Young Tom A, Johnston-Wood Tristan, Zhang Hanwen, Duarte Fernanda
Chemistry Research Laboratory, 12 Mansfield Road, Oxford, OX1 3TA, UK.
Phys Chem Chem Phys. 2022 Sep 14;24(35):20820-20827. doi: 10.1039/d2cp02978b.
Recent advances in the development of reactive machine-learned potentials (MLPs) promise to transform reaction modelling. However, such methods have remained computationally expensive and limited to experts. Here, we employ different MLP methods (ACE, NequIP, GAP), combined with automated fitting and active learning, to study the reaction dynamics of representative Diels-Alder reactions. We demonstrate that the ACE and NequIP MLPs can consistently achieve chemical accuracy (±1 kcal mol) to the ground-truth surface with only a few hundred reference calculations. These strategies are shown to enable routine -quality classical and quantum dynamics, and obtain dynamical quantities such as product ratios and free energies from non-static methods. For ambimodal reactions, product distributions were found to be strongly dependent on the QM method and less so on the type of dynamics propagated.
反应性机器学习势(MLP)开发方面的最新进展有望变革反应建模。然而,此类方法在计算上仍然代价高昂,且只有专家才能使用。在此,我们采用不同的MLP方法(ACE、NequIP、GAP),结合自动拟合和主动学习,来研究代表性狄尔斯-阿尔德反应的反应动力学。我们证明,ACE和NequIP MLP仅通过几百次参考计算就能始终如一地达到与真实表面相差化学精度(±1千卡/摩尔)。这些策略被证明能够实现常规质量的经典和量子动力学,并从非静态方法中获得诸如产物比率和自由能等动力学量。对于双峰反应,发现产物分布强烈依赖于量子力学方法,而对所传播的动力学类型的依赖性较小。