Data-driven physics-informed constitutive metamodeling of complex fluids: A multifidelity neural network (MFNN) framework

被引:52
|
作者
Mahmoudabadbozchelou, Mohammadamin [1 ]
Caggioni, Marco [2 ]
Shahsavari, Setareh [2 ]
Hartt, William H. [2 ]
Em Karniadakis, George [3 ]
Jamali, Safa [1 ]
机构
[1] Northeastern Univ, Dept Mech & Ind Engn, Boston, MA 02115 USA
[2] Procter & Gamble Co, Complex Fluid Microstruct, Cincinnati, OH 45202 USA
[3] Brown Univ, Div Appl Math, Providence, RI 02912 USA
关键词
Multifidelity neural network; Deep neural networks; Data-driven constitutive modeling; Physics-informed machine learning; Wormlike micelles; Colloidal gels; FLOW-INDUCED STRUCTURE; COLLOIDAL GELS; RHEOLOGICAL PROPERTIES; HEAT-EXCHANGERS; STEADY SHEAR; MODEL; MICROSTRUCTURE; STRESS; PHASE; DECOMPOSITION;
D O I
10.1122/8.0000138
中图分类号
O3 [力学];
学科分类号
08 ; 0801 ;
摘要
In this work, we introduce a comprehensive machine-learning algorithm, namely, a multifidelity neural network (MFNN) architecture for data-driven constitutive metamodeling of complex fluids. The physics-based neural networks developed here are informed by the underlying rheological constitutive models through the synthetic generation of low-fidelity model-based data points. The performance of these rheologically informed algorithms is thoroughly investigated and compared against classical deep neural networks (DNNs). The MFNNs are found to recover the experimentally observed rheology of a multicomponent complex fluid consisting of several different colloidal particles, wormlike micelles, and other oil and aromatic particles. Moreover, the data-driven model is capable of successfully predicting the steady state shear viscosity of this fluid under a wide range of applied shear rates based on its constituting components. Building upon the demonstrated framework, we present the rheological predictions of a series of multicomponent complex fluids made by DNN and MFNN. We show that by incorporating the appropriate physical intuition into the neural network, the MFNN algorithms capture the role of experiment temperature, the salt concentration added to the mixture, as well as aging within and outside the range of training data parameters. This is made possible by leveraging an abundance of synthetic low-fidelity data that adhere to specific rheological models. In contrast, a purely data-driven DNN is consistently found to predict erroneous rheological behavior.
引用
收藏
页码:179 / 198
页数:20
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