Accelerated mapping of electronic density of states patterns of metallic nanoparticles via machine-learning

被引:17
作者
Bang, Kihoon [1 ]
Yeo, Byung Chul [2 ]
Kim, Donghun [2 ]
Han, Sang Soo [2 ]
Lee, Hyuck Mo [1 ]
机构
[1] Korea Adv Inst Sci & Technol KAIST, Dept Mat Sci & Engn, 291 Daehak Ro, Daejeon 34141, South Korea
[2] Korea Inst Sci & Technol KIST, Computat Sci Res Ctr, 5 Hwarang Ro 14 Gil, Seoul 02792, South Korea
基金
新加坡国家研究基金会;
关键词
SURFACE; PERFORMANCE; PREDICTION; DESIGN;
D O I
10.1038/s41598-021-91068-8
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Within first-principles density functional theory (DFT) frameworks, it is challenging to predict the electronic structures of nanoparticles (NPs) accurately but fast. Herein, a machine-learning architecture is proposed to rapidly but reasonably predict electronic density of states (DOS) patterns of metallic NPs via a combination of principal component analysis (PCA) and the crystal graph convolutional neural network (CGCNN). With the PCA, a mathematically high-dimensional DOS image can be converted to a low-dimensional vector. The CGCNN plays a key role in reflecting the effects of local atomic structures on the DOS patterns of NPs with only a few of material features that are easily extracted from a periodic table. The PCA-CGCNN model is applicable for all pure and bimetallic NPs, in which a handful DOS training sets that are easily obtained with the typical DFT method are considered. The PCA-CGCNN model predicts the R-2 value to be 0.85 or higher for Au pure NPs and 0.77 or higher for Au@Pt core@shell bimetallic NPs, respectively, in which the values are for the test sets. Although the PCA-CGCNN method showed a small loss of accuracy when compared with DFT calculations, the prediction time takes just similar to 160 s irrespective of the NP size in contrast to DFT method, for example, 13,000 times faster than the DFT method for Pt-147. Our approach not only can be immediately applied to predict electronic structures of actual nanometer scaled NPs to be experimentally synthesized, but also be used to explore correlations between atomic structures and other spectrum image data of the materials (e.g., X-ray diffraction, X-ray photoelectron spectroscopy, and Raman spectroscopy).
引用
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页数:11
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共 57 条
  • [31] Perdew JP, 1996, PHYS REV LETT, V77, P3865, DOI 10.1103/PhysRevLett.77.3865
  • [32] FAST PARALLEL ALGORITHMS FOR SHORT-RANGE MOLECULAR-DYNAMICS
    PLIMPTON, S
    [J]. JOURNAL OF COMPUTATIONAL PHYSICS, 1995, 117 (01) : 1 - 19
  • [33] High-efficiency colloidal quantum dot infrared light-emitting diodes via engineering at the supra-nanocrystalline level
    Pradhan, Santanu
    Di Stasio, Francesco
    Bi, Yu
    Gupta, Shuchi
    Christodoulou, Sotirios
    Stavrinadis, Alexandros
    Konstantatos, Gerasimos
    [J]. NATURE NANOTECHNOLOGY, 2019, 14 (01) : 72 - +
  • [34] Machine learning in materials informatics: recent applications and prospects
    Ramprasad, Rampi
    Batra, Rohit
    Pilania, Ghanshyam
    Mannodi-Kanakkithodi, Arun
    Kim, Chiho
    [J]. NPJ COMPUTATIONAL MATERIALS, 2017, 3
  • [35] From DFT to machine learning: recent approaches to materials science-a review
    Schleder, Gabriel R.
    Padilha, Antonio C. M.
    Acosta, Carlos Mera
    Costa, Marcio
    Fazzio, Adalberto
    [J]. JOURNAL OF PHYSICS-MATERIALS, 2019, 2 (03):
  • [36] 2018 Table of static dipole polarizabilities of the neutral elements in the periodic table
    Schwerdtfeger, Peter
    Nagle, Jeffrey K.
    [J]. MOLECULAR PHYSICS, 2019, 117 (9-12) : 1200 - 1225
  • [37] Interface engineering for a rational design of poison-free bimetallic CO oxidation catalysts
    Shin, Kihyun
    Zhang, Liang
    An, Hyesung
    Ha, Hyunwoo
    Yoo, Mi
    Lee, Hyuck Mo
    Henkelman, Graeme
    Kim, Hyun You
    [J]. NANOSCALE, 2017, 9 (16) : 5244 - 5253
  • [38] Srivastava N, 2014, J MACH LEARN RES, V15, P1929
  • [39] Machine-learning prediction of the d-band center for metals and bimetals
    Takigawa, Ichigaku
    Shimizu, Ken-ichi
    Tsuda, Koji
    Takakusagi, Satoru
    [J]. RSC ADVANCES, 2016, 6 (58) : 52587 - 52595
  • [40] Prediction of electronic structure in atomistic model using artificial neural network
    Umeno, Y.
    Kubo, A.
    [J]. COMPUTATIONAL MATERIALS SCIENCE, 2019, 168 : 164 - 171