2023
DOI: 10.1111/jace.19072
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Data‐driven prediction of room‐temperature density for multicomponent silicate‐based glasses

Abstract: Density is one of the most commonly measured or estimated material properties, especially for glasses and melts that are of significant interest to many fields, including metallurgy, geology, materials science, and sustainable cements. Here, three types of machine learning models (i.e., random forest [RF], artificial neural network [ANN], and Gaussian process regression [GPR]) have been developed to predict the room‐temperature density of glasses in the compositional space of CaO–MgO–Al2O3–SiO2–TiO2–FeO–Fe2O3–… Show more

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Cited by 4 publications
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References 89 publications
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