4.3 Article

Calcium-Treated Steel Cleanliness Prediction Using High-Dimensional Steelmaking Process Data

Journal

Publisher

SPRINGER HEIDELBERG
DOI: 10.1007/s40192-023-00300-y

Keywords

Steel cleanliness; Inclusion analysis; Partial least squares regression

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A method combining statistics and process engineering using partial least squares regression (PLS) is developed to predict non-metallic inclusion content and composition in steel. The model can accurately predict total oxygen content and Mg/(Mg+Al) ratio, providing enough data to recommend Ca addition based on thermodynamic calculation. It can also predict total inclusion fraction and accurately predict average CaS content and Ca/Al ratio in the tundish. However, model interpretability is hindered by high dimensionality and multicollinearity of the data. Non-metallic inclusion compositions correspond to the expected composition at the onset of CaS formation based on steel composition.
Control of calcium treatment in steel is challenging due to the reactivity of Ca and difficulty of measuring total oxygen of steel in-process to make actionable decisions. In this work, a method combining statistics and process engineering are developed using partial least squares regression (PLS) to predict non-metallic inclusion content (oxides and CaS) and composition at the end of ladle treatment and in the tundish using extensive process data and SEM/EDS-based non-metallic inclusion analysis. Total oxygen at the end of the ladle treatment can be predicted to an accuracy of 7 ppm, and the Mg/(Mg+Al) ratio in inclusions to an accuracy of 3at% providing enough data to recommend Ca addition based on a thermodynamic calculation for the Ca liquid window. Alternatively, the model can predict total inclusion fraction to 20 ppm accuracy, and accurately predict average CaS content and Ca/Al ratio of inclusions in the tundish. Model interpretability is hindered by high dimensionality and multicollinearity of the data. Non-metallic inclusion compositions correspond to the expected composition at the onset of CaS formation based on steel composition.

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