论文标题
材料晶体结构的自适应探索和优化
Adaptive Exploration and Optimization of Materials Crystal Structures
论文作者
论文摘要
材料科学的一个核心问题是确定假设材料在不合成的情况下是否稳定,这在数学上等同于高度非线性和多模式势能表面(PES)上的全球优化问题。这个优化问题提出了多个杰出的挑战,包括PES极高的维度,并且必须从可靠,复杂,无参数的无参数以及非常昂贵的计算方法中构建PE,而密度函数理论(DFT)就是一个示例。 DFT是一种基于量子力学的方法,可以预测给定原子构型的总势能。 DFT虽然准确,但在计算上却很昂贵。在这项工作中,我们提出了一个新颖的扩展 - 探索探索框架,以找到PE的全球最小值。从几种原子配置开始,此``已知''空间被扩展到构建大型候选集合。扩展以非自适应方式开始,在该方式中添加了新的配置而无需考虑其势能。此步骤的一个新颖特征是,它倾向于在不了解域空间边界的情况下生成填充空间的设计。如果需要,配置空间的非自适应扩展之后是自适应扩展,其中``域空间''``有希望的区域''(具有低能量配置的'''进一步扩展。一旦获得了一组候选配置,就可以同时探索和利用贝叶斯优化来找到全局最小值。使用找到铝的最稳定晶体结构的问题来证明该方法。
A central problem of materials science is to determine whether a hypothetical material is stable without being synthesized, which is mathematically equivalent to a global optimization problem on a highly non-linear and multi-modal potential energy surface (PES). This optimization problem poses multiple outstanding challenges, including the exceedingly high dimensionality of the PES and that PES must be constructed from a reliable, sophisticated, parameters-free, and thus, very expensive computational method, for which density functional theory (DFT) is an example. DFT is a quantum mechanics based method that can predict, among other things, the total potential energy of a given configuration of atoms. DFT, while accurate, is computationally expensive. In this work, we propose a novel expansion-exploration-exploitation framework to find the global minimum of the PES. Starting from a few atomic configurations, this ``known'' space is expanded to construct a big candidate set. The expansion begins in a non-adaptive manner, where new configurations are added without considering their potential energy. A novel feature of this step is that it tends to generate a space-filling design without the knowledge of the boundaries of the domain space. If needed, the non-adaptive expansion of the space of configurations is followed by adaptive expansion, where ``promising regions'' of the domain space (those with low energy configurations) are further expanded. Once a candidate set of configurations is obtained, it is simultaneously explored and exploited using Bayesian optimization to find the global minimum. The methodology is demonstrated using a problem of finding the most stable crystal structure of Aluminum.