论文标题
不确定性感知的分子动力学来自贝叶斯活跃学习的分子动力学,用于相变和SIC中的热传输
Uncertainty-aware molecular dynamics from Bayesian active learning for Phase Transformations and Thermal Transport in SiC
论文作者
论文摘要
机器学习的原子质力场是有望结合量子相互作用和模拟原子动力学的高计算效率和准确性的有望。最近已经开发了主动学习方法,以有效地自动训练力场。其中,贝叶斯活跃学习利用原则上的不确定性量化来做出数据获取决策。在这项工作中,我们提出了一般的贝叶斯主动学习工作流程,其中力场是由基于原子群集扩展描述符的稀疏高斯过程回归模型构建的。为了规避稀疏高斯过程不确定性计算的高计算成本,我们制定了不确定性的高性能近似映射,并证明了几个数量级的加速。我们通过训练仅在几天的计算机时间内训练碳化硅(SIC)多晶型物的贝叶斯力场模型来证明自主的主动学习工作流程,并证明了压力诱导的相变的准确捕获。所得模型与\ textit {ab intio}计算和实验测量均表现出密切的一致性,并且在振动和热性能上的现有经验模型优于现有的经验模型。主动学习工作流程很容易将其推广到广泛的材料系统,并加速了它们的计算理解。
Machine learning interatomic force fields are promising for combining high computational efficiency and accuracy in modeling quantum interactions and simulating atomistic dynamics. Active learning methods have been recently developed to train force fields efficiently and automatically. Among them, Bayesian active learning utilizes principled uncertainty quantification to make data acquisition decisions. In this work, we present a general Bayesian active learning workflow, where the force field is constructed from a sparse Gaussian process regression model based on atomic cluster expansion descriptors. To circumvent the high computational cost of the sparse Gaussian process uncertainty calculation, we formulate a high-performance approximate mapping of the uncertainty and demonstrate a speedup of several orders of magnitude. We demonstrate the autonomous active learning workflow by training a Bayesian force field model for silicon carbide (SiC) polymorphs in only a few days of computer time and show that pressure-induced phase transformations are accurately captured. The resulting model exhibits close agreement with both \textit{ab initio} calculations and experimental measurements, and outperforms existing empirical models on vibrational and thermal properties. The active learning workflow readily generalizes to a wide range of material systems and accelerates their computational understanding.