Bandgap prediction by deep learning in configurationally hybridized graphene and boron nitride

被引:0
|
作者
Yuan Dong
Chuhan Wu
Chi Zhang
Yingda Liu
Jianlin Cheng
Jian Lin
机构
[1] University of Missouri,Department of Mechanical & Aerospace Engineering
[2] University of Missouri,Department of Electrical Engineering & Computer Science
关键词
D O I
暂无
中图分类号
学科分类号
摘要
It is well-known that the atomic-scale and nano-scale configuration of dopants can play a crucial role in determining the electronic properties of materials. However, predicting such effects is challenging due to the large range of atomic configurations that are possible. Here, we present a case study of how deep learning algorithms can enable bandgap prediction in hybridized boron–nitrogen graphene with arbitrary supercell configurations. A material descriptor that enables correlation of structure and bandgap was developed for convolutional neural networks. Bandgaps calculated by ab initio calculations, and corresponding structures, were used as training datasets. The trained networks were then used to predict bandgaps of systems with various configurations. For 4 × 4 and 5 × 5 supercells they accurately predict bandgaps, with a R2 of >90% and root-mean-square error of ~0.1 eV. The transfer learning was performed by leveraging data generated from small supercells to improve the prediction accuracy for 6 × 6 supercells. This work will pave a route to future investigation of configurationally hybridized graphene and other 2D materials. Moreover, given the ubiquitous existence of configurations in materials, this work may stimulate interest in applying deep learning algorithms for the configurational design of materials across different length scales.
引用
收藏
相关论文
共 50 条
  • [31] Chemical and Bandgap Engineering in Monolayer Hexagonal Boron Nitride
    Ba, Kun
    Jiang, Wei
    Cheng, Jingxin
    Bao, Jingxian
    Xuan, Ningning
    Sun, Yangye
    Liu, Bing
    Xie, Aozhen
    Wu, Shiwei
    Sun, Zhengzong
    SCIENTIFIC REPORTS, 2017, 7
  • [32] Controlling the Bandgap of Boron Nitride Nanotubes with Carbon Doping
    Hamze Mousavi
    Mehran Bagheri
    Journal of Electronic Materials, 2015, 44 : 2693 - 2698
  • [33] Unified deep learning network for enhanced accuracy in predicting thermal conductivity of bilayer graphene, hexagonal boron nitride, and their heterostructures
    Chen, Rongkun
    Tian, Yu
    Cao, Jiayi
    Ren, Weina
    Hu, Shiqian
    Zeng, Chunhua
    JOURNAL OF APPLIED PHYSICS, 2024, 135 (14)
  • [34] Hybridized Deep Learning Model for Perfobond Rib Shear Strength Connector Prediction
    Khalaf, Jamal Abdulrazzaq
    Majeed, Abeer A.
    Aldlemy, Mohammed Suleman
    Ali, Zainab Hasan
    Al Zand, Ahmed W.
    Adarsh, S.
    Bouaissi, Aissa
    Hameed, Mohammed Majeed
    Yaseen, Zaher Mundher
    COMPLEXITY, 2021, 2021
  • [35] Structure prediction of boron-doped graphene by machine learning
    Dieb, Thaer M.
    Hou, Zhufeng
    Tsuda, Koji
    JOURNAL OF CHEMICAL PHYSICS, 2018, 148 (24):
  • [36] Graphene nanoribbons epitaxy on boron nitride
    Lu, Xiaobo
    Yang, Wei
    Wang, Shuopei
    Wu, Shuang
    Chen, Peng
    Zhang, Jing
    Zhao, Jing
    Meng, Jianling
    Xie, Guibai
    Wang, Duoming
    Wang, Guole
    Zhang, Ting Ting
    Watanabe, Kenji
    Taniguchi, Takashi
    Yang, Rong
    Shi, Dongxia
    Zhang, Guangyu
    APPLIED PHYSICS LETTERS, 2016, 108 (11)
  • [37] Shock waves in graphene and boron nitride
    Shepelev, I. A.
    Chetverikov, A. P.
    Dmitriev, S., V
    Korznikova, E. A.
    COMPUTATIONAL MATERIALS SCIENCE, 2020, 177
  • [38] Terahertz conductivity of graphene on boron nitride
    DaSilva, Ashley M.
    Jung, Jeil
    Adam, Shaffique
    MacDonald, Allan H.
    PHYSICAL REVIEW B, 2015, 92 (15)
  • [39] Zitterbewegung in a Graphene–Boron Nitride Bilayer
    N. N. Konobeeva
    M. B. Belonenko
    Russian Physics Journal, 2013, 56 : 930 - 936
  • [40] Conductivity of graphene on boron nitride substrates
    Das Sarma, S.
    Hwang, E. H.
    PHYSICAL REVIEW B, 2011, 83 (12)