Modelling chemical processes in explicit solvents with machine learning potentials

被引:8
|
作者
Zhang, Hanwen [1 ]
Juraskova, Veronika [1 ]
Duarte, Fernanda [1 ]
机构
[1] Chem Res Lab, Oxford, England
基金
英国工程与自然科学研究理事会; 瑞士国家科学基金会;
关键词
DIELS-ALDER REACTIONS; MOLECULAR-DYNAMICS; AB-INITIO; LIQUID WATER; SIMULATIONS;
D O I
10.1038/s41467-024-50418-6
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
Solvent effects influence all stages of the chemical processes, modulating the stability of intermediates and transition states, as well as altering reaction rates and product ratios. However, accurately modelling these effects remains challenging. Here, we present a general strategy for generating reactive machine learning potentials to model chemical processes in solution. Our approach combines active learning with descriptor-based selectors and automation, enabling the construction of data-efficient training sets that span the relevant chemical and conformational space. We apply this strategy to investigate a Diels-Alder reaction in water and methanol. The generated machine learning potentials enable us to obtain reaction rates that are in agreement with experimental data and analyse the influence of these solvents on the reaction mechanism. Our strategy offers an efficient approach to the routine modelling of chemical reactions in solution, opening up avenues for studying complex chemical processes in an efficient manner. Modelling reactions in solution is challenging. Machine learning potentials offer promising alternatives but need large datasets. Here the authors report an automated active learning approach using descriptor-based selectors to model Diels-Alder reactions.
引用
收藏
页数:11
相关论文
共 50 条
  • [31] Delineating implicit and explicit processes in neurofeedback learning
    Munoz-Moldes, Santiago
    Cleeremans, Axel
    NEUROSCIENCE AND BIOBEHAVIORAL REVIEWS, 2020, 118 : 681 - 688
  • [32] DISCOVERY LEARNING IN SPORTS: IMPLICIT OR EXPLICIT PROCESSES?
    Raab, Markus
    Masters, Rich S. W.
    Maxwell, Jon
    Arnold, Andre
    Schlapkohl, Nele
    Poolton, Jamie
    INTERNATIONAL JOURNAL OF SPORT AND EXERCISE PSYCHOLOGY, 2009, 7 (04) : 413 - 430
  • [33] Modelling Machine Learning Models
    Fabra-Boluda, Raul
    Ferri, Cesar
    Hernandez-Orallo, Jose
    Martinez-Plumed, Fernando
    Jose Ramirez-Quintana, M.
    PHILOSOPHY AND THEORY OF ARTIFICIAL INTELLIGENCE 2017, 2018, 44 : 175 - 186
  • [34] Machine learning in sedimentation modelling
    Bhattacharya, B.
    Solomatine, D. P.
    NEURAL NETWORKS, 2006, 19 (02) : 208 - 214
  • [35] Machine Learning for Bioclimatic Modelling
    Bhattacharya, Maumita
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2013, 4 (02) : 1 - 8
  • [36] Machine Learning Potentials for Heterogeneous Catalysis
    Omranpour, Amir
    Elsner, Jan
    Lausch, K. Nikolas
    Behler, Jorg
    ACS CATALYSIS, 2025, 15 (03): : 1616 - 1634
  • [37] Machine learning potentials for tobermorite minerals
    Kobayashi, Keita
    Nakamura, Hiroki
    Yamaguchi, Akiko
    Itakura, Mitsuhiro
    Machida, Masahiko
    Okumura, Masahiko
    COMPUTATIONAL MATERIALS SCIENCE, 2021, 188 (188)
  • [38] Electrostatic Embedding of Machine Learning Potentials
    Zinovjev, Kirill
    JOURNAL OF CHEMICAL THEORY AND COMPUTATION, 2023, 19 (06) : 1888 - 1897
  • [39] Pair Potentials as Machine Learning Features
    Pei, Jun
    Song, Lin Frank
    Merz, Kenneth M., Jr.
    JOURNAL OF CHEMICAL THEORY AND COMPUTATION, 2020, 16 (08) : 5385 - 5400
  • [40] Machine Learning-Based Model Predictive Control of Distributed Chemical Processes
    Wu, Zhe
    Tran, Anh
    Ren, Yi Ming
    Barnes, Cory S.
    Chen, Siyao
    Christofides, Panagiotis D.
    IFAC PAPERSONLINE, 2019, 52 (02): : 120 - 127