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A physics-guided neural network model for the prediction of structural, thermodynamic and dynamic properties of aluminosilicate melts and glasses.

Project description

i-Melt

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i-Melt is a physics-guided neural network model, that combines deep neural networks with physical equations to predict the structural, thermodynamic and dynamic properties of aluminosilicate melts and glasses.

Software Contributors

Charles Le Losq, University Paris Cité, Institut de physique du globe de Paris, lelosq@ipgp.fr

Barbara Baldoni, University Paris Cité, Institut de physique du globe de Paris, baldoni@ipgp.fr

Andrew P. Valentine, Durham University, andrew.valentine@durham.ac.uk

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