Inter-property Correlation of Al2O3-CaO-MgO-SiO2 Quaternary Slag System in Blast Furnace Ironmaking

IF 1.5 4区 材料科学 Q4 CHEMISTRY, PHYSICAL Journal of Phase Equilibria and Diffusion Pub Date : 2024-06-11 DOI:10.1007/s11669-024-01123-w
Sujan Hazra, Devi Dutta Biswajeet, Snehanshu Pal, Supratim Sengupta, Samik Nag, Seshadri Seetharaman
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Abstract

Exploring the correlation between the density and the thermo-physical properties of the Al2O3-CaO-MgO-SiO2 quaternary slag system is a subject of great interest in the domain of high alumina slag systems. This work attempts to establish correlations between (a) molar volume/density with enthalpy of mixing and (b) molar volume/density with slag viscosity, for the quaternary slag systems. The former is targeted based on existing models to determine the slag density and enthalpy of mixing first and then to develop machine-learning models which can suitably extrapolate the enthalpy of mixing as a function of slag composition, temperature and density. The volume shrinkage and the exothermic enthalpy of mixing between the slag constituent components are correlated in the current work. The later part would involve the conjunction of two hybrid machine-learning models, one for predicting slag viscosity as a function of slag compositions and temperature, and the other which predicts slag viscosity with the incorporation of slag density. The work will facilitate the establishment of two novel quantitative relationships that could provide better insights into the blast furnace quaternary slag systems.

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高炉炼铁中 Al2O3-CaO-MgO-SiO2 第四系炉渣的特性间相关性
探索 Al2O3-CaO-MgO-SiO2 季熔渣体系的密度与热物理性质之间的相关性是高铝熔渣体系领域中一个非常有意义的课题。本研究试图为四元渣体系建立(a)摩尔体积/密度与混合焓之间的相关性,以及(b)摩尔体积/密度与渣粘度之间的相关性。前者以现有模型为基础,首先确定熔渣密度和混合焓,然后开发机器学习模型,将混合焓作为熔渣成分、温度和密度的函数进行适当推断。在目前的工作中,炉渣成分之间的体积收缩和混合放热焓是相互关联的。后一部分将涉及两个混合机器学习模型的结合,一个用于预测作为炉渣成分和温度函数的炉渣粘度,另一个预测炉渣粘度并结合炉渣密度。这项工作将有助于建立两种新的定量关系,从而更好地了解高炉四级炉渣系统。
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来源期刊
Journal of Phase Equilibria and Diffusion
Journal of Phase Equilibria and Diffusion 工程技术-材料科学:综合
CiteScore
2.50
自引率
7.10%
发文量
70
审稿时长
1 months
期刊介绍: The most trusted journal for phase equilibria and thermodynamic research, ASM International''s Journal of Phase Equilibria and Diffusion features critical phase diagram evaluations on scientifically and industrially important alloy systems, authored by international experts. The Journal of Phase Equilibria and Diffusion is critically reviewed and contains basic and applied research results, a survey of current literature and other pertinent articles. The journal covers the significance of diagrams as well as new research techniques, equipment, data evaluation, nomenclature, presentation and other aspects of phase diagram preparation and use. Content includes information on phenomena such as kinetic control of equilibrium, coherency effects, impurity effects, and thermodynamic and crystallographic characteristics. The journal updates systems previously published in the Bulletin of Alloy Phase Diagrams as new data are discovered.
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