TY - JOUR
T1 - 深度学习在边界层流动稳定性分析中的应用
AU - Fan, Jiakun
AU - Yao, Fangzhou
AU - Huang, Jiangtao
AU - Xu, Jiakuan
AU - Qiao, Lei
AU - Bai, Junqiang
N1 - Publisher Copyright:
© 2024 Zhongguo Kongqi Dongli Yanjiu yu Fazhan Zhongxin. All rights reserved.
PY - 2024/3
Y1 - 2024/3
N2 - The eN method based on linear stability theory (LST) is one of the more reliable methods in the prediction of boundary layer transition. In order to greatly simplify and automate the solution process of the traditional LST eigenvalue problem, the convolutional neural network (CNN) is trained on the LST analysis sample set of the boundary layer similarity solution. For the streamwise and crossflow instabilities, the local growth rate, N factor and transition location are predicted by CNN on a naturally laminar airfoil and an infinite swept-back wing respectively, which are in good agreement with the results of standard LST. It is verified that CNN can encode the velocity derivative information of the boundary layer profile into a scalar feature that satisfies the Galilean invariance, and plays a role in characterizing the pressure gradient in the boundary layer of an airfoil or the crossflow intensity in the boundary layer of a swept-back wing. Based on the prediction of LST eigenvalues by CNN, the total loss function is constructed by the governing equations of LST, the boundary conditions and the trivial solution penalty term to train the physics-informed neural network (PINN), which realizes an accurate prediction of LST eigenfunctions without relying on samples. The results show that the PINN model can provide an effective modeling method for the eigenfunction problem of LST.
AB - The eN method based on linear stability theory (LST) is one of the more reliable methods in the prediction of boundary layer transition. In order to greatly simplify and automate the solution process of the traditional LST eigenvalue problem, the convolutional neural network (CNN) is trained on the LST analysis sample set of the boundary layer similarity solution. For the streamwise and crossflow instabilities, the local growth rate, N factor and transition location are predicted by CNN on a naturally laminar airfoil and an infinite swept-back wing respectively, which are in good agreement with the results of standard LST. It is verified that CNN can encode the velocity derivative information of the boundary layer profile into a scalar feature that satisfies the Galilean invariance, and plays a role in characterizing the pressure gradient in the boundary layer of an airfoil or the crossflow intensity in the boundary layer of a swept-back wing. Based on the prediction of LST eigenvalues by CNN, the total loss function is constructed by the governing equations of LST, the boundary conditions and the trivial solution penalty term to train the physics-informed neural network (PINN), which realizes an accurate prediction of LST eigenfunctions without relying on samples. The results show that the PINN model can provide an effective modeling method for the eigenfunction problem of LST.
KW - convolutional neural network
KW - crossflow instability
KW - e method
KW - linear stability theory
KW - physics-informed neural network
KW - streamwise instability
UR - http://www.scopus.com/inward/record.url?scp=85200559194&partnerID=8YFLogxK
U2 - 10.7638/kqdlxxb-2023.0073
DO - 10.7638/kqdlxxb-2023.0073
M3 - 文章
AN - SCOPUS:85200559194
SN - 0258-1825
VL - 42
SP - 30
EP - 46
JO - Kongqi Donglixue Xuebao/Acta Aerodynamica Sinica
JF - Kongqi Donglixue Xuebao/Acta Aerodynamica Sinica
IS - 3
ER -