Abstract
Computational predictions of vaporization properties aid the de novo design of green chemicals, including clean alternative fuels, working fluids for efficient thermal energy recovery, and polymers that are easily degradable and recyclable. Here, we developed chemically explainable graph attention networks to predict five physical properties pertinent to performance in utilizing renewable energy: heat of vaporization (HoV), critical temperature, flash point, boiling point, and liquid heat capacity. The predictive model for HoV was trained using ~150,000 data points, considering their uncertainties and temperature dependence. Next, this model was expanded to the other properties through transfer learning to overcome the limitations due to fewer data points (700-7,500). The chemical interpretability of the model was then investigated, demonstrating that the model explains molecular structural effects on vaporization properties. Finally, the developed predictive models were applied to design chemicals that have desirable properties as efficient and green working fluids, fuels, and polymers, enabling fast and accurate screening before experiments.
Supplementary materials
Title
Supporting Information for Design Green Chemicals by Predicting Vaporization Properties Using Explainable Graph Attention Networks
Description
Supporting Information for Design Green Chemicals by Predicting Vaporization Properties Using Explainable Graph Attention Networks. Additional data regarding the predictive models for vaporization properties.
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Supplementary weblinks
Title
HoVpred - Prediction of vaporization properties
Description
The code written and the database used to develop the predictive model. Subscriptions are required to access the property data in NIST-WTT and DIPPR databases. The molecules used for training the model are available with their property values from NIST-WTT and DIPPR redacted. The data points from the literature were not redacted and are available through the GitHub repository. Also, the Python codes, list of molecules, and trained model files are available.
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