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Dokumenttyp:
Masterarbeit
Autor(en):
Riccius, Leon
Titel:
Machine Learning Augmented Turbulence Modelling for the Reynolds Stress Closure Problem
Übersetzter Titel:
Machine Learning Augmented Turbulence Modelling for the Reynolds Stress Closure Problem
Abstract:
The availability of high-performance computational resources has increased steadily, but we are still far from the capacity to perform high-fidelity simulations for turbulent flows in real-world applications. Thus, we still rely on computationally cheaper surrogates like Reynolds-Averaged Navier-Stokes (RANS) turbulence modeling. The most commonly used RANS models are the linear eddy viscosity models (LEVM), which rely on the turbulent vis- cosity hypothesis for their Reynolds stress closur...     »
übersetzter Abstract:
The availability of high-performance computational resources has increased steadily, but we are still far from the capacity to perform high-fidelity simulations for turbulent flows in real-world applications. Thus, we still rely on computationally cheaper surrogates like Reynolds-Averaged Navier-Stokes (RANS) turbulence modeling. The most commonly used RANS models are the linear eddy viscosity models (LEVM), which rely on the turbulent vis- cosity hypothesis for their Reynolds stress closur...     »
Fachgebiet:
DAT Datenverarbeitung, Informatik
Betreuer:
Agrawal, Atul; Koutsourelakis, Phaedon-Stelios (Prof., Ph.D.)
Jahr:
2021
Sprache:
en
Sprache der Übersetzung:
en
Hochschule / Universität:
Technische Universität München
Fakultät:
TUM School of Engineering and Design
Annahmedatum:
12.03.2021
Präsentationsdatum:
24.03.2021
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