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Uncertainty Quantification for Kinetic Equations II

Offered By: Hausdorff Center for Mathematics via YouTube

Tags

Uncertainty Quantification Courses Numerical Methods Courses Monte Carlo Methods Courses

Course Description

Overview

Explore recent advancements in uncertainty quantification for kinetic equations with random inputs in this comprehensive lecture. Delve into the challenges posed by uncertainties arising from incomplete knowledge of microscopic interactions, boundary conditions, or initial data. Examine the curse of dimensionality and the development of efficient numerical methods to address these challenges. Gain insights into Monte Carlo methods, multi-fidelity approaches, and stochastic Galerkin particle methods, accompanied by a thorough literature review. This lecture, part of the Hausdorff Trimester Program on Kinetic Theory, offers a valuable overview of cutting-edge research in the field.

Syllabus

Lecture Lorenzo Pareschi: Uncertainty quantification for kinetic equations II


Taught by

Hausdorff Center for Mathematics

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