A review of machine learning potentials and their applications to molecular simulation

被引:0
|
作者
Liu D. [1 ]
Zhang F. [1 ]
Liu Z. [1 ]
Lu D. [1 ]
机构
[1] Department of Chemical Engineering, Tsinghua University, Beijing
来源
Huagong Xuebao/CIESC Journal | 2024年 / 75卷 / 04期
关键词
computational chemistry; machine learning potentials; molecular simulation; thermodynamics;
D O I
10.11949/0438-1157.20231030
中图分类号
学科分类号
摘要
Molecular dynamics simulation has become an important tool for the research and development of chemical engineering processes and technologies. However, the insufficient accuracy of classical molecular dynamics simulations and the high computational cost of ab initio molecular dynamics simulations have restricted the widespread applications of molecular simulation technology. The emergence and development of machine learning technology has led to the rapid development of molecular simulation based on machine learning potentials, which offers an efficient way to achieve a greatly improved accuracy at a lower computing loading, thereby bolstering the potential of molecular simulations in practical applications. This review started by an overview of the development of machine learning potentials with emphasis on the construction methods and principles of machine learning potential models. The techniques associated with machine learning potentials including dataset construction, model training, model transfer and application were detailed. The strengths and weaknesses of different types of machine learning models were also discussed, followed by the prospects for the development and applications machine learning potentials. © 2024 Materials China. All rights reserved.
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页码:1241 / 1255
页数:14
相关论文
共 120 条
  • [91] Rasmussen C E, Williams C K I., Gaussian Processes for Machine Learning, (2006)
  • [92] Wood M A, Thompson A P., Extending the accuracy of the SNAP interatomic potential form, The Journal of Chemical Physics, 148, 24, (2018)
  • [93] Schutt K, Unke O, Gastegger M., Equivariant message passing for the prediction of tensorial properties and molecular spectra, Proceedings of the 38th International Conference on Machine Learning, pp. 9377-9388, (2021)
  • [94] Hofmann T, Scholkopf B, Smola A J., Kernel methods in machine learning, The Annals of Statistics, 36, 3, pp. 1171-1220, (2008)
  • [95] Zhang L F, Wang H, Muniz M C, Et al., A deep potential model with long-range electrostatic interactions, The Journal of Chemical Physics, 156, 12, (2022)
  • [96] Zeng J Z, Giese T J, Ekesan S, Et al., Development of range-corrected deep learning potentials for fast, accurate quantum mechanical/molecular mechanical simulations of chemical reactions in solution, Journal of Chemical Theory and Computation, 17, 11, pp. 6993-7009, (2021)
  • [97] Zhang D, Bi H R, Dai F Z, Et al., DPA-1: pretraining of attention-based deep potential model for molecular simulation, (2022)
  • [98] Zhang D, Liu X, Zhang X Y, Et al., DPA-2: towards a universal large atomic model for molecular and material simulation, (2023)
  • [99] Zeng J Z, Zhang D, Lu D H, Et al., DeePMD-kit v2: a software package for deep potential models, The Journal of Chemical Physics, 159, 5, (2023)
  • [100] Smith J S, Nebgen B T, Zubatyuk R, Et al., Outsmarting Quantum Chemistry Through Transfer Learning, (2018)