Efficient atomistic simulations of radiation damage in W and W-Mo using machine-learning potentials

被引:8
|
作者
Koskenniemi, Mikko [1 ]
Byggmastar, Jesper [1 ]
Nordlund, Kai [1 ]
Djurabekova, Flyura [1 ,2 ]
机构
[1] Univ Helsinki, Dept Phys, POBox 43, FI-00014 Helsinki, Finland
[2] Helsinki Inst Phys, Helsinki, Finland
基金
芬兰科学院;
关键词
Machine -learning potentials; Molecular dynamics; Tungsten; Binary alloys; Radiation damage; Collision cascades; MOLECULAR-DYNAMICS; MICROSCOPY;
D O I
10.1016/j.jnucmat.2023.154325
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
The Gaussian approximation potential (GAP) is an accurate machine-learning interatomic potential that was recently extended to include the description of radiation effects. In this study, we seek to validate a faster version of GAP, known as tabulated GAP (tabGAP), by modelling primary radiation damage in 50- 50 W-Mo alloys and pure W using classical molecular dynamics. We find that W-Mo exhibits a similar number of surviving defects as in pure W. We also observe W-Mo to possess both more efficient recom-bination of defects produced during the initial phase of the cascades, and in some cases, unlike pure W, recombination of all defects after the cascades cooled down. Furthermore, we observe that the tabGAP is two orders of magnitude faster than GAP, but produces a comparable number of surviving defects and cluster sizes. A small difference is noted in the fraction of interstitials that are bound into clusters.(c) 2023 The Author(s). Published by Elsevier B.V. This is an open access article under the CC BY license ( http://creativecommons.org/licenses/by/4.0/ )
引用
收藏
页数:12
相关论文
共 50 条
  • [31] Determination of glass transition temperature of polyimides from atomistic molecular dynamics simulations and machine-learning algorithms
    Wen, Chengyuan
    Liu, Binghan
    Wolfgang, Josh
    Long, Timothy E.
    Odle, Roy
    Cheng, Shengfeng
    JOURNAL OF POLYMER SCIENCE, 2020, 58 (11) : 1521 - 1534
  • [32] Understanding phase transitions of α-quartz under dynamic compression conditions by machine-learning driven atomistic simulations
    Erhard, Linus C.
    Otzen, Christoph
    Rohrer, Jochen
    Prescher, Clemens
    Albe, Karsten
    NPJ COMPUTATIONAL MATERIALS, 2025, 11 (01)
  • [33] Machine-learning interatomic potential for radiation damage effects in bcc-iron
    Wang, Yi
    Liu, Jianbo
    Li, Jiahao
    Mei, Jinna
    Li, Zhengcao
    Lai, Wensheng
    Xue, Fei
    COMPUTATIONAL MATERIALS SCIENCE, 2022, 202
  • [34] GPUMD: A package for constructing accurate machine-learned potentials and performing highly efficient atomistic simulations
    Fan, Zheyong
    Wang, Yanzhou
    Ying, Penghua
    Song, Keke
    Wang, Junjie
    Wang, Yong
    Zeng, Zezhu
    Xu, Ke
    Lindgren, Eric
    Magnus Rahm, J.
    J. Gabourie, Alexander
    Liu, Jiahui
    Dong, Haikuan
    Wu, Jianyang
    Chen, Yue
    Zhong, Zheng
    Sun, Jian
    Erhart, Paul
    Su, Yanjing
    Ala-Nissila, Tapio
    JOURNAL OF CHEMICAL PHYSICS, 2022, 157 (11):
  • [35] Atomistic insights into the mechanical anisotropy and fragility of monolayer fullerene networks using quantum mechanical calculations and machine-learning molecular dynamics simulations
    Ying, Penghua
    Dong, Haikuan
    Liang, Ting
    Fan, Zheyong
    Zhong, Zheng
    Zhang, Jin
    EXTREME MECHANICS LETTERS, 2023, 58
  • [36] Speed estimation of a car at impact with a W-beam guardrail using numerical simulations and machine learning
    Bruski, Dawid
    Pachocki, Lukasz
    Sciegaj, Adam
    Witkowski, Wojciech
    ADVANCES IN ENGINEERING SOFTWARE, 2023, 184
  • [37] Training machine-learning potentials for crystal structure prediction using disordered structures
    Hong, Changho
    Choi, Jeong Min
    Jeong, Wonseok
    Kang, Sungwoo
    Ju, Suyeon
    Lee, Kyeongpung
    Jung, Jisu
    Youn, Yong
    Han, Seungwu
    PHYSICAL REVIEW B, 2020, 102 (22)
  • [38] Exploring diffusion behavior of superionic materials using machine-learning interatomic potentials
    Hsing, Cheng-Rong
    Nguyen, Duc-Long
    Wei, Ching -Ming
    PHYSICAL REVIEW MATERIALS, 2024, 8 (04):
  • [39] Stable and accurate atomistic simulations of flexible molecules using conformationally generalisable machine learned potentials
    Williams, Christopher D.
    Kalayan, Jas
    Burton, Neil A.
    Bryce, Richard A.
    CHEMICAL SCIENCE, 2024, 15 (32) : 12780 - 12795
  • [40] Grain boundary strengthening in ZrB2 by segregation of W: Atomistic simulations with deep learning potential
    Dai, Fu-Zhi
    Wen, Bo
    Xiang, Huimin
    Zhou, Yanchun
    JOURNAL OF THE EUROPEAN CERAMIC SOCIETY, 2020, 40 (15) : 5029 - 5036