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Auteurs principaux: Allec, Sarah I., Lu, Xiaonan, Cassar, Daniel R., Nguyen, Xuan T., Hegde, Vinay I., Mahadevan, Thiruvillamalai, Peterson, Miroslava, Du, Jincheng, Riley, Brian J., Vienna, John D., Saal, James E.
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2403.10682
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author Allec, Sarah I.
Lu, Xiaonan
Cassar, Daniel R.
Nguyen, Xuan T.
Hegde, Vinay I.
Mahadevan, Thiruvillamalai
Peterson, Miroslava
Du, Jincheng
Riley, Brian J.
Vienna, John D.
Saal, James E.
author_facet Allec, Sarah I.
Lu, Xiaonan
Cassar, Daniel R.
Nguyen, Xuan T.
Hegde, Vinay I.
Mahadevan, Thiruvillamalai
Peterson, Miroslava
Du, Jincheng
Riley, Brian J.
Vienna, John D.
Saal, James E.
contents Glasses form the basis of many modern applications and also hold great potential for future medical and environmental applications. However, their structural complexity and large composition space make design and optimization challenging for certain applications. Of particular importance for glass processing is an estimate of a given composition's glass-forming ability (GFA). However, there remain many open questions regarding the physical mechanisms of glass formation, especially in oxide glasses. It is apparent that a proxy for GFA would be highly useful in glass processing and design, but identifying such a surrogate property has proven itself to be difficult. Here, we explore the application of an open-source pre-trained NN model, GlassNet, that can predict the characteristic temperatures necessary to compute glass stability (GS) and assess the feasibility of using these physics-informed ML (PIML)-predicted GS parameters to estimate GFA. In doing so, we track the uncertainties at each step of the computation - from the original ML prediction errors, to the compounding of errors during GS estimation, and finally to the final estimation of GFA. While GlassNet exhibits reasonable accuracy on all individual properties, we observe a large compounding of error in the combination of these individual predictions for the prediction of GS, finding that random forest models offer similar accuracy to GlassNet. We also breakdown the ML performance on different glass families and find that the error in GS prediction is correlated with the error in crystallization peak temperature prediction. Lastly, we utilize this finding to assess the relationship between top-performing GS parameters and GFA for two ternary glass systems: sodium borosilicate and sodium iron phosphate glasses. We conclude that to obtain true ML predictive capability of GFA, significantly more data needs to be collected.
format Preprint
id arxiv_https___arxiv_org_abs_2403_10682
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Evaluation of GlassNet for physics-informed machine learning of glass stability and glass-forming ability
Allec, Sarah I.
Lu, Xiaonan
Cassar, Daniel R.
Nguyen, Xuan T.
Hegde, Vinay I.
Mahadevan, Thiruvillamalai
Peterson, Miroslava
Du, Jincheng
Riley, Brian J.
Vienna, John D.
Saal, James E.
Materials Science
Machine Learning
Glasses form the basis of many modern applications and also hold great potential for future medical and environmental applications. However, their structural complexity and large composition space make design and optimization challenging for certain applications. Of particular importance for glass processing is an estimate of a given composition's glass-forming ability (GFA). However, there remain many open questions regarding the physical mechanisms of glass formation, especially in oxide glasses. It is apparent that a proxy for GFA would be highly useful in glass processing and design, but identifying such a surrogate property has proven itself to be difficult. Here, we explore the application of an open-source pre-trained NN model, GlassNet, that can predict the characteristic temperatures necessary to compute glass stability (GS) and assess the feasibility of using these physics-informed ML (PIML)-predicted GS parameters to estimate GFA. In doing so, we track the uncertainties at each step of the computation - from the original ML prediction errors, to the compounding of errors during GS estimation, and finally to the final estimation of GFA. While GlassNet exhibits reasonable accuracy on all individual properties, we observe a large compounding of error in the combination of these individual predictions for the prediction of GS, finding that random forest models offer similar accuracy to GlassNet. We also breakdown the ML performance on different glass families and find that the error in GS prediction is correlated with the error in crystallization peak temperature prediction. Lastly, we utilize this finding to assess the relationship between top-performing GS parameters and GFA for two ternary glass systems: sodium borosilicate and sodium iron phosphate glasses. We conclude that to obtain true ML predictive capability of GFA, significantly more data needs to be collected.
title Evaluation of GlassNet for physics-informed machine learning of glass stability and glass-forming ability
topic Materials Science
Machine Learning
url https://arxiv.org/abs/2403.10682