September 1, 2020
Journal Article

A Data-driven Approach for Predicting Nepheline Crystallization in High-Level Waste Glasses

Abstract

High-level waste (HLW) glasses with high aluminum content are prone to nepheline crystallization during the slow canister cooling that is experienced during large-scale production. Due to its detrimental effects on glass durability, nepheline precipitation must be avoided; however, developing robust, predictive models for nepheline crystallization behavior in HLW glasses is difficult due to their compositional complexity. Using overly conservative constraints to predict nepheline formation can limit the waste loading to lower than the achievable capacity. In this study, a robust data-driven model using five compositional features has been developed to predict nepheline formation. The analysis of the model and the data show that there is an overlap, instead of a distinct compositional boundary, between glasses that form and do not form nepheline. As a result, the model’s predictive accuracy is not the same throughout the feature space and instead is dependent on the location of the glass composition in the dimensionally reduced feature space.

Revised: July 28, 2020 | Published: September 1, 2020

Citation

Sargin I., C.E. Lonergan, J.D. Vienna, J.S. Mccloy, and S.P. Beckman. 2020. A Data-driven Approach for Predicting Nepheline Crystallization in High-Level Waste Glasses. Journal of the American Ceramic Society 103, no. 9:4913-4924. PNNL-SA-149642. doi:10.1111/jace.17122