A fast transferable method for predicting the glass transition temperature of polymers from chemical structure
We present a new method that successfully predicts the glass transition temperature $T_{\! \textrm{g}}$ of polymers based on their monomer structure. The model combines ideas from Group Additive Properties (GAP) and Quantitative Structure Property Relationship (QSPR) methods, where GAP (or Group Con...
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Zusammenfassung: | We present a new method that successfully predicts the glass transition
temperature $T_{\! \textrm{g}}$ of polymers based on their monomer structure.
The model combines ideas from Group Additive Properties (GAP) and Quantitative
Structure Property Relationship (QSPR) methods, where GAP (or Group
Contributions) assumes that sub-monomer motifs contribute additively to $T_{\!
\textrm{g}}$, and QSPR links $T_{\! \textrm{g}}$ to the physico-chemical
properties of the structure through a set of molecular descriptors. This method
yields fast and accurate predictions of $T_{\! \textrm{g}}$ for polymers based
on chemical motifs outside the data sample, which resolves the main limitation
of the GAP approach. Using a genetic algorithm, we show that only two molecular
descriptors are necessary to predict $T_{\! \textrm{g}}$ for PAEK polymers. Our
QSPR-GAP method is readily transferred to other physical properties, to
measures of activity (QSAR), or to different classes of polymers such as
conjugated or bio-polymers. |
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DOI: | 10.48550/arxiv.2411.06461 |