Fully convolutional networks for velocity-field predictions based on the wall heat flux in turbulent boundary layers Articles uri icon

authors

  • Guastoni, Luca
  • Balasubramanian, Arivazhagan G.
  • FOROOZAN, FIROOZEH
  • GÜEMES JIMENEZ, ALEJANDRO
  • IANIRO, ANDREA
  • DISCETTI, STEFANO
  • SCHLATTER, PHILIPP CHRISTIAN
  • Azizpour, Hossein
  • Vinuesa, Ricardo

publication date

  • February 2025

start page

  • 1

end page

  • 20

issue

  • 1

volume

  • 39

International Standard Serial Number (ISSN)

  • 0935-4964

Electronic International Standard Serial Number (EISSN)

  • 1432-2250

abstract

  • Fully-convolutional neural networks (FCN) were proven to be effective for predicting the instantaneous state of a fully-developed turbulent flow at different wall-normal locations using quantities measured at the wall. In Guastoni et al. (J Fluid Mech 928:A27, 2021. https://doi.org/10.1017/jfm.2021.812), we focused on wall-shear-stress distributions as input, which are difficult to measure in experiments. In order to overcome this limitation, we introduce a model that can take as input the heat-flux field at the wall from a passive scalar. Four different Prandtl numbers Pr=¿/alpha=(1,2,4,6) are considered (where ¿ is the kinematic viscosity and alpha is the thermal diffusivity of the scalar quantity). A turbulent boundary layer is simulated since accurate heat-flux measurements can be performed in experimental settings: first we train the network on aptly-modified DNS data and then we fine-tune it on the experimental data. Finally, we test our network on experimental data sampled in a water tunnel. These predictions represent the first application of transfer learning on experimental data of neural networks trained on simulations. This paves the way for the implementation of a non-intrusive sensing approach for the flow in practical applications.

subjects

  • Aeronautics
  • Mathematics
  • Mechanical Engineering

keywords

  • turbulence simulation; turbulent boundary layers; machine learning