计算机科学
普遍性(动力系统)
模数
从头算
德拜模型
实验数据
材料科学
数据挖掘
热力学
数学
化学
物理
凝聚态物理
量子力学
统计
有机化学
作者
Olexandr Isayev,Corey Oses,Cormac Toher,Eric Gossett,Stefano Curtarolo,Alexander Tropsha
摘要
Abstract Although historically materials discovery has been driven by a laborious trial-and-error process, knowledge-driven materials design can now be enabled by the rational combination of Machine Learning methods and materials databases. Here, data from the AFLOW repository for ab initio calculations is combined with Quantitative Materials Structure-Property Relationship models to predict important properties: metal/insulator classification, band gap energy, bulk/shear moduli, Debye temperature and heat capacities. The prediction’s accuracy compares well with the quality of the training data for virtually any stoichiometric inorganic crystalline material, reciprocating the available thermomechanical experimental data. The universality of the approach is attributed to the construction of the descriptors: Property-Labelled Materials Fragments. The representations require only minimal structural input allowing straightforward implementations of simple heuristic design rules.
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