4.7 Article

A new data assimilation method of recovering turbulent mean flow field at high Reynolds numbers

Journal

AEROSPACE SCIENCE AND TECHNOLOGY
Volume 126, Issue -, Pages -

Publisher

ELSEVIER FRANCE-EDITIONS SCIENTIFIQUES MEDICALES ELSEVIER
DOI: 10.1016/j.ast.2022.107328

Keywords

Data assimilation; Turbulent flow; Machine learning; POD; Computational fluid dynamics

Funding

  1. National Natural Science Foundation of China [92152301, 11902270]
  2. Fundamental Research Funds for the Central Universities [D5000220163]
  3. foundation of National Key Laboratory of Science and Technology on Aerodynamic Design and Research [614220121010115]
  4. National Defense Science and Technology 173 Program of Technical Field Fund [2021-JCJQ-JJ-1050]

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This paper proposes a new data assimilation method, called Proper Orthogonal Decomposition Inversion (POD-Inversion), for recovering the high-fidelity turbulent mean flow field around an airfoil at high Reynolds numbers based on experimental data. The proposed method can reconstruct the high-fidelity mean flow field combined with experimental force coefficients and significantly reduce the dimensions of the system. The effectiveness of the method is verified by transonic flow and separated flow cases, demonstrating its ability to recover turbulent flow fields that optimally match the experimental data and reduce the error of aerodynamic coefficients. Furthermore, the proposed method can provide high-fidelity mean field data for establishing turbulence models based on machine learning.
This paper proposes a new data assimilation method for recovering the high-fidelity turbulent mean flow field around airfoil at high Reynolds numbers based on experimental data, which is called Proper Orthogonal Decomposition Inversion (POD-Inversion) data assimilation method. Aiming at flows including shock wave discontinuities or separation at high angles of attack, the proposed method can reconstruct the high-fidelity mean flow field combined with experimental force coefficients. We firstly perform the POD analysis to turbulent eddy viscosity fields computed by the SA model and obtain base POD modes. Then the POD coefficients are optimized by global optimization algorithm coupling with computational fluid dynamics (CFD) solver. The high-fidelity turbulent mean flow fields are recovered by several main modes, which can dramatically reduce dimensions of the system. The effectiveness of the method is verified by cases of transonic flow around the RAE2822 airfoil at high Reynolds numbers and the separated flow around S809 airfoil at high angles of attack. The results demonstrate that the proposed data assimilation method can recover turbulent flow fields which optimally match the experimental data, and can significantly reduce the error of aerodynamic coefficients. Furthermore, the proposed method can provide high-fidelity mean field data to establish turbulence models based on machine learning.(c) 2022 Published by Elsevier Masson SAS.

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