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Cross-category prediction of corrosion inhibitor performance based on molecular graph structures via a three-level message passing neural network model

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Dai, Jiaxin
Fu, Dongmei
Song, Guangxuan
Ma, Lingwei
Guo, Xin
Mol, Arjan
Cole, Ivan
Zhang, Dawei

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Current experimental verification, computational modeling, and machine learning methods for predicting corrosion inhibition efficiency (IE) are limited to specific inhibitor categories with high cost and poor generalization. In this study, a cross-category corrosion inhibitor dataset is constructed and a three-level direct message passing neural network (3 L–DMPNN) model using molecular structure information that integrates atomic-level, chemical bond-level, and molecular-level features to predict the IEs of compounds in a specific environment is established. This work demonstrates that the 3 L–DMPNN model can predict IEs of cross-category corrosion inhibitors from other independent literature and experimental dataset effectively and quickly.

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Corrosion Science

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