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Towards Data-Driven High Fidelity CFD - Lecture 1

Centre International de Rencontres Mathématiques via YouTube

Overview

Explore a comprehensive lecture on data-driven high fidelity Computational Fluid Dynamics (CFD) delivered by Andrea Beck at the Centre International de Rencontres Mathématiques in Marseille, France. Delve into advanced topics such as shock droplet interaction, icing, multiscale analysis, and high-order schemes. Examine the intricacies of Discontinuous Galerkin (DG) methods, including their derivation, nonlinear stability, and application to nonsmooth solutions. Investigate cutting-edge concepts in scientific machine learning and its controversial applications in CFD. Learn about dynamic load balancing, data tracking, and reproducible computational workflows. Gain insights into supervised learning, predictions in machine learning CFD, and data compression techniques. This lecture offers a deep dive into the intersection of advanced mathematics, computational methods, and machine learning in the field of fluid dynamics.

Syllabus

Introduction
Slides
Shock droplet interaction
Icing
Multiscale
Overview
Highorder schemes
Dispersion analysis
Information efficiency
DG schemes
DG schemes derivation
Nonlinear stability
DG method
Flexibility
Nonsmooth solutions
Convex solution
Shock capturing
Space and time
Dynamic load balancing
Flexi
Scale
Fair
Compiling from file
Full work stack
Data tracking
Reproducible
Priori
Supervised Learning
Controversy
Scientific Machine Learning
Predictions
Machine Learning CFD
Formulations
Data compression

Taught by

Centre International de Rencontres Mathématiques

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