副教授
硕士生导师
教师拼音名称:pangbeili
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入职时间:2016-09-28
所在单位:材料物理教研室
学历:博士研究生
性别:女
学位:工学博士
职称:副教授
主要任职:材料物理教研室主任
毕业院校:韩国忠南大学
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关键字:CRYSTAL-STRUCTURES; FORMABILITY; PREDICTION; STABILITY; TERNARY; OXIDES
摘要:Machine learning and Materials Project are used to investigate stable and metastable perovskite materials based on a dataset of 397 ABO(3) compounds. The best performance classification model Gradient Boosting Decision Tree (GBDT) can classify 397 compounds into 143 non-perovskites and 254 perovskites with a 94.6% accuracy over 10-fold cross-validation, which indicates that 9 descriptors are outstanding features for formability of perovskite: tolerance factor, octahedral factor, radius ratio of A to O, A-O and B-O bond length, electronegativity difference for A-O (B-O) multiplied by the radius ratio of A (B) to O, the Mendeleev numbers for A and B. Among 891 ABO(3), the GBDT model predicts that 331 have perovskite structure and the top-174 within a prob- ability >= 85%. Furthermore, based on the energy above the convex hull (E-hull), 37 thermodynamically stable ABO(3) perovskites with 0 <= E-hull < 36 meV/atom and 13 metastable perovskites with 36 <= E-hull < 70 meV/atom are predicted for further synthesis and applications.
卷号:177
是否译文:否