Perovskite synthesizability using graph neural networks

被引:0
作者
Geun Ho Gu
Jidon Jang
Juhwan Noh
Aron Walsh
Yousung Jung
机构
[1] Department of Chemical and Biomolecular Engineering (BK21 four),School of Energy Technology
[2] KAIST,Department of Materials
[3] Korea Institute of Energy Technology,Department of Materials Science and Engineering
[4] 200 Hyuksin-ro,undefined
[5] Imperial College London,undefined
[6] Yonsei University,undefined
来源
npj Computational Materials | / 8卷
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Perovskite is an important material type in geophysics and for technologically important applications. However, the number of synthetic perovskites remains relatively small. To accelerate the high-throughput discovery of perovskites, we propose a graph neural network model to assess their synthesizability. Our trained model shows a promising 0.957 out-of-sample true positive rate, significantly improving over empirical rule-based methods. Further validation is established by demonstrating that a significant portion of the virtual crystals that are predicted to be synthesizable have already been indeed synthesized in literature, and those with the lowest synthesizability scores have not been reported. While previous empirical strategies are mainly applicable to metal oxides, our model is general and capable of predicting the synthesizability across all classes of perovskites, including chalcogenide, halide, and hydride perovskites, as well as anti-perovskites. We apply the method to identify synthesizable perovskite candidates for two potential applications, the Li-rich ion conductors and metal halide optical materials that can be tested experimentally.
引用
收藏
相关论文
共 50 条
[31]   Selection of manufacturing processes using graph neural networks [J].
Hussong, Marco ;
Ruediger-Flore, Patrick ;
Klar, Matthias ;
Kloft, Marius ;
Aurich, Jan C. .
JOURNAL OF MANUFACTURING SYSTEMS, 2025, 80 :176-193
[32]   Supervised Attention Using Homophily in Graph Neural Networks [J].
Chatzianastasis, Michail ;
Nikolentzos, Giannis ;
Vazirgiannis, Michalis .
ARTIFICIAL NEURAL NETWORKS AND MACHINE LEARNING, ICANN 2023, PT IV, 2023, 14257 :576-586
[33]   Circuit design completion using graph neural networks [J].
Said, Anwar ;
Shabbir, Mudassir ;
Broll, Brian ;
Abbas, Waseem ;
Voelgyesi, Peter ;
Koutsoukos, Xenofon .
NEURAL COMPUTING & APPLICATIONS, 2023, 35 (16) :12145-12157
[34]   Customizing graph neural networks using path reweighting [J].
Chen, Jianpeng ;
Wang, Yujing ;
Zeng, Ming ;
Xiang, Zongyi ;
Hou, Bitan ;
Tong, Yunhai ;
Mengshoel, Ole J. ;
Ren, Yazhou .
INFORMATION SCIENCES, 2024, 674
[35]   Learning Graph Dynamics using Deep Neural Networks [J].
Narayan, Apurva ;
Roe, Peter H. O'N .
IFAC PAPERSONLINE, 2018, 51 (02) :433-438
[36]   OPTIMAL POWER FLOW USING GRAPH NEURAL NETWORKS [J].
Owerko, Damian ;
Gama, Fernando ;
Ribeiro, Alejandro .
2020 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH, AND SIGNAL PROCESSING, 2020, :5930-5934
[37]   Fake Post Detection Using Graph Neural Networks [J].
O. A. Izotova ;
D. S. Lavrova .
Automatic Control and Computer Sciences, 2021, 55 :1215-1221
[38]   Fake Post Detection Using Graph Neural Networks [J].
Izotova, O. A. ;
Lavrova, D. S. .
AUTOMATIC CONTROL AND COMPUTER SCIENCES, 2021, 55 (08) :1215-1221
[39]   Substitutional alloying using crystal graph neural networks [J].
Massa, Dario ;
Cieslinski, Daniel ;
Naghdi, Amirhossein ;
Papanikolaou, Stefanos .
AIP ADVANCES, 2024, 14 (01)
[40]   Accelerating network layouts using graph neural networks [J].
Both, Csaba ;
Dehmamy, Nima ;
Yu, Rose ;
Barabasi, Albert-Laszlo .
NATURE COMMUNICATIONS, 2023, 14 (01)