Machine learning coarse grained models for water

被引:134
|
作者
Chan, Henry [1 ]
Cherukara, Mathew J. [1 ]
Narayanan, Badri [1 ,3 ]
Loeffler, Troy D. [1 ]
Benmore, Chris [2 ]
Gray, Stephen K. [1 ,4 ]
Sankaranarayanan, Subramanian K. R. S. [1 ,4 ]
机构
[1] Argonne Natl Lab, Ctr Nanoscale Mat, Argonne, IL 60439 USA
[2] Argonne Natl Lab, X R y Sci Div, Argonne, IL 60439 USA
[3] Univ Louisville, Dept Mech Engn, Louisville, KY 40292 USA
[4] Univ Chicago, Consortium Adv Sci & Engn, Chicago, IL 60637 USA
关键词
LIQUID WATER; CUBIC ICE; STACKING DISORDER; MOLECULAR-MODEL; SELF-DIFFUSION; FREE-ENERGY; TRANSFORMATIONS; CRYSTALLIZATION; TIP4P/2005; NUCLEATION;
D O I
10.1038/s41467-018-08222-6
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
An accurate and computationally efficient molecular level description of mesoscopic behavior of ice-water systems remains a major challenge. Here, we introduce a set of machine-learned coarse-grained (CG) models (ML-BOP, ML-BOPdih, and ML-mW) that accurately describe the structure and thermodynamic anomalies of both water and ice at mesoscopic scales, all at two orders of magnitude cheaper computational cost than existing atomistic models. In a significant departure from conventional force-field fitting, we use a multilevel evolutionary strategy that trains CG models against not just energetics from first-principles and experiments but also temperature-dependent properties inferred from on-the-fly molecular dynamics (-10' s of milliseconds of overall trajectories). Our ML BOP models predict both the correct experimental melting point of ice and the temperature of maximum density of liquid water that remained elusive to-date. Our ML workflow navigates efficiently through the high-dimensional parameter space to even improve upon existing high-quality CG models (e.g. mW model).
引用
收藏
页数:14
相关论文
共 50 条
  • [1] Machine learning coarse grained models for water
    Henry Chan
    Mathew J. Cherukara
    Badri Narayanan
    Troy D. Loeffler
    Chris Benmore
    Stephen K. Gray
    Subramanian K. R. S. Sankaranarayanan
    [J]. Nature Communications, 10
  • [2] Machine learning coarse-grained model for water
    Chan, Henry
    Cherukara, Mathew
    Narayanan, Badri
    Loeffler, Troy
    Benmore, Chris
    Gray, Stephen
    Sankaranarayanan, Subramanian
    [J]. ABSTRACTS OF PAPERS OF THE AMERICAN CHEMICAL SOCIETY, 2019, 258
  • [3] Scientific Machine Learning for Coarse-Grained Constitutive Models
    Gonzalez, David
    Chinesta, Francisco
    Cueto, Elias
    [J]. 23RD INTERNATIONAL CONFERENCE ON MATERIAL FORMING, 2020, 47 : 693 - 695
  • [4] Enhancing Coarse-Grained Models through Machine Learning
    Karmakar, Tarak
    Soares, Thereza A.
    Merz Jr, Kenneth M.
    [J]. JOURNAL OF CHEMICAL INFORMATION AND MODELING, 2024, 64 (08) : 2931 - 2932
  • [5] Coarse-grained models of water
    Darre, Leonardo
    Machado, Matias R.
    Pantano, Sergio
    [J]. WILEY INTERDISCIPLINARY REVIEWS-COMPUTATIONAL MOLECULAR SCIENCE, 2012, 2 (06) : 921 - 930
  • [6] Machine learning coarse-grained models of dissolutive wetting: a droplet on soluble surfaces
    Miao, Qing
    Yuan, Quanzi
    [J]. PHYSICAL CHEMISTRY CHEMICAL PHYSICS, 2023, 25 (10) : 7487 - 7495
  • [7] Atomistic and coarse-grained models of water
    Head-Gordon, Teresa
    [J]. ABSTRACTS OF PAPERS OF THE AMERICAN CHEMICAL SOCIETY, 2013, 246
  • [8] Machine-Learned Coarse-Grained Models
    Bejagam, Karteek K.
    Singh, Samrendra
    An, Yaxin
    Deshmukh, Sanket A.
    [J]. JOURNAL OF PHYSICAL CHEMISTRY LETTERS, 2018, 9 (16): : 4667 - 4672
  • [9] Machine learning approach for accurate backmapping of coarse-grained models to all-atom models
    An, Yaxin
    Deshmukh, Sanket A.
    [J]. CHEMICAL COMMUNICATIONS, 2020, 56 (65) : 9312 - 9315
  • [10] Machine Learning of Coarse-Grained Models for Organic Molecules and Polymers: Progress, Opportunities, and Challenges
    Ye, Huilin
    Xian, Weikang
    Li, Ying
    [J]. ACS OMEGA, 2021, 6 (03): : 1758 - 1772