Prediction of quaternary alkali metal hydroxide - water mixture melting points using machine learning

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16 juillet 2024

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Lucien Roach et al., « Prediction of quaternary alkali metal hydroxide - water mixture melting points using machine learning », Recherche Data Gouv, ID : 10.57745/JYHBMM


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Dataset associated with 'Development of molten salt–based processes through thermodynamic evaluation assisted by machine learning' Dataset production context : Molten salt–based processes and hydrofluxes are highly sensitive to mixture composition and require knowledge of the combined melting point for successful materials syntheses. In particular processes using hydroxide–based fluxes (pure salt melts) and hydrofluxes (salt melts containing 15–50% HO) have been shown to be interesting environments to synthesize inorganic materials in high oxidation states. The development of tools to predict these properties is desirable to inform the implementation of processes using these mixtures. In this work, we use an artificial neural network model to estimate the melting points of fluxes and hydrofluxes comprising of quaternary mixtures of NaOH, KOH, LiOH, and H2O. A database of 1644 data points collected from 47 different sources was used in the training of the model. Melting points were predicted from the molar fractions of each component (4 independent variables)... For more information see the article.

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