Daniel Davis Thomas, Mitra Souvik, Eichel Rüdiger-A, Diddens Diddo, Granwehr Josef
Institute of Energy and Climate Research (IEK-9), Forschungszentrum Jülich GmbH, 52425 Jülich, Germany.
Institute of Technical and Macromolecular Chemistry, RWTH Aachen University, 52056 Aachen, Germany.
J Chem Theory Comput. 2024 Mar 26;20(6):2592-2604. doi: 10.1021/acs.jctc.3c01252. Epub 2024 Mar 8.
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.
电子结构计算方法,如密度泛函理论(DFT),通常用于计算光谱参数,以建立和验证结构 - 参数相关性。然而,对于聚合物等大型系统,DFT计算在计算上成本高昂。这项工作探索了从有机自由基聚合物的电子顺磁共振(EPR)实验中获得的各向同性值的机器学习(ML)。基于回归树的ML模型在从分子动力学轨迹的不同时间帧提取的聚(甲基丙烯酸2,2,6,6 - 四甲基哌啶 - 4 - 基酯)(PTMA)聚合物结构的DFT计算值上进行训练。将PTMA不同自由基密度下DFT得出的值与从基于PTMA的有机自由基电池的EPR测量中获得的实验得出的值进行比较。将ML预测的值与进行比较,以评估模型的性能。发现与的平均偏差约为0.0001。此外,对来自单独MD轨迹的测试结构的性能评估表明,该模型对自由基密度敏感,即使对于不属于训练数据集的自由基密度,也能有效地学习预测值。由于我们训练的模型可以再现沿MD轨迹的变化,并且对聚合物结构的平衡程度敏感,它是计算成本更高的DFT方法的一个有前途的替代方案,特别是对于不能轻易由较小模型系统表示的大型系统。