Deep Learning Aided Rational Design of Oxide Glasses
R. Ravinder, Karthikeya H. Sreedhara, Suresh Bishnoi, Hargun Singh, Grover, Mathieu Bauchy, Jayadeva, Hariprasad Kodamana, N. M. Anoop Krishnan

TL;DR
This paper introduces a deep learning framework that predicts multiple properties of oxide glasses across a vast compositional space, enabling rational design of glasses for specific applications.
Contribution
It develops the most extensive deep neural network models for oxide glass properties, covering all human-made compositions, facilitating accelerated and targeted glass design.
Findings
Models show excellent predictive accuracy aligning with experimental data.
Glass selection charts enable multi-constraint design of functional glasses.
Framework can be adapted for other materials like metals and ceramics.
Abstract
Despite the extensive usage of oxide glasses for a few millennia, the composition-property relationships in these materials still remain poorly understood. While empirical and physics-based models have been used to predict properties, these remain limited to a few select compositions or a series of glasses. Designing new glasses requires a priori knowledge of how the composition of a glass dictates its properties such as stiffness, density, or processability. Thus, accelerated design of glasses for targeted applications remain impeded due to the lack of universal composition-property models. Herein, using deep learning, we present a methodology for the rational design of oxide glasses. Exploiting a large dataset of glasses comprising of up to 37 oxide components and more than 100,000 glass compositions, we develop high-fidelity deep neural networks for the prediction of eight properties…
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Taxonomy
TopicsGlass properties and applications · Pigment Synthesis and Properties · Phase-change materials and chalcogenides
