Machine learning for predicting the viscosity of binary liquid mixtures

被引:23
|
作者
Bilodeau, Camille [1 ,2 ]
Kazakov, Andrei [3 ]
Mukhopadhyay, Sukrit [4 ]
Emerson, Jillian [4 ]
Kalantar, Tom [4 ]
Muzny, Chris [3 ]
Jensen, Klavs [1 ,5 ]
机构
[1] MIT, Chem Engn Dept, 77 Massachusetts Ave, Cambridge, MA 02319 USA
[2] Univ Virginia, Chem Engn Dept, 385 McCormick Rd, Charlottesville, VA 22903 USA
[3] NIST, Thermodynam Res Ctr, Boulder, CO 80305 USA
[4] Dow Chem Co USA, Midland, MI 48674 USA
[5] 385 McCormick Rd, Charlottesville, VA 22903 USA
关键词
Deep learning; Viscosity; Property prediction; Modeling; Data analytics; Formulation; CONNECTIVITY INDEX; SURFACE-TENSION; SYSTEM;
D O I
10.1016/j.cej.2023.142454
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Viscosity is an important parameter in process engineering and is a key design objective for application areas including the coatings, lubricants, personal care, and pharmaceutical industries. The lack of reliable and general methods for predicting the viscosities of mixtures creates a barrier for modern process engineering and product design. In this work, we developed a graph-based neural network architecture and applied it to the problem of predicting the viscosity of binary liquid mixtures as a function of composition and temperature. To obtain a highquality training dataset, we also developed an automated curation pipeline and applied it to a large dataset collected from the literature by the National Institute of Standards and Technology (NIST) to be used as training data. The resulting model predicts viscosity with an MAE of 0.043 and an RMSE of 0.080 in log cP units (base 10). To improve the dependability of the model, we developed a classifier that evaluated the reliability of a prediction based on the variance between an ensemble of models. Using this approach, the model had an effective MAE of 0.029 and RMSE of 0.047 for predictions that were assessed as reliable (80% of the test set). Overall, this work provides 1) a large set of curated viscosity data that can be used for future machine learning efforts, 2) a new, graph-based deep learning approach for predicting the viscosity of binary mixtures, and 3) an illustrative case study for how deep learning can be used for accurate and reliable property prediction.
引用
收藏
页数:10
相关论文
共 50 条
  • [1] VISCOSITY OF BINARY LIQUID MIXTURES
    BALAZS, NL
    RECUEIL DES TRAVAUX CHIMIQUES DES PAYS-BAS-JOURNAL OF THE ROYAL NETHERLANDS CHEMICAL SOCIETY, 1951, 70 (05): : 412 - 418
  • [2] ON THE VISCOSITY OF BINARY LIQUID MIXTURES
    LIMA, FW
    JOURNAL OF PHYSICAL CHEMISTRY, 1952, 56 (09): : 1052 - 1054
  • [3] Correlation of viscosity of binary liquid mixtures
    Lei, QF
    Hou, YC
    FLUID PHASE EQUILIBRIA, 1999, 154 (01) : 153 - 163
  • [4] VISCOSITY OF BINARY-LIQUID MIXTURES
    SAKSENA, MP
    HARMINDER
    KUMAR, S
    JOURNAL OF PHYSICS C-SOLID STATE PHYSICS, 1975, 8 (15): : 2376 - 2381
  • [5] VISCOSITY OF BINARY-LIQUID MIXTURES
    SAKSENA, MP
    KUMAR, S
    HARMINDER
    LADIWALA, G
    INDIAN JOURNAL OF PURE & APPLIED PHYSICS, 1977, 15 (11) : 761 - 763
  • [6] An equation for viscosity of binary liquid mixtures
    Moumouzias, G
    Ritzoulis, G
    COLLECTION OF CZECHOSLOVAK CHEMICAL COMMUNICATIONS, 2001, 66 (09) : 1341 - 1347
  • [7] Machine learning for the prediction of viscosity of ionic liquid-water mixtures
    Chen, Yuqiu
    Peng, Baoliang
    Kontogeorgis, Georgios M.
    Liang, Xiaodong
    JOURNAL OF MOLECULAR LIQUIDS, 2022, 350
  • [8] Predictive, correlative and machine learning models for estimation of viscosity of liquid mixtures
    Prabhune, Aditi
    Mathur, Archana
    Saha, Snehanshu
    Dey, Ranjan
    Journal of Molecular Liquids, 2024, 397
  • [9] Predictive, correlative and machine learning models for estimation of viscosity of liquid mixtures
    Prabhune, Aditi
    Mathur, Archana
    Saha, Snehanshu
    Dey, Ranjan
    JOURNAL OF MOLECULAR LIQUIDS, 2024, 397
  • [10] Predicting Density and Viscosity for Liquid Metals and Alloys Using Machine Learning
    Lei Gan
    International Journal of Thermophysics, 2022, 43