Prediction and Interpretability Study of the Glass Transition Temperature of Polyimide Based on Machine Learning with Quantitative Structure–Property Relationship (Tg-QSPR)
Tianyong Zhang,
Suisui Wang,
Yamei Chai
et al.
Abstract:The glass transition temperature (T g ) is a crucial characteristic of polyimides (PIs). Developing a T g predictive model using machine learning methodologies can facilitate the design of PI structures and expedite the development process. In this investigation, a data set comprising 1257 PIs was assembled, with T g values determined using differential scanning calorimetry. 210 molecular descriptors were computed using RDKit, and subsequently, six distinct feature selection methodologies were employed to refi… Show more
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