Data-Driven RANS Turbulence Closures for Forced Convection Flow in Reactor Downcomer Geometry

被引:1
作者
Iskhakov, Arsen S. [1 ]
Tai, Cheng-Kai [1 ]
Bolotnov, Igor A. [1 ]
Nguyen, Tri [2 ]
Merzari, Elia [2 ]
Shaver, Dillon R. [3 ]
Dinh, Nam T. [1 ]
机构
[1] North Carolina State Univ, Dept Nucl Engn, Raleigh, NC 27607 USA
[2] Penn State Univ, Dept Nucl Engn, State Coll, PA USA
[3] Argonne Natl Lab, Nucl Sci & Engn Div, Lemont, IL USA
关键词
Machine learning; turbulence modeling; forced convection; low- and high-Prandtl fluids; data-driven modeling; MODEL;
D O I
10.1080/00295450.2023.2185056
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
Recent progress in data-driven turbulence modeling has shown its potential to enhance or replace traditional equation-based Reynolds-averaged Navier-Stokes (RANS) turbulence models. This work utilizes invariant neural network (NN) architectures to model Reynolds stresses and turbulent heat fluxes in forced convection flows (when the models can be decoupled). As the considered flow is statistically one dimensional, the invariant NN architecture for the Reynolds stress model reduces to the linear eddy viscosity model. To develop the data-driven models, direct numerical and RANS simulations in vertical planar channel geometry mimicking a part of the reactor downcomer are performed. Different conditions and fluids relevant to advanced reactors (sodium, lead, unitary-Prandtl number fluid, and molten salt) constitute the training database. The models enabled accurate predictions of velocity and temperature, and compared to the baseline k -tau turbulence model with the simple gradient diffusion hypothesis, do not require tuning of the turbulent Prandtl number. The data-driven framework is implemented in the open-source graphics processing unit-accelerated spectral element solver nekRS and has shown the potential for future developments and consideration of more complex mixed convection flows.
引用
收藏
页码:1167 / 1184
页数:18
相关论文
共 38 条
[1]   Development and Use of Machine-Learnt Algebraic Reynolds Stress Models for Enhanced Prediction of Wake Mixing in Low-Pressure Turbines [J].
Akolekar, H. D. ;
Weatheritt, J. ;
Hutchins, N. ;
Sandberg, R. D. ;
Laskowski, G. ;
Michelassi, V. .
JOURNAL OF TURBOMACHINERY-TRANSACTIONS OF THE ASME, 2019, 141 (04)
[2]  
BANKO A. J., 2020, INT J ENERG RES
[3]  
BOLOTNOV, 2021, ANLNSE2111, DOI [10.2172/1873405, DOI 10.2172/1873405]
[4]   Discovering governing equations from data by sparse identification of nonlinear dynamical systems [J].
Brunton, Steven L. ;
Proctor, Joshua L. ;
Kutz, J. Nathan .
PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA, 2016, 113 (15) :3932-3937
[5]   A robust and accurate outflow boundary condition for incompressible flow simulations on severely-truncated unbounded domains [J].
Dong, S. ;
Karniadakis, G. E. ;
Chryssostomidis, C. .
JOURNAL OF COMPUTATIONAL PHYSICS, 2014, 261 :83-105
[7]   Turbulence Modeling in the Age of Data [J].
Duraisamy, Karthik ;
Iaccarino, Gianluca ;
Xiao, Heng .
ANNUAL REVIEW OF FLUID MECHANICS, VOL 51, 2019, 51 :357-377
[8]   Physics-constrained machine learning for thermal turbulence modelling at low Prandtl numbers [J].
Fiore, Matilde ;
Koloszar, Lilla ;
Fare, Clyde ;
Mendez, Miguel Alfonso ;
Duponcheel, Matthieu ;
Bartosiewicz, Yann .
INTERNATIONAL JOURNAL OF HEAT AND MASS TRANSFER, 2022, 194
[9]  
FISCHER P., 2021, ARXIV
[10]   Quantifying model form uncertainty in Reynolds-averaged turbulence models with Bayesian deep neural networks [J].
Geneva, Nicholas ;
Zabaras, Nicholas .
JOURNAL OF COMPUTATIONAL PHYSICS, 2019, 383 :125-147