4.7 Article

Deep-learning accelerated calculation of real-fluid properties in numerical simulation of complex flowfields

期刊

JOURNAL OF COMPUTATIONAL PHYSICS
卷 444, 期 -, 页码 -

出版社

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.jcp.2021.110567

关键词

Real-fluid properties; Deep learning; Numerical simulations; Supercritical flows; Swirl injector flows; Counterflow diffusion flames

资金

  1. U.S. Air Force Office of Scientific Research [FA9550-18-1-0216]
  2. Ralph N. Read Endowment at the Georgia Institute of Technology
  3. Natural Sciences and Engineering Research Council of Canada (NSERC Post-graduate Scholarship D)
  4. Aerospace Engineering Graduate Fellows Program at the Georgia Institute of Technology

向作者/读者索取更多资源

A deep-learning based approach is developed for efficient evaluation of thermophysical properties in numerical simulation of complex real-fluid flows, significantly improving computational efficiency and enabling robust coupling with a flow solver. After parameter optimization, the proposed method is validated on two test problems, demonstrating effective acceleration of real-fluid property evaluation and flowfield simulation.
A deep-learning based approach is developed for efficient evaluation of thermophysical properties in numerical simulation of complex real-fluid flows. The work enables a significant improvement of computational efficiency by replacing direct calculation of the equation of state with a deep feedforward neural network with appropriate boundary information (DFNN-BC). The proposed method can be coupled to a flow solver in a robust manner. Depending on the numerical formulation of the flow solver, the neural network takes in either the primitive or conservative variables, including the chemical composition of the system, and calculates all relevant fluid properties for the subsequent routines in the solver. Two test problems are employed to validate the proposed methodology. The first uses a preconditioning scheme with dual-time integration for the simulation of swirl rocket injector flow dynamics under supercritical conditions. The second uses a conservative variable based formulation for the simulation of laminar counterflow diffusion flames for cryogenic combustion. A parametric analysis is performed to optimize the numbers of hidden layers and neurons per hidden layer. The computational accuracy, efficiency, and memory requirements of the neural network are examined. The DFNN-BC model accelerates the evaluation of real-fluid properties by a factor of 2.43 and 3.7 for the two test problems, respectively, and the overall flowfield simulation by 1.5 and 2.3, respectively. In addition, the memory usage is reduced by up to five orders of magnitude in comparison with the table look-up method. (C) 2021 Elsevier Inc. All rights reserved.

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