A Model Ensemble Approach Enables Data-Driven Property Prediction for Chemically Deconstructable Thermosets in the Low-Data Regime

Thermosets present sustainability challenges that could potentially be addressed through the design of deconstructable variants with tunable properties; however, the combinatorial space of possible thermoset molecular building blocks (e.g., monomers, cross-linkers, and additives) and manufacturing c...

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Veröffentlicht in:ACS central science 2023-09, Vol.9 (9), p.1810-1819
Hauptverfasser: AlFaraj, Yasmeen S., Mohapatra, Somesh, Shieh, Peyton, Husted, Keith E. L., Ivanoff, Douglass G., Lloyd, Evan M., Cooper, Julian C., Dai, Yutong, Singhal, Avni P., Moore, Jeffrey S., Sottos, Nancy R., Gomez-Bombarelli, Rafael, Johnson, Jeremiah A.
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Sprache:eng
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Zusammenfassung:Thermosets present sustainability challenges that could potentially be addressed through the design of deconstructable variants with tunable properties; however, the combinatorial space of possible thermoset molecular building blocks (e.g., monomers, cross-linkers, and additives) and manufacturing conditions is vast, and predictive knowledge for how combinations of these molecular components translate to bulk thermoset properties is lacking. Data science could overcome these problems, but computational methods are difficult to apply to multicomponent, amorphous, statistical copolymer materials for which little data exist. Here, leveraging a data set with 101 examples, we introduce a closed-loop experimental, machine learning (ML), and virtual screening strategy to enable predictions of the glass transition temperature (T g) of polydicyclopentadiene (pDCPD) thermosets containing cleavable bifunctional silyl ether (BSE) comonomers and/or cross-linkers with varied compositions and loadings. Molecular features and formulation variables are used as model inputs, and uncertainty is quantified through model ensembling, which together with heavy regularization helps to avoid overfitting and ultimately achieves predictions within
ISSN:2374-7943
2374-7951
DOI:10.1021/acscentsci.3c00502