4.5 Article

Elaboration of A Coupled Numerical Model for Predicting Magnesia Refractory Damage Behavior in High-Temperature Reactor

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This study proposes a quantitative evaluation method for the deterioration of magnesia refractory in the smelting process and develops a numerical model to study the dissolution behavior. The results show that flow significantly increases the wear rate of refractory materials, highlighting the importance of considering flow-induced erosion in wear rate estimation.
A quantitative evaluation method for the magnesia refractory deterioration in the smelting process is proposed based on analysis of static and rotating finger tests to study the dissolution behavior. A transient 3D fluid-solid coupled numerical model was then developed, including the two-phase gas/slag flow pattern, temperature profile, MgO content distribution, solid refractory dissolution, and sample shape change. A kinetic degradation model was introduced to calculate the refractory overall wear rate determined by the coupled effect of the flow-induced erosion and chemical-induced corrosion. The shape change of the solid refractory sample was characterized via the dynamic mesh technique. A close correlation between the simulated results and the experimental data gives confidence in the fundamental validity of the developed numerical model. The results indicate that the flow would increase the overall wear rate by one or two orders of magnitude depending on the velocity. Therefore, flow-induced erosion must be accounted for in estimating the refractory wear rate. The flow-induced erosion and chemical-induced corrosion could be quantified via the wall shear stress and a modified Arrhenius's law, respectively.

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