CEA─DAM, DIF, Arpajon Cedex F-91297, France.
Service de Recherches de Métallurgie Physique, Université Paris-Saclay, CEA, Gif-sur-Yvette 91191, France.
J Chem Theory Comput. 2022 Oct 11;18(10):5864-5875. doi: 10.1021/acs.jctc.2c00314. Epub 2022 Sep 8.
Sampling the minimum energy path (MEP) between two minima of a system is often hindered by the presence of an energy barrier separating the two metastable states. As a consequence, direct sampling based on molecular dynamics or Markov Chain Monte Carlo methods becomes inefficient, the crossing of the energy barrier being associated to a rare event. Augmented sampling methods based on the definition of collective variables or reaction coordinates allow us to circumvent this limitation at the price of an arbitrary choice of the dimensionality reduction algorithm. We couple the statistical sampling techniques, namely, metadynamics and invertible neural networks, with autoencoders so as to gradually learn the MEP and the collective variable at the same time. Learning is achieved through a succession of two steps: statistical sampling of the most probable path between the two minima and redefinition of the collective variable from the updated data points. The prototypical Mueller potential with nearly orthogonal minima is employed to demonstrate the ability of such coupling to unravel a complex MEP.
对系统两个稳定态之间的最小能量路径(MEP)进行采样通常受到分隔这两个亚稳态的能量势垒的阻碍。因此,基于分子动力学或马尔可夫链蒙特卡罗方法的直接采样变得效率低下,跨越能量势垒与罕见事件相关。基于集体变量或反应坐标定义的增强采样方法允许我们以任意选择降维算法为代价来规避这一限制。我们将统计采样技术,即元动力学和可逆神经网络与自编码器相结合,以便同时逐渐学习 MEP 和集体变量。学习通过两个步骤的连续进行:在两个稳定态之间的最可能路径上进行统计采样,以及从更新的数据点重新定义集体变量。采用具有几乎正交稳定态的典型 Mueller 势来证明这种耦合能够揭示复杂 MEP 的能力。