计算机科学
反演(地质)
解算器
人工智能
实验数据
机器学习
训练集
限制玻尔兹曼机
分子动力学
算法
人工神经网络
物理
数学
统计
构造盆地
生物
古生物学
量子力学
程序设计语言
作者
Sakib Matin,Alice E. A. Allen,Justin S. Smith,Nicholas Lubbers,Ryan B. Jadrich,Richard A. Messerly,Benjamin Nebgen,Ying Wai Li,Sergei Tretiak,Kipton Barros
标识
DOI:10.1021/acs.jctc.3c01051
摘要
Methodologies for training machine learning potentials (MLPs) with quantum-mechanical simulation data have recently seen tremendous progress. Experimental data have a very different character than simulated data, and most MLP training procedures cannot be easily adapted to incorporate both types of data into the training process. We investigate a training procedure based on iterative Boltzmann inversion that produces a pair potential correction to an existing MLP using equilibrium radial distribution function data. By applying these corrections to an MLP for pure aluminum based on density functional theory, we observe that the resulting model largely addresses previous overstructuring in the melt phase. Interestingly, the corrected MLP also exhibits improved performance in predicting experimental diffusion constants, which are not included in the training procedure. The presented method does not require autodifferentiating through a molecular dynamics solver and does not make assumptions about the MLP architecture. Our results suggest a practical framework for incorporating experimental data into machine learning models to improve the accuracy of molecular dynamics simulations.
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