Generating a Machine-Learned Equation of State for Fluid Properties

被引:26
|
作者
Zhu, Kezheng [1 ]
Muller, Erich A. [1 ]
机构
[1] Imperial Coll London, Dept Chem Engn, London SW7 2AZ, England
来源
JOURNAL OF PHYSICAL CHEMISTRY B | 2020年 / 124卷 / 39期
基金
英国工程与自然科学研究理事会;
关键词
ARTIFICIAL NEURAL-NETWORKS; THERMOPHYSICAL PROPERTIES; MOLECULAR SIMULATION; FORCE-FIELD; PREDICTION; REFRIGERANTS; TEMPERATURE; SYSTEMS; BINARY; GASES;
D O I
10.1021/acs.jpcb.0c05806
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
Equations of state (EoS) for fluids have been a staple of engineering design and practice for over a century. Available EoS are based on the fitting of a closed-form analytical expression to suitable experimental data. The mathematical structure and the underlying physical model significantly restrain the applicability and accuracy of the resulting EoS. This contribution explores the issues surrounding the substitution of machine-learned models for analytical EoS. In particular, we describe, as a proof of concept, the effectiveness of a machine- learned model to replicate the statistical associating fluid theory (SAFT-VR Mie) EoS for pure fluids. To quantify the effectiveness of machine-learning techniques, a large set of pseudodata is obtained from the EoS and used to train the machine-learning models. We employ artificial neural networks and Gaussian process regression to correlate and predict thermodynamic properties such as critical pressure and temperature, vapor pressures, and densities of pure model fluids; these are performed on the basis of molecular descriptors. The comparisons between the machine- learned EoS and the surrogate data set suggest that the proposed approach shows promise as a viable technique for the correlation and prediction of thermophysical properties of fluids.
引用
下载
收藏
页码:8628 / 8639
页数:12
相关论文
共 50 条
  • [31] A theoretical case study of the generalization of machine-learned potentials
    Wang, Yangshuai
    Patel, Shashwat
    Ortner, Christoph
    Computer Methods in Applied Mechanics and Engineering, 2024, 422
  • [32] Ovarian torsion: developing a machine-learned algorithm for diagnosis
    Jeffrey P. Otjen
    A. Luana Stanescu
    Adam M. Alessio
    Marguerite T. Parisi
    Pediatric Radiology, 2020, 50 : 706 - 714
  • [33] INSIGHTS FROM MACHINE-LEARNED DIET SUCCESS PREDICTION
    Weber, Ingmar
    Achananuparp, Palakorn
    PACIFIC SYMPOSIUM ON BIOCOMPUTING 2016, 2016, : 540 - 551
  • [34] Machine-Learned Prediction Equilibrium for Dynamic Traffic Assignment
    Graf, Lukas
    Harks, Tobias
    Kollias, Kostas
    Markl, Michael
    THIRTY-SIXTH AAAI CONFERENCE ON ARTIFICIAL INTELLIGENCE / THIRTY-FOURTH CONFERENCE ON INNOVATIVE APPLICATIONS OF ARTIFICIAL INTELLIGENCE / THE TWELVETH SYMPOSIUM ON EDUCATIONAL ADVANCES IN ARTIFICIAL INTELLIGENCE, 2022, : 5059 - 5067
  • [35] Loic Groboi, Machine-Learned Coreference Resolution for DEMOCRAT
    Grobol, Loic
    LANGAGES, 2021, (224) : 129 - +
  • [36] Training Machine-Learned Density Functionals on Band Gaps
    Bystrom, Kyle
    Falletta, Stefano
    Kozinsky, Boris
    JOURNAL OF CHEMICAL THEORY AND COMPUTATION, 2024, 20 (17) : 7516 - 7532
  • [37] Exploring thermal properties of PbSnTeSe and PbSnTeS high entropy alloys with machine-learned potentials
    Chang, Chun-Ming
    MODELLING AND SIMULATION IN MATERIALS SCIENCE AND ENGINEERING, 2024, 32 (03)
  • [38] Machine-learned dynamic disorder of electron transfer coupling
    Wang, Yi-Siang
    Wang, Chun-, I
    Yang, Chou-Hsun
    Hsu, Chao-Ping
    JOURNAL OF CHEMICAL PHYSICS, 2023, 159 (03):
  • [39] Machine-learned security assessment for changing system topologies
    Bellizio, Federica
    Cremer, Jochen L.
    Strbac, Goran
    INTERNATIONAL JOURNAL OF ELECTRICAL POWER & ENERGY SYSTEMS, 2022, 134
  • [40] Machine-learned approximations to Density Functional Theory Hamiltonians
    Ganesh Hegde
    R. Chris Bowen
    Scientific Reports, 7