Machine-Learned Potentials by Active Learning from Organic Crystal Structure Prediction Landscapes

被引:8
|
作者
Butler, Patrick W. V. [1 ]
Hafizi, Roohollah [1 ]
Day, Graeme M. [1 ]
机构
[1] Univ Southampton, Sch Chem, Southampton SO17 1BJ, England
来源
JOURNAL OF PHYSICAL CHEMISTRY A | 2024年 / 128卷 / 05期
基金
英国工程与自然科学研究理事会;
关键词
MOLECULAR-CRYSTAL; BLIND TEST;
D O I
10.1021/acs.jpca.3c07129
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
A primary challenge in organic molecular crystal structure prediction (CSP) is accurately ranking the energies of potential structures. While high-level solid-state density functional theory (DFT) methods allow for mostly reliable discrimination of the low-energy structures, their high computational cost is problematic because of the need to evaluate tens to hundreds of thousands of trial crystal structures to fully explore typical crystal energy landscapes. Consequently, lower-cost but less accurate empirical force fields are often used, sometimes as the first stage of a hierarchical scheme involving multiple stages of increasingly accurate energy calculations. Machine-learned interatomic potentials (MLIPs), trained to reproduce the results of ab initio methods with computational costs close to those of force fields, can improve the efficiency of the CSP by reducing or eliminating the need for costly DFT calculations. Here, we investigate active learning methods for training MLIPs with CSP datasets. The combination of active learning with the well-developed sampling methods from CSP yields potentials in a highly automated workflow that are relevant over a wide range of the crystal packing space. To demonstrate these potentials, we illustrate efficiently reranking large, diverse crystal structure landscapes to near-DFT accuracy from force field-based CSP, improving the reliability of the final energy ranking. Furthermore, we demonstrate how these potentials can be extended to more accurately model structures far from lattice energy minima through additional on-the-fly training within Monte Carlo simulations.
引用
收藏
页码:945 / 957
页数:13
相关论文
共 50 条
  • [1] Machine-learned prediction of the electronic fields in a crystal
    Teh, Ying Shi
    Ghosh, Swarnava
    Bhattacharya, Kaushik
    [J]. MECHANICS OF MATERIALS, 2021, 163
  • [2] Machine-learned interatomic potentials by active learning: amorphous and liquid hafnium dioxide
    Sivaraman, Ganesh
    Krishnamoorthy, Anand Narayanan
    Baur, Matthias
    Holm, Christian
    Stan, Marius
    Csanyi, Gabor
    Benmore, Chris
    Vazquez-Mayagoitia, Alvaro
    [J]. NPJ COMPUTATIONAL MATERIALS, 2020, 6 (01)
  • [3] Machine-Learned Fragment-Based Energies for Crystal Structure Prediction
    McDonagh, David
    Skylaris, Chris-Kriton
    Day, Graeme M.
    [J]. JOURNAL OF CHEMICAL THEORY AND COMPUTATION, 2019, 15 (04) : 2743 - 2758
  • [4] Machine-learned interatomic potentials by active learning: amorphous and liquid hafnium dioxide
    Ganesh Sivaraman
    Anand Narayanan Krishnamoorthy
    Matthias Baur
    Christian Holm
    Marius Stan
    Gábor Csányi
    Chris Benmore
    Álvaro Vázquez-Mayagoitia
    [J]. npj Computational Materials, 6
  • [5] Accelerating crystal structure prediction by machine-learning interatomic potentials with active learning
    Podryabinkin, Evgeny, V
    Tikhonov, Evgeny, V
    Shapeev, Alexander, V
    Oganov, Artem R.
    [J]. PHYSICAL REVIEW B, 2019, 99 (06)
  • [6] INSIGHTS FROM MACHINE-LEARNED DIET SUCCESS PREDICTION
    Weber, Ingmar
    Achananuparp, Palakorn
    [J]. PACIFIC SYMPOSIUM ON BIOCOMPUTING 2016, 2016, : 540 - 551
  • [7] Multikernel similarity-based clustering of amorphous systems and machine-learned interatomic potentials by active learning
    Shuaib, Firas
    Ori, Guido
    Thomas, Philippe
    Masson, Olivier
    Bouzid, Assil
    [J]. JOURNAL OF THE AMERICAN CERAMIC SOCIETY, 2024,
  • [8] Machine-learned potentials for eucryptite: A systematic comparison
    Hill, Jorg-Rudiger
    Mannstadt, Wolfgang
    [J]. JOURNAL OF MATERIALS RESEARCH, 2023, 38 (24) : 5188 - 5197
  • [9] Machine-learned potentials for eucryptite: A systematic comparison
    Jörg-Rüdiger Hill
    Wolfgang Mannstadt
    [J]. Journal of Materials Research, 2023, 38 : 5188 - 5197
  • [10] How to validate machine-learned interatomic potentials
    Morrow, Joe D.
    Gardner, John L. A.
    Deringer, Volker L.
    [J]. JOURNAL OF CHEMICAL PHYSICS, 2023, 158 (12):