Effect of CaO/MgO on Rheological Properties and Structure of CaO-MgO-SiO2-Al2O3-50% TiO2 Slag with SiO2/Al2O3=1.0
CERAMICS INTERNATIONAL(2024)
Cent South Univ
Abstract
The rheological properties, including viscosity, melting temperature, surface tension, density, and viscous activation energy (E eta) were systematically investigated in the CaO-MgO-SiO2-Al2O3-50 % TiO2 slag system with SiO2/Al2O3 = 1.0. The effect of CaO/MgO on the structure and phase composition of the slag was studied using Raman spectroscopy and X-ray diffraction (XRD). The results of viscosity properties indicate that as the CaO/MgO ratio in the slag increase, viscosity and the viscous activation tend to decrease. Melting temperature and surface tension decreases with increasing CaO/MgO, while density increases. As the CaO/MgO ratio in the slag increases, polymerization decreases, leading to the dissociated basic oxides into metal cations and oxygen anions. This addition of basic oxides provides more O2-, increasing the O/Si ratio, disintegrating complex silica-oxygen composite ions into simple silica-oxygen composite anion, and reducing viscosity. Anosovite (MgTi2O5), CaAl2Si2O8, Mg (Al, Ti)(2)O-4, spinel (MgAl2O4), augite (Ca (Mg, Fe, Al) (Al, Si)(2)O-6) and Ca12Al14O33 were identified as the primary phases in slag. The appropriate CaO/MgO should not exceed 0.76. These findings will serve as a valuable technical foundation to support the development of the direct reduction smelting process for the comprehensive utilization of vanadium titanomagnetite.
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Key words
Viscosity,Surface tension,Density,Viscous activation energy,Melting temperature
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