Predicting the Temperature-Dependent CMC of Surfactant Mixtures with Graph Neural Networks
Christoforos Brozos, Jan G. Rittig, Elie Akanny, Sandip Bhattacharya,, Christina Kohlmann, Alexander Mitsos

TL;DR
This study develops a graph neural network framework to accurately predict the temperature-dependent critical micelle concentration of surfactant mixtures, addressing a key gap in modeling complex mixtures for industrial applications.
Contribution
The paper introduces a novel GNN-based model for predicting CMC in surfactant mixtures, including ternary systems, outperforming existing semi-empirical models and validated with experimental data.
Findings
GNN models achieve high accuracy in interpolating mixture compositions.
Models accurately predict CMC for unseen binary mixtures.
Experimental validation shows strong agreement with predictions.
Abstract
Surfactants are key ingredients in foaming and cleansing products across various industries such as personal and home care, industrial cleaning, and more, with the critical micelle concentration (CMC) being of major interest. Predictive models for CMC of pure surfactants have been developed based on recent ML methods, however, in practice surfactant mixtures are typically used due to to performance, environmental, and cost reasons. This requires accounting for synergistic/antagonistic interactions between surfactants; however, predictive ML models for a wide spectrum of mixtures are missing so far. Herein, we develop a graph neural network (GNN) framework for surfactant mixtures to predict the temperature-dependent CMC. We collect data for 108 surfactant binary mixtures, to which we add data for pure species from our previous work [Brozos et al. (2024), J. Chem. Theory Comput.]. We then…
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Taxonomy
TopicsEnhanced Oil Recovery Techniques
MethodsGraph Neural Network
