Department of Materials Science and Engineering, North Carolina State University, Raleigh, North Carolina 27695, United States of America.
Department of Mathematics, North Carolina State University, Raleigh, North Carolina 27695, United States of America.
J Chem Inf Model. 2021 Apr 26;61(4):1745-1761. doi: 10.1021/acs.jcim.0c01204. Epub 2021 Mar 17.
The molecular dynamics (MD) simulation technique is among the most broadly used computational methods to investigate atomistic phenomena in a variety of chemical and biological systems. One of the most common (and most uncertain) parametrization steps in MD simulations of soft materials is the assignment of partial charges to atoms. Here, we apply uncertainty quantification and sensitivity analysis calculations to assess the uncertainty associated with partial charge assignment in the context of MD simulations of an organic solvent. Our results indicate that the effect of partial charge variance on bulk properties, such as solubility parameters, diffusivity, dipole moment, and density, measured from MD simulations is significant; however, measured properties are observed to be less sensitive to partial charges of less accessible (or buried) atoms. Diffusivity, for example, exhibits a global sensitivity of up to 22 × 10 cm/s per electron charge on some acetonitrile atoms. We then demonstrate that machine learning techniques, such as Gaussian process regression (GPR), can be effective and rapid tools for uncertainty quantification of MD simulations. We show that the formulation and application of an efficient GPR surrogate model for the prediction of responses effectively reduces the computational time of additional sample points from hours to milliseconds. This study provides a much-needed context for the effect that partial charge uncertainty has on MD-derived material properties to illustrate the benefit of considering partial charges as distributions rather than point-values. To aid in this treatment, this work then demonstrates methods for rapid characterization of resulting sensitivity in MD simulations.
分子动力学(MD)模拟技术是研究各种化学和生物系统中原子现象最广泛使用的计算方法之一。在软物质的 MD 模拟中,最常见(也是最不确定)的参数化步骤之一是为原子分配部分电荷。在这里,我们应用不确定性量化和敏感性分析计算来评估 MD 模拟中部分电荷分配相关的不确定性。我们的结果表明,部分电荷方差对从 MD 模拟测量的整体性质(如溶解度参数、扩散系数、偶极矩和密度)的影响是显著的;然而,观察到测量的性质对不太容易(或埋藏)的原子的部分电荷的敏感性较低。例如,扩散系数对一些乙腈原子的电子电荷的全局灵敏度高达 22×10cm/s。然后,我们证明了机器学习技术,如高斯过程回归(GPR),可以成为 MD 模拟不确定性量化的有效且快速的工具。我们表明,对于预测响应的有效 GPR 替代模型的构建和应用,有效地将额外样本点的计算时间从几小时减少到了几毫秒。本研究为部分电荷不确定性对 MD 衍生材料性质的影响提供了急需的背景,以说明将部分电荷视为分布而不是点值的好处。为了便于处理,本工作还演示了用于快速描述 MD 模拟中敏感性的方法。