Computationally efficient CFD prediction of bubbly flow using physics-guided deep learning

被引:30
作者
Bao, Han [1 ]
Feng, Jinyong [2 ]
Nam Dinh [3 ]
Zhang, Hongbin [1 ]
机构
[1] Idaho Natl Lab, POB 1625,MS 3860, Idaho Falls, ID 83415 USA
[2] MIT, 77 Massachusetts Ave, Cambridge, MA 02139 USA
[3] North Carolina State Univ, Raleigh, NC 27695 USA
关键词
Deep learning; Two-phase bubbly flow; Coarse-mesh CFD; Physical feature; Data similarity; UNCERTAINTY QUANTIFICATION; PHASE DISTRIBUTION; CLOSURE RELATIONS; SINGLE BUBBLES; 2-PHASE FLOW; MODEL; FLUID; TURBULENCE; FORCE; REGULARIZATION;
D O I
10.1016/j.ijmultiphaseflow.2020.103378
中图分类号
O3 [力学];
学科分类号
08 ; 0801 ;
摘要
To realize efficient computational fluid dynamics (CFD) prediction of two-phase flow, a multi-scale framework was proposed in this paper by applying a physics-guided data-driven approach. Instrumental to this framework, Feature Similarity Measurement (FSM) technique was developed for error estimation in two-phase flow simulation using coarse-mesh CFD, to achieve a comparable accuracy as fine-mesh simulations with fast-running feature. By defining physics-guided parameters and variable gradients as physical features, FSM has the capability to capture the underlying local patterns in the coarse-mesh CFD simulation. Massive low-fidelity data and respective high-fidelity data are used to explore the underlying information relevant to the main simulation errors and the effects of phenomenological scaling. By learning from previous simulation data, a surrogate model using deep feedforward neural network (DFNN) can be developed and trained to estimate the simulation error of coarse-mesh CFD. In a demonstration case of two-phase bubbly flow, the DFNN model well captured and corrected the unphysical "peaks" in the velocity and void fraction profiles near the wall in the coarse-mesh configuration, even for extrapolative predictions. The research documented supports the feasibility of the physics-guided deep learning methods for coarse mesh CFD simulations which has a potential for the efficient industrial design. (C) 2020 Elsevier Ltd. All rights reserved.
引用
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页数:20
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