期刊文献+

Center-environment deep transfer machine learning across crystal structures: from spinel oxides to perovskite oxides 被引量:1

原文传递
导出
摘要 In data-driven materials design where the target materials have limited data,the transfer machine learning from large known source materials,becomes a demanding strategy especially across different crystal structures.In this work,we proposed a deep transfer learning approach to predict thermodynamically stable perovskite oxides based on a large computational dataset of spinel oxides.The deep neural network(DNN)source domain model with“Center-Environment”(CE)features was first developed using the formation energy of 5329 spinel oxide structures and then was fine-tuned by learning a small dataset of 855 perovskite oxide structures,leading to a transfer learning model with good transferability in the target domain of perovskite oxides.Based on the transferred model,we further predicted the formation energy of potential 5329 perovskite structures with combination of 73 elements.Combining the criteria of formation energy and structure factors including tolerance factor(0.7<t≤1.1)and octahedron factor(0.45<μ<0.7),we predicted 1314 thermodynamically stable perovskite oxides,among which 144 oxides were reported to be synthesized experimentally,10 oxides were predicted computationally by other literatures,301 oxides were recorded in the Materials Project database,and 859 oxides have been first reported.Combing with the structure-informed features the transfer machine learning approach in this work takes the advantage of existing data to predict new structures at a lower cost,providing an effective acceleration strategy for the expensive high-throughput computational screening in materials design.The predicted stable novel perovskite oxides serve as a rich platform for exploring potential renewable energy and electronic materials applications.
出处 《npj Computational Materials》 SCIE EI CSCD 2023年第1期1227-1236,共10页 计算材料学(英文)
基金 This work was supported by the National Natural Science Foundation of China[Nos.22177067] Sino-German Mobility Program[No.M-0209] the Shanghai Rising-Star Program[No.20QA1403400] the Key Basic Research Program of Science and Technology Commission of Shanghai Municipality(20JC1415300) This work was also supported the Key Research Project of Zhejiang Laboratory(No.2021PE0AC02) Shanghai Technical Service Center for Advanced Ceramics Structure Design and Precision Manufacturing(No.20DZ2294000).The authors acknowledge the Beijing Super Cloud Computing Center,Hefei Advanced Computing Center,and Shanghai University for providing HPC resources.
  • 相关文献

参考文献9

二级参考文献95

  • 1Ben-David S,Blitzer J,Crammer K,Pereira F.Analysis of representations for domain adaptation.In:Platt JC,Koller D,Singer Y,Roweis ST,eds.Proc.of the Advances in Neural Information Processing Systems 19.Cambridge:MIT Press,2007.137-144.
  • 2Blitzer J,McDonald R,Pereira F.Domain adaptation with structural correspondence learning.In:Jurafsky D,Gaussier E,eds.Proc.of the Int’l Conf.on Empirical Methods in Natural Language Processing.Stroudsburg PA:ACL,2006.120-128.
  • 3Dai WY,Xue GR,Yang Q,Yu Y.Co-Clustering based classification for out-of-domain documents.In:Proc.of the 13th ACM Int’l Conf.on Knowledge Discovery and Data Mining.New York:ACM Press,2007.210-219.[doi:10.1145/1281192.1281218].
  • 4Dai WY,Xue GR,Yang Q,Yu Y.Transferring naive Bayes classifiers for text classification.In:Proc.of the 22nd Conf.on Artificial Intelligence.AAAI Press,2007.540-545.
  • 5Liao XJ,Xue Y,Carin L.Logistic regression with an auxiliary data source.In:Proc.of the 22nd lnt*I Conf.on Machine Learning.San Francisco:Morgan Kaufmann Publishers,2005.505-512.[doi:10.1145/1102351.1102415].
  • 6Xing DK,Dai WY,Xue GR,Yu Y.Bridged refinement for transfer learning.In:Proc.of the Ilth European Conf.on Practice of Knowledge Discovery in Databases.Berlin:Springer-Verlag,2007.324-335.[doi:10.1007/978-3-540-74976-9_31].
  • 7Mahmud MMH.On universal transfer learning.In:Proc.of the 18th Int’l Conf.on Algorithmic Learning Theory.Sendai,2007.135-149.[doi:10,1007/978-3-540-75225-7_14].
  • 8Samarth S,Sylvian R.Cross domain knowledge transfer using structured representations.In:Proc.of the 21st Conf.on Artificial Intelligence.AAAI Press,2006.506-511.
  • 9Bel N,Koster CHA,Villegas M.Cross-Lingual text categorization.In:Proc.of the European Conf.on Digital Libraries.Berlin:Springer-Verlag,2003.126-139.[doi:10.1007/978-3-540-45175-4_13].
  • 10Zhai CX,Velivelli A,Yu B.A cross-collection mixture model for comparative text mining.In:Proc.of the 10th ACM SIGKDD Int’l Conf.on Knowledge Discovery and Data Mining.New York:ACM,2004.743-748.[doi:10.1145/1014052.1014150].

共引文献666

同被引文献45

引证文献1

二级引证文献2

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部