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Machine Learning of Potential-Energy Surfaces Within a Bond-Order Sampling Scheme

机译:键序抽样方案中势能面的机器学习

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Predicting the values of the potential energy surface (PES) for a given chemical system is essential to running the associated dynamics and modeling its evolution in time. To the purpose of modeling chemical reactions involving few atoms, this task is usually accomplished by fitting or interpolating a set of energies computed at different nuclear geometries through accurate, though computationally demanding, quantum-chemical calculations. Among the several approaches for choosing an appropriate set of geometries and energies, a new scheme has been recently proposed (Rampino S, J Phys Chem A 120:4683-4692, 2016) which is based on a regular sampling in a space-reduced bond-order (SRBO) domain rather than in the more conventional bond-length (BL) domain. In this work we address the performances of four machine-learning (ML) models, as opposed to pure mathematical fitting or interpolation schemes, in predicting the PES of a three-atom system modeling an atom-diatom exchange reaction when coupled to the SRBO sampling scheme. The models (two ensemble-learning, an automated ML, and a deep-learning one), trained on both SRBO and BL datasets, are shown to perform better than popular fitting or interpolation schemes and to give the best results if coupled to SRBO data.
机译:预测给定化学系统的势能面(PES)值对于运行相关动力学和及时建模其演化至关重要。为了对涉及很少原子的化学反应进行建模,通常需要通过精确(尽管计算量大)的量子化学计算来拟合或内插在不同核几何结构处计算出的一组能量来完成此任务。在选择一组合适的几何形状和能量的几种方法中,最近提出了一种新方案(Rampino S,J Phys Chem A 120:4683-4692,2016),该方案基于在空间缩减键中的常规采样序(SRBO)域,而不是更常规的键长(BL)域。在这项工作中,我们预测了四个机器学习(ML)模型的性能,而不是纯数学拟合或内插方案,它们在预测与SRBO采样耦合的原子-硅藻交换反应模型的三原子系统的PES时方案。在SRBO和BL数据集上训练的模型(两个集成学习,一个自动ML和一个深度学习的模型)显示出比流行的拟合或插值方案更好的性能,并且如果与SRBO数据耦合,则可以提供最佳结果。

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