Machine Learning Diffusion Monte Carlo Forces

被引:8
|
作者
Huang, Cancan [1 ]
Rubenstein, Brenda M. [1 ]
机构
[1] Brown Univ, Dept Chem, Providence, RI 02912 USA
来源
JOURNAL OF PHYSICAL CHEMISTRY A | 2023年 / 127卷 / 01期
基金
美国国家科学基金会;
关键词
COUPLED-CLUSTER THEORY; QUANTUM; APPROXIMATION; SIMULATIONS; POTENTIALS; PRINCIPLE; ACCURATE;
D O I
10.1021/acs.jpca.2c05904
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
Diffusion Monte Carlo (DMC) is one of the most accurate techniques available for calculating the electronic properties of molecules and materials, yet it often remains a challenge to economically compute forces using this technique. As a result, ab initio molecular dynamics simulations and geometry optimizations that employ Diffusion Monte Carlo forces are often out of reach. One potential approach for accelerating the computation of "DMC forces" is to machine learn these forces from DMC energy calculations. In this work, we employ Behler-Parrinello Neural Networks to learn DMC forces from DMC energy calculations for geometry optimization and molecular dynamics simulations of small molecules. We illustrate the unique challenges that stem from learning forces without explicit force data and from noisy energy data by making rigorous comparisons of potential energy surface, dynamics, and optimization predictions among ab initio density functional theory (DFT) simulations and machine-learning models trained on DFT energies with forces, DFT energies without forces, and DMC energies without forces. We show for three small molecules-C2, H2O, and CH3Cl-that machine-learned DMC dynamics can reproduce average bond lengths and angles within a few percent of known experimental results at one hundredth of the typical cost. Our work describes a much-needed means of performing dynamics simulations on high-accuracy, DMC PESs and for generating DMC-quality molecular geometries given current algorithmic constraints.
引用
收藏
页码:339 / 355
页数:17
相关论文
共 50 条
  • [41] Learning Algorithm of Boltzmann Machine Based on Spatial Monte Carlo Integration Method
    Yasuda, Muneki
    [J]. ALGORITHMS, 2018, 11 (04)
  • [42] Prediction of electron beam parameters of a Monte Carlo model using machine learning
    Wagner, A.
    Boni, K. Brou
    Rault, E.
    Crop, F.
    Lacornerie, T.
    Van Gestel, D.
    Reynaert, N.
    [J]. RADIOTHERAPY AND ONCOLOGY, 2020, 152 : S716 - S717
  • [43] Continuous Time Quantum Monte Carlo in Combination with Machine Learning on the Hubbard Model
    Lee, Hunpyo
    [J]. JOURNAL OF THE KOREAN PHYSICAL SOCIETY, 2019, 75 (10) : 841 - 844
  • [44] Machine learning estimation of heterogeneous causal effects: Empirical Monte Carlo evidence
    Knaus, Michael C.
    Lechner, Michael
    Strittmatter, Anthony
    [J]. ECONOMETRICS JOURNAL, 2021, 24 (01): : 134 - 161
  • [45] Total forces in the diffusion Monte Carlo method with nonlocal pseudopotentials (vol 78, art no 035134, 2008)
    Badinski, A.
    Needs, R. J.
    [J]. PHYSICAL REVIEW B, 2008, 78 (07):
  • [46] Monte Carlo simulation results for critical Casimir forces
    Vasilyev, O.
    Gambassi, A.
    Maciolek, A.
    Dietrich, S.
    [J]. EPL, 2007, 80 (06)
  • [47] Path integral Monte Carlo calculation of electronic forces
    Zong, FH
    Ceperley, DM
    [J]. PHYSICAL REVIEW E, 1998, 58 (04) : 5123 - 5130
  • [48] Algorithmic differentiation and the calculation of forces by quantum Monte Carlo
    Sorella, Sandro
    Capriotti, Luca
    [J]. JOURNAL OF CHEMICAL PHYSICS, 2010, 133 (23):
  • [49] Correlated sampling in quantum Monte Carlo: A route to forces
    Filippi, C
    Umrigar, CJ
    [J]. PHYSICAL REVIEW B, 2000, 61 (24) : R16291 - R16294
  • [50] Practical Schemes for Accurate Forces in Quantum Monte Carlo
    Moroni, S.
    Saccani, S.
    Filippi, C.
    [J]. JOURNAL OF CHEMICAL THEORY AND COMPUTATION, 2014, 10 (11) : 4823 - 4829