Uncertainty Quantification for Multiphase Computational Fluid Dynamics Closure Relations with a Physics-Informed Bayesian Approach

被引:2
|
作者
Liu, Yang [1 ]
Dinh, Nam [2 ]
Sun, Xiaodong [3 ]
Hu, Rui [1 ]
机构
[1] Argonne Natl Lab, Nucl Sci & Engn Div, Lemont, IL 60439 USA
[2] North Carolina State Univ, Dept Nucl Engn, Raleigh, NC USA
[3] Univ Michigan, Dept Nucl Engn & Radiol Sci, Ann Arbor, MI USA
关键词
Two-fluid model; uncertainty quantification; Kalman filtering; physics-informed machine learning; DATA-DRIVEN; BUBBLY FLOWS; MODEL; SIMULATIONS; TURBULENCE;
D O I
10.1080/00295450.2022.2162792
中图分类号
TL [原子能技术]; O571 [原子核物理学];
学科分类号
0827 ; 082701 ;
摘要
Multiphase Computational Fluid Dynamics (MCFD) based on the two-fluid model is considered a promising tool to model complex two-phase flow systems. MCFD simulation can predict local flow features without resolving interfacial information. As a result, the MCFD solver relies on closure relations to describe the interaction between the two phases. Those empirical or semi-mechanistic closure relations constitute a major source of uncertainty for MCFD predictions.In this paper, we leverage a physics-informed uncertainty quantification (UQ) approach to inversely quantify the closure relations' model form uncertainty in a physically consistent manner. This proposed approach considers the model form uncertainty terms as stochastic fields that are additive to the closure relation outputs. Combining dimensionality reduction and Gaussian processes, the posterior distribution of the stochastic fields can be effectively quantified within the Bayesian framework with the support of experimental measurements. As this UQ approach is fully integrated into the MCFD solving process, the physical constraints of the system can be naturally preserved in the UQ results. In a case study of adiabatic bubbly flow, we demonstrate that this UQ approach can quantify the model form uncertainty of the MCFD interfacial force closure relations, thus effectively improving the simulation results with relatively sparse data support.
引用
收藏
页码:2002 / 2015
页数:14
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