IMECH-IR  > 非线性力学国家重点实验室
Deep learning method for the super-resolution reconstruction of small-scale motions in large-eddy simulation
Zhao QY(赵庆义)1,2; Jin GD(晋国栋)1,2; Zhou ZD(周志登)1,2
Corresponding AuthorJin, Guodong([email protected])
Source PublicationAIP ADVANCES
2022-12-01
Volume12Issue:12Pages:9
AbstractA super-resolution reconstruction model for the subgrid scale (SGS) turbulent flow field in large-eddy simulation (LES) is proposed, and it is called the meta-learning deep convolutional neural network (MLDCNN). Direct numerical simulation (DNS) data of isotropic turbulence are used as the dataset of the model. The MLDCNN is an unsupervised learning model, which only includes high-resolution DNS data without manually inputting preprocessed low-resolution data. In this model, the training process adopts the meta-learning method. First, in the a priori test, the SGS turbulent flow motions in the filtered DNS (FDNS) flow field are reconstructed, and the energy spectrum and probability density function of the velocity gradient of the DNS flow field are reconstructed with high accuracy. Then, in the a posteriori test, the super-resolution reconstruction of the LES flow field is carried out. The difficulty of LES flow field reconstruction is that it contains filtering loss and subgrid model errors relative to the DNS flow field. The super-resolution reconstruction of the LES flow field achieves good results through this unsupervised learning model. The proposed model makes a good prediction of small-scale motions in the LES flow field. This work improves the prediction accuracy of LES, which is crucial for the phenomena dominated by small-scale motions, such as relative motions of particles suspended in turbulent flows. (c) 2022 Author(s).
DOI10.1063/5.0127808
Indexed BySCI ; EI
Language英语
WOS IDWOS:000894508800006
WOS KeywordCIRCULAR-CYLINDER ; TURBULENCE ; FLOW ; DECONVOLUTION ; NETWORK ; MODEL
WOS Research AreaScience & Technology - Other Topics ; Materials Science ; Physics
WOS SubjectNanoscience & Nanotechnology ; Materials Science, Multidisciplinary ; Physics, Applied
Funding ProjectNSFC Basic Science Center Program for Multiscale Problems in Nonlinear Mechanics[11988102] ; NSFC Program[12272380] ; National Key Project[GJXM92579]
Funding OrganizationNSFC Basic Science Center Program for Multiscale Problems in Nonlinear Mechanics ; NSFC Program ; National Key Project
ClassificationQ3
Ranking1
ContributorJin, Guodong
Citation statistics
Cited Times:4[WOS]   [WOS Record]     [Related Records in WOS]
Document Type期刊论文
Identifierhttp://dspace.imech.ac.cn/handle/311007/91342
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
Zhao QY,Jin GD,Zhou ZD. Deep learning method for the super-resolution reconstruction of small-scale motions in large-eddy simulation[J]. AIP ADVANCES,2022,12,12,:9.Rp_Au:Jin, Guodong
APA 赵庆义,晋国栋,&周志登.(2022).Deep learning method for the super-resolution reconstruction of small-scale motions in large-eddy simulation.AIP ADVANCES,12(12),9.
MLA 赵庆义,et al."Deep learning method for the super-resolution reconstruction of small-scale motions in large-eddy simulation".AIP ADVANCES 12.12(2022):9.
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