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Graph Neural Networks for Surfactant Multi-Property Prediction

3 January 2024
Christoforos Brozos
Jan G. Rittig
Sandip Bhattacharya
Elie Akanny
Christina Kohlmann
Alexander Mitsos
    AI4CE
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Abstract

Surfactants are of high importance in different industrial sectors such as cosmetics, detergents, oil recovery and drug delivery systems. Therefore, many quantitative structure-property relationship (QSPR) models have been developed for surfactants. Each predictive model typically focuses on one surfactant class, mostly nonionics. Graph Neural Networks (GNNs) have exhibited a great predictive performance for property prediction of ionic liquids, polymers and drugs in general. Specifically for surfactants, GNNs can successfully predict critical micelle concentration (CMC), a key surfactant property associated with micellization. A key factor in the predictive ability of QSPR and GNN models is the data available for training. Based on extensive literature search, we create the largest available CMC database with 429 molecules and the first large data collection for surface excess concentration (Γ\GammaΓm_{m}m​), another surfactant property associated with foaming, with 164 molecules. Then, we develop GNN models to predict the CMC and Γ\GammaΓm_{m}m​ and we explore different learning approaches, i.e., single- and multi-task learning, as well as different training strategies, namely ensemble and transfer learning. We find that a multi-task GNN with ensemble learning trained on all Γ\GammaΓm_{m}m​ and CMC data performs best. Finally, we test the ability of our CMC model to generalize on industrial grade pure component surfactants. The GNN yields highly accurate predictions for CMC, showing great potential for future industrial applications.

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