Methods for electronic structure computations, such as density functional theory (DFT), are routinely used for the calculation of spectroscopic parameters to establish and validate structure-parameter correlations. DFT calculations, however, are computationally expensive for large systems such as polymers. This work explores the machine learning (ML) of isotropic values, , obtained from electron paramagnetic resonance (EPR) experiments of an organic radical polymer. An ML model based on regression trees is trained on DFT-calculated values of poly(2,2,6,6-tetramethylpiperidinyloxy-4-yl methacrylate) (PTMA) polymer structures extracted from different time frames of a molecular dynamics trajectory. The DFT-derived values, , for different radical densities of PTMA, are compared against experimentally derived values obtained from EPR measurements of a PTMA-based organic radical battery. The ML-predicted values, , were compared with to evaluate the performance of the model. Mean deviations of from were found to be on the order of 0.0001. Furthermore, a performance evaluation on test structures from a separate MD trajectory indicated that the model is sensitive to the radical density and efficiently learns to predict values even for radical densities that were not part of the training data set. Since our trained model can reproduce the changes in along the MD trajectory and is sensitive to the extent of equilibration of the polymer structure, it is a promising alternative to computationally more expensive DFT methods, particularly for large systems that cannot be easily represented by a smaller model system.
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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10976631 | PMC |
http://dx.doi.org/10.1021/acs.jctc.3c01252 | DOI Listing |
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