聚类分析
晶体结构
计算机科学
Crystal(编程语言)
晶体结构预测
层次聚类
构造(python库)
数据库
发电机(电路理论)
无监督学习
人工智能
数据挖掘
材料科学
结晶学
化学
物理
功率(物理)
程序设计语言
量子力学
作者
Shulin Luo,Bangyu Xing,Muhammad Faizan,Jiahao Xie,Kun Zhou,Ruoting Zhao,Tianshu Li,Xinjiang Wang,Yuhao Fu,Xin He,Jian Lv,Lijun Zhang
标识
DOI:10.1021/acs.jpca.2c03416
摘要
Recognition of structure prototypes from tremendous known inorganic crystal structures has been an important subject beneficial for materials science research and new materials design. The existing databases of inorganic crystal structure prototypes were mostly constructed by classifying materials in terms of the crystallographic space group information. Herein, we employed a distinct strategy to construct the inorganic crystal structure prototype database, relying on the classification of materials in terms of local atomic environments (LAEs) accompanied by unsupervised machine learning method. Specifically, we adopted a hierarchical clustering approach onto all experimentally known inorganic crystal structure data to identify structure prototypes. The criterion for hierarchical clustering is the LAE represented by the state-of-the-art structure fingerprints of the improved bond-orientational order parameters and the smooth overlap of atomic positions. This allows us to build up a LAE-based Inorganic Crystal Structure Prototype Database (LAE-ICSPD) containing 15,613 structure prototypes with defined stoichiometries. In addition, we have developed a Structure Prototype Generator Infrastructure (SPGI) package, which is a useful toolkit for structure prototype generation. Our developed SPGI toolkit and LAE-ICSPD are beneficial for investigating inorganic materials in a global way as well as accelerating the materials discovery process in the data-driven mode.
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