IMECH-IR  > 非线性力学国家重点实验室
An artificial neural network model for recovering small-scale velocity in large-eddy simulation of isotropic turbulent flows
Tan JT(谭江涛)1,2; Jin GD(晋国栋)1,2
Corresponding AuthorJin, Guodong([email protected])
Source PublicationPHYSICS OF FLUIDS
2024-08-01
Volume36Issue:8Pages:16
ISSN1070-6631
AbstractSmall-scale motions in turbulent flows play a significant role in various small-scale processes, such as particle relative dispersion and collision, bubble or droplet deformation, and orientation dynamics of non-sphere particles. Recovering the small-scale flows that cannot be resolved in large eddy simulation (LES) is of great importance for such processes sensitive to the small-scale motions in turbulent flows. This study proposes a subgrid-scale model for recovering the small-scale turbulent velocity field based on the artificial neural network (ANN). The governing equations of small-scale turbulent velocity are linearized, and the pressure gradient and the nonlinear convection term are modeled with the aid of the ANN. Direct numerical simulation (DNS) and filtered direct numerical simulation (FDNS) provide the data required for training and validating the ANN. The large-scale velocity and velocity gradient tensor are selected as inputs for the ANN model. The linearized governing equations of small-scale turbulent velocity are numerically solved by coupling the large-scale flow field information. The results indicate that the model established by the ANN can accurately recover the small-scale velocity lost in FDNS due to filtering operation. With the ANN model, the flow fields at different Reynolds numbers agree well with the DNS results regarding velocity field statistics, flow field structures, turbulent energy spectra, and two-point, two-time Lagrangian correlation functions. This study demonstrates that the proposed ANN model can be applied to recovering the small-scale velocity field in the LES of isotropic turbulent flows at different Reynolds numbers.
DOI10.1063/5.0221039
Indexed BySCI ; EI
Language英语
WOS IDWOS:001294569100035
WOS KeywordTIME CORRELATIONS ; PARTICLES ; STRESS ; FLUX
WOS Research AreaMechanics ; Physics
WOS SubjectMechanics ; Physics, Fluids & Plasmas
Funding ProjectNational Natural Science Foundation of China10.13039/501100001809[11988102] ; NSFC Basic Science Center Program for Multiscale Problems in Nonlinear Mechanics[12272380] ; NSFC Program ; Aeronautical Science Foundation of China ; China Manned Space Engineering Program
Funding OrganizationNational Natural Science Foundation of China10.13039/501100001809 ; NSFC Basic Science Center Program for Multiscale Problems in Nonlinear Mechanics ; NSFC Program ; Aeronautical Science Foundation of China ; China Manned Space Engineering Program
Classification一类/力学重要期刊
Ranking1
ContributorJin, Guodong
Citation statistics
Document Type期刊论文
Identifierhttp://dspace.imech.ac.cn/handle/311007/96567
Collection非线性力学国家重点实验室
Affiliation1.Chinese Acad Sci, Inst Mech, State Key Lab Nonlinear Mech, Beijing 100190, Peoples R China;
2.Univ Chinese Acad Sci, Sch Engn Sci, Beijing 100049, Peoples R China
Recommended Citation
GB/T 7714
Tan JT,Jin GD. An artificial neural network model for recovering small-scale velocity in large-eddy simulation of isotropic turbulent flows[J]. PHYSICS OF FLUIDS,2024,36,8,:16.Rp_Au:Jin, Guodong
APA 谭江涛,&晋国栋.(2024).An artificial neural network model for recovering small-scale velocity in large-eddy simulation of isotropic turbulent flows.PHYSICS OF FLUIDS,36(8),16.
MLA 谭江涛,et al."An artificial neural network model for recovering small-scale velocity in large-eddy simulation of isotropic turbulent flows".PHYSICS OF FLUIDS 36.8(2024):16.
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