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Improving the predictivity of large eddy simulations using machine learning guided by high-fidelity simu

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Thesis topic details

General information

Organisation

The French Alternative Energies and Atomic Energy Commission (CEA) is a key player in research, development and innovation in four main areas :
• defence and security,
• nuclear energy (fission and fusion),
• technological research for industry,
• fundamental research in the physical sciences and life sciences.

Drawing on its widely acknowledged expertise, and thanks to its 16000 technicians, engineers, researchers and staff, the CEA actively participates in collaborative projects with a large number of academic and industrial partners.

The CEA is established in ten centers spread throughout France
  

Reference

SL-DES-25-0218  

Thesis topic details

Category

Engineering science

Thesis topics

Improving the predictivity of large eddy simulations using machine learning guided by high-fidelity simulations

Contract

Thèse

Job description

This thesis aims to explore the application of machine learning techniques to improve turbulence modeling and numerical simulations in fluid mechanics. More specifically, we are interested in the application of artificial neural networks (ANNs) for large eddy simulation. The latter is a modeling approach that focuses on the direct resolution of large turbulent structures, while modeling small scales by a subgrid-scale model. It requires a certain ratio of total kinetic energy to be resolved. However, this ratio may be difficult to achieve for industrial simulations due to the high computational cost, leading to under-resolved simulations. We aim to improve the latter by focusing work along two main axes: 1) Using ANNs to build generic sub-mesh models that outperform analytical models and compensate for coarse spatial discretization; 2) Training ANNs to learn wall models. One of the main challenges is the ability of the new models to generalize correctly in configurations different from those used during training. Thus, taking into account the different sources and quantification of uncertainties plays a vital role in improving the reliability and robustness of machine-learned models.

University / doctoral school

Sciences Mécaniques et Energétiques, Matériaux et Géosciences (SMEMaG)
Paris-Saclay

Thesis topic location

Site

Saclay

Requester

Position start date

01/10/2025

Person to be contacted by the applicant

Angeli Pierre-Emmanuel pierre-emmanuel.angeli@cea.fr
CEA
DES/DM2S/STMF/LMSF

01 69 08 47 21

Tutor / Responsible thesis director

LUCOR Didier didier.lucor@limsi.fr
CNRS
LISN
LISN-CNRS
BP 133
F-91403 ORSAY CEDEX
+33(0)169858065

En savoir plus



https://www.sciencedirect.com/science/article/pii/S0045793024000781