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Interpreting the optical properties of oxide glasses with machine learning and Shapely additive explanations

Mohd Zaki, Vineeth Venugopal, Ravinder Bhattoo, Suresh Bishnoi, Sourabh Singh, Amarnath R. Allu, Jayadeva, N. M. Anoop Krishnan

2022Journal of the American Ceramic Society41 citationsDOI

Abstract

Abstract Due to their excellent optical properties, glasses are used for various applications ranging from smartphone screens to telescopes. Developing compositions with tailored Abbe number ( V d ) and refractive index at 587.6 nm ( n d ), two crucial optical properties, is a major challenge. To this extent, machine learning (ML) approaches have been successfully used to develop composition–property models. However, these models are essentially black boxes in nature and suffer from the lack of interpretability. In this paper, we demonstrate the use of ML models to predict the composition‐dependent variations of V d and n d . Further, using Shapely additive explanations (SHAP), we interpret the ML models to identify the contribution of each of the input components toward target prediction. We observe that glass formers such as SiO 2 , B 2 O 3 , and P 2 O 5 and intermediates such as TiO 2 , PbO, and Bi 2 O 3 play a significant role in controlling the optical properties. Interestingly, components contributing toward increasing the n d are found to decrease the V d and vice versa. Finally, we develop the Abbe diagram, using the ML models, allowing accelerated discovery of new glasses for optical properties beyond the experimental pareto front. Overall, employing explainable ML, we predict and interpret the compositional control on the optical properties of oxide glasses.

Topics & Concepts

InterpretabilityRefractive indexOxideMaterials scienceComposition (language)DiagramOpticsRangingComputer scienceProperty (philosophy)MineralogyPhysicsMathematicsChemistryArtificial intelligenceStatisticsMetallurgyPhilosophyEpistemologyTelecommunicationsLinguisticsGlass properties and applications
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