Machine learning glass transition temperature of polymers
Yun Zhang, Xiaojie Xu
Abstract
As an important thermophysical property, polymers' glass transition temperature, Tg, could sometimes be difficult to determine experimentally. Modeling methods, particularly data-driven approaches, are promising alternatives to predictions of Tg in a fast and robust way. The molecular traceless quadrupole moment and molecule average hexadecapole moment are closely correlated with polymers' Tg. In the current work, these two parameters are used as descriptors in the Gaussian process regression model to predict Tg. We investigate 60 samples with Tg values from 194 K to 440 K. The model provides rapid and low-cost Tg estimations with high accuracy and stability.
Topics & Concepts
Glass transitionPolymerMoment (physics)QuadrupoleWork (physics)ThermodynamicsStability (learning theory)Materials scienceStatistical physicsSpin glassChemical physicsChemistryComputer sciencePhysicsMachine learningCondensed matter physicsComposite materialClassical mechanicsAtomic physicsPhase Equilibria and ThermodynamicsMachine Learning in Materials ScienceMaterial Dynamics and Properties