Machine Learning Parametrization of a Coarse-grained Epoxy Model at Varying Crosslink Density
ORAL
Abstract
A persistent challenge in molecular modeling of thermoset polymers is capturing the effects of chemical composition and degree of crosslinking (DC) on dynamical and mechanical properties with high computational efficiency. We established a coarse-graining (CG) approach combining the energy renormalization method with Gaussian process surrogate models of molecular dynamics simulations. This allows a machine-learning informed functional calibration of DC-dependent CG force field parameters. Taking versatile epoxy resins consisting of Bisphenol A diglycidyl ether combined with curing agent of either 4,4-Diaminodicyclohexylmethane or polyoxypropylene diamines, we demonstrated excellent agreement between all-atom and CG predictions for density, Debye-Waller factor, Young's modulus, and yield stress at any DC. We further introduced a surrogate model-enabled simplification of the functional forms of 14 nonbonded calibration parameters by quantifying the uncertainty of a candidate set of calibration functions. The framework established provides an efficient methodology for chemistry-specific, large-scale investigations of the dynamics and mechanics of epoxy resins. We show preliminary investigations to showcase the model's potential.
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Publication: A. Giuntoli, N. Hansoge, A. van Beek, Z. Meng, W. Chen, S. Keten; Systematic Coarse-graining of Epoxy Resins with Machine Learning-informed Energy Renormalization, npj Computational Materials (2021), 7:168; https://doi.org/10.1038/s41524-021-00634-1
Presenters
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Andrea Giuntoli
Zernike Institute, University of Groningen
Authors
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Andrea Giuntoli
Zernike Institute, University of Groningen
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Nitin K Hansoge
Northwestern University
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Anton van Beek
Northwestern University
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Zhaoxu Meng
Clemson University
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Wei Chen
Northwestern University
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Sinan Keten
Northwestern University