Transfer Learning in Inorganic Compounds' Crystal Structure Classification

被引:0
作者
Mahmoud, Hanan Ahmed Hosni [1 ]
机构
[1] Princess Nourah Bint Abdulrahman Univ, Coll Comp & Informat Sci, Dept Comp Sci, POB 84428, Riyadh 11671, Saudi Arabia
关键词
deep learning; transfer learning; small datasets; crystal structures; CONVOLUTIONAL NEURAL-NETWORKS; PREDICTING PROPERTIES; MATERIALS SCIENCE; MACHINE; FRAMEWORK;
D O I
10.3390/cryst13010087
中图分类号
O7 [晶体学];
学科分类号
0702 ; 070205 ; 0703 ; 080501 ;
摘要
Deep learning consists of deep convolutional layers and an unsupervised feature selection phase. The feature selection of deep learning on a large size dataset can be employed in correlated prediction models with small size datasets. This methodology is titled deep transfer learning model and enhances prediction model generalization. In this research, we proposed a prediction model for the crystal structure classification of inorganic compounds. Deep learning models in structure classification are usually trained using a large size dataset of 300 K compounds from different quantum compounds dataset (DS1). The feature selection of the deep learning models is reused for selecting features in a small size dataset (with 30 K inorganic compounds and containing 150 different crystal structures) and three alloy classes. The selected features are then fed into a random decision forest prediction model as input. The proposed convolutional neural network (CNN) with transfer learning realizes an accuracy of 98.5%. The experiment results display the CPU time consumed by our model, comparing the time required by similar models. The CPU classification time of the proposed model is 21 s on average.
引用
收藏
页数:13
相关论文
共 47 条
  • [1] Abadi M, 2016, PROCEEDINGS OF OSDI'16: 12TH USENIX SYMPOSIUM ON OPERATING SYSTEMS DESIGN AND IMPLEMENTATION, P265
  • [2] Agbozo Reuben, 2020, [Journal of the Korean Society for Precision Engineering, 한국정밀공학회지], V37, P361
  • [3] Perspective: Materials informatics and big data: Realization of the "fourth paradigm" of science in materials science
    Agrawal, Ankit
    Choudhary, Alok
    [J]. APL MATERIALS, 2016, 4 (05):
  • [4] Advanced Steel Microstructural Classification by Deep Learning Methods
    Azimi, Seyed Majid
    Britz, Dominik
    Engstler, Michael
    Fritz, Mario
    Muecklich, Frank
    [J]. SCIENTIFIC REPORTS, 2018, 8
  • [5] Machine learning for molecular and materials science
    Butler, Keith T.
    Davies, Daniel W.
    Cartwright, Hugh
    Isayev, Olexandr
    Walsh, Aron
    [J]. NATURE, 2018, 559 (7715) : 547 - 555
  • [6] AFLOW: An automatic framework for high-throughput materials discovery
    Curtarolo, Stefano
    Setyawan, Wahyu
    Hart, Gus L. W.
    Jahnatek, Michal
    Chepulskii, Roman V.
    Taylor, Richard H.
    Wanga, Shidong
    Xue, Junkai
    Yang, Kesong
    Levy, Ohad
    Mehl, Michael J.
    Stokes, Harold T.
    Demchenko, Denis O.
    Morgan, Dane
    [J]. COMPUTATIONAL MATERIALS SCIENCE, 2012, 58 : 218 - 226
  • [7] Deng J, 2009, PROC CVPR IEEE, P248, DOI 10.1109/CVPRW.2009.5206848
  • [8] Multifidelity Statistical Machine Learning for Molecular Crystal Structure Prediction
    Egorova, Olga
    Hafizi, Roohollah
    Woods, David C.
    Day, Graeme M.
    [J]. JOURNAL OF PHYSICAL CHEMISTRY A, 2020, 124 (39) : 8065 - 8078
  • [9] A general and transferable deep learning framework for predicting phase formation in materials
    Feng, Shuo
    Fu, Huadong
    Zhou, Huiyu
    Wu, Yuan
    Lu, Zhaoping
    Dong, Hongbiao
    [J]. NPJ COMPUTATIONAL MATERIALS, 2021, 7 (01)
  • [10] Using deep neural network with small dataset to predict material defects
    Feng, Shuo
    Zhou, Huiyu
    Dong, Hongbiao
    [J]. MATERIALS & DESIGN, 2019, 162 : 300 - 310