2023
DOI: 10.1063/5.0152893
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Surface tension of binary and ternary mixtures mapping with ASP and UNIFAC models based on machine learning

Abstract: Modeling predictions of surface tension for binary and ternary liquid mixtures is difficult. In this work, we propose a machine learning model to accurately predict the surface tension of binary mixtures of organic solvents-ionic liquids and ternary mixtures of organic solvents-ionic liquids–water and analytically characterize the proposed model. In total, 1593 binary mixture data points and 216 ternary mixture data points were collected to develop the machine learning model. The model was developed by combini… Show more

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