Using Machine Learning for formulating new wall functions for Detached Eddy Simulation
Other conference contribution, 2023
The trained ML model is saved to disk and it is subsequently uploaded into the Python CFD code pyCALC-LES. IDDES is carried out on coarse wall-function meshes. The wall-shear stress (using the local y^+ and u) is predicted using the developed ML model. The test cases are channel flow at Re_tau=16 000 and flat-plate boundary layer at Re_theta=2550.
Large eddy simultiona
wall functions
Machine Learning
IDDES
Author
Lars Davidson
Chalmers, Mechanics and Maritime Sciences (M2), Fluid Dynamics
Barcelona, Spain,
Subject Categories (SSIF 2011)
Theoretical Chemistry
Fluid Mechanics and Acoustics