introduced, which limits their practical application. In this work, experimental data were collected from the literature and a regularized extreme learning machine (RELM) model was established to predict the sulphide capacity of the CaO–SiO2–MgO–Al2O3 slag system. The results demonstrated that the proposed model is robust for the prediction of sulphide capacity under different conditions. The coefficient of determination (R2), correlation coefficient (r), root-mean-square error (RMSE) of the optimal model reached 0.9763, 0.9881, 0.113, respectively, which outperform the results of the reported models.

Topics & Concepts

SteelmakingSlag (welding)Mean squared errorCorrelation coefficientGeneralizationExtreme learning machineCoefficient of determinationMaterials scienceMetallurgyMathematicsComputer scienceMachine learningStatisticsArtificial neural networkMathematical analysisMetallurgical Processes and ThermodynamicsMachine Learning and ELMMetal Extraction and Bioleaching
Sulphide capacity prediction of CaO–SiO <sub>2</sub> –MgO–Al <sub>2</sub> O <sub>3</sub> slag system by using regularized extreme learning machine | Litcius