Deep multiscale model learning

被引:47
作者
Wang, Yating [1 ,6 ]
Cheung, Siu Wun [1 ]
Chung, Eric T. [2 ]
Efendiev, Yalchin [1 ,3 ,4 ]
Wang, Min [1 ,5 ]
机构
[1] Texas A&M Univ, Dept Math, College Stn, TX 77843 USA
[2] Chinese Univ Hong Kong, Dept Math, Shatin, Hong Kong, Peoples R China
[3] Texas A&M Univ, Inst Sci Computat, College Stn, TX 77843 USA
[4] North Eastern Fed Univ, Multiscale Model Reduct Lab, Yakutsk 677980, Russia
[5] Duke Univ, Dept Math, Durham, NC 27708 USA
[6] Purdue Univ, Dept Math, W Lafayette, IN 47906 USA
关键词
Multiscale; Deep learning; Upscaling; Neural network; Porous media; FINITE-ELEMENT METHODS; UNCERTAINTY QUANTIFICATION; WAVE-PROPAGATION; FLOWS; HOMOGENIZATION; APPROXIMATION; REDUCTION; EFFICIENT; NETWORKS; PARADIGM;
D O I
10.1016/j.jcp.2019.109071
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
The objective of this paper is to design novel multi-layer neural networks for multiscale simulations of flows taking into account the observed fine data and physical modeling concepts. Our approaches use deep learning techniques combined with local multiscale model reduction methodologies to predict flow dynamics. Using reduced-order model concepts is important for constructing robust deep learning architectures since the reduced-order models provide fewer degrees of freedom. We consider flow dynamics in porous media as multi-layer networks in this work. More precisely, the solution (e.g., pressures and saturation) at the time instant n + 1 depends on the solution at the time instant n and input parameters, such as permeability fields, forcing terms, and initial conditions. One can regard the solution as a multi-layer network, where each layer, in general, is a nonlinear forward map and the number of layers relates to the internal time steps. We will rely on rigorous model reduction concepts to define unknowns and connections between layers. It is critical to use reduced-order models for this purpose, which will identify the regions of influence and the appropriate number of variables. Furthermore, due to the lack of available observed fine data, the reduced-order model can provide us sufficient inexpensive data as needed. The designed deep neural network will be trained using both coarse simulation data which is obtained from the reduced-order model and observed fine data. We will present the main ingredients of our approach and numerical examples. Numerical results show that using deep learning with data generated from multiscale models as well as available observed fine data, we can obtain an improved forward map which can better approximate the fine scale model. (C) 2019 Published by Elsevier Inc.
引用
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页数:17
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