Antypov Dmytro, Collins Christopher M, Vasylenko Andrij, Gusev Vladimir V, Gaultois Michael W, Darling George R, Dyer Matthew S, Rosseinsky Matthew J
Department of Chemistry, University of Liverpool, 51 Oxford Street, Liverpool, L7 3NY, UK.
Leverhulme Research Centre for Functional Materials Design, University of Liverpool, 51 Oxford Street, Liverpool, L7 3NY, UK.
Chemphyschem. 2024 Jun 17;25(12):e202400254. doi: 10.1002/cphc.202400254. Epub 2024 Apr 25.
The crystal structures of known materials contain the information about the interatomic interactions that produced these stable compounds. Similar to the use of reported protein structures to extract effective interactions between amino acids, that has been a useful tool in protein structure prediction, we demonstrate how to use this statistical paradigm to learn the effective inter-atomic interactions in crystalline inorganic solids. By analyzing the reported crystallographic data for inorganic materials, we have constructed statistically derived proxy potentials (SPPs) that can be used to assess how realistic or unusual a computer-generated structure is compared to the reported experimental structures. The SPPs can be directly used for structure optimization to improve this similarity metric, that we refer to as the SPP score. We apply such optimization step to markedly improve the quality of the input crystal structures for DFT calculations and demonstrate that the SPPs accelerate geometry optimization for three systems relevant to battery materials. As this approach is chemistry-agnostic and can be used at scale, we produced a database of all possible pair potentials in a tabulated form ready to use.
已知材料的晶体结构包含了产生这些稳定化合物的原子间相互作用的信息。类似于利用已报道的蛋白质结构来提取氨基酸之间的有效相互作用(这在蛋白质结构预测中是一种有用的工具),我们展示了如何使用这种统计范式来了解晶体无机固体中的有效原子间相互作用。通过分析已报道的无机材料晶体学数据,我们构建了统计推导的代理势(SPP),可用于评估计算机生成的结构与已报道的实验结构相比有多现实或多不寻常。SPP可直接用于结构优化以提高这种相似性度量,我们将其称为SPP分数。我们应用这样的优化步骤显著提高了用于密度泛函理论(DFT)计算的输入晶体结构的质量,并证明SPP加速了与电池材料相关的三个体系的几何优化。由于这种方法与化学无关且可大规模使用,我们以表格形式生成了一个所有可能对势的数据库,随时可供使用。