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Abstract
Chemical design of SiO2-based glasses with high elastic moduli and low weight is of great interest. However, it is difficult to find a universal expression to predict the elastic moduli according to the glass composition before synthesis since the elastic moduli are a complex function of interatomic bonds and their ordering at different length scales. Here we show that the densities and elastic moduli of SiO2-based glasses can be efficiently predicted by machine learning (ML) techniques across a complex compositional space with multiple (>10) types of additive oxides besides SiO2. Our machine learning approach relies on a training set generated by high-throughput molecular dynamic (MD) simulations, a set of elaborately constructed descriptors that bridges the empirical statistical modeling with the fundamental physics of interatomic bonding, and a statistical learning/predicting model developed by implementing least absolute shrinkage and selection operator with a gradient boost machine (GBM-LASSO). The predictions of the ML model are comprehensively compared and validated with a large amount of both simulation and experimental data. By just training with a dataset only composed of binary and ternary glass samples, our model shows very promising capabilities to predict the density and elastic moduli for k-nary SiO2-based glasses beyond the training set. As an example of its potential applications, our GBM-LASSO model was used to perform a rapid and low-cost screening of many (~105) compositions of a multicomponent glass system to construct a compositional-property database that allows for a fruitful overview on the glass density and elastic properties.
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1 University of Michigan, Department of Materials Science and Engineering, Ann Arbor, USA (GRID:grid.214458.e) (ISNI:0000000086837370)
2 Pennsylvania State University, Department of Statistics, State College, USA (GRID:grid.29857.31) (ISNI:0000 0001 2097 4281); Portland State University, Fariborz Maseeh Department of Mathematics and Statistics, Portland, USA (GRID:grid.262075.4) (ISNI:0000 0001 1087 1481)
3 Sinoma Science & Technology Co., Ltd., Nanjing, China (GRID:grid.469597.0) (ISNI:0000 0004 1771 8211)
4 Continental Technology LLC, Indianapolis, USA (GRID:grid.469597.0)
5 University of California, Department of Materials Science and Engineering, Berkeley, USA (GRID:grid.47840.3f) (ISNI:0000 0001 2181 7878); Space Exploration Technologies (SpaceX), Hawthorne, USA (GRID:grid.499343.0) (ISNI:0000 0004 4672 1890)