论文标题
贝叶斯力场从主动学习中进行模拟Stanene的维度跨二维转化
Bayesian Force Fields from Active Learning for Simulation of Inter-Dimensional Transformation of Stanene
论文作者
论文摘要
我们提出了一种通过将力和不确定性映射到低维特征的功能上,从而使基于多体核的高斯力场急剧加速高斯工艺模型。这允许对结合近量化精度,内置不确定性和恒定评估成本的模型自动学习,这些模型与经典分析模型相当,能够模拟数百万个原子。使用这种方法,我们对Stanene单层的稳定性进行大规模分子动力学模拟。我们发现了2D Stanene的一种不寻常的相变机制,其中波纹导致双层缺陷的成核,致密化成无序的多层结构,然后在高温或成核时形成散装液体,并在低温下3D BCC晶体的生长。提出的方法为快速开发快速准确的不确定性感知模型开发了可能性,以模拟复杂材料的长期大规模动力学。
We present a way to dramatically accelerate Gaussian process models for interatomic force fields based on many-body kernels by mapping both forces and uncertainties onto functions of low-dimensional features. This allows for automated active learning of models combining near-quantum accuracy, built-in uncertainty, and constant cost of evaluation that is comparable to classical analytical models, capable of simulating millions of atoms. Using this approach, we perform large scale molecular dynamics simulations of the stability of the stanene monolayer. We discover an unusual phase transformation mechanism of 2D stanene, where ripples lead to nucleation of bilayer defects, densification into a disordered multilayer structure, followed by formation of bulk liquid at high temperature or nucleation and growth of the 3D bcc crystal at low temperature. The presented method opens possibilities for rapid development of fast accurate uncertainty-aware models for simulating long-time large-scale dynamics of complex materials.