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Accelerated Scheme to Predict Ring-Opening Polymerization Enthalpy: Simulation-Experimental Data Fusion and Multitask Machine Learning.

Aubrey TolandTran Doan HuanLihua ChenYinghao LiChao ZhangWill GutekunstRampi Ramprasad
Published in: The journal of physical chemistry. A (2023)
Ring-opening enthalpy (Δ H ROP ) is a fundamental thermodynamic quantity controlling the polymerization and depolymerization of an important class of recyclable polymers, namely, those created from ring-opening polymerization (ROP). Highly accurate first-principles-based computational methods to compute Δ H ROP are computationally too demanding to efficiently guide the design of depolymerizable polymers. In this work, we develop a generalizable machine-learning model that was trained on experimental measurements and reliably computed simulation results of Δ H ROP (the latter provides a pathway to systematically increase the chemical diversity of the data). Predictions of Δ H ROP using this machine-learning model require essentially no time while the prediction accuracy is about ∼8 kJ/mol, approaching the well-known chemical accuracy. We hope that this effort will contribute to the future development of new depolymerizable polymers.
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