Lecture
Numerical methods and uncertainty quantification for kinetic equations
with focus on physics, biology and social sciences simulations.
Giacomo Dimarco
(University of Ferrara)
In this course, we will consider the development and the analysis of numerical methods
for kinetic partial differential equations. Kinetic equations represent a way of describing
the time evolution of a system consisting of a large number of particles. Due to the high
number of dimensions and their intrinsic physical properties, the construction of numerical
methods represents a challenge and requires a careful balance between accuracy and computational
complexity. In the first part, we will review the basic numerical techniques for dealing with
such equations, including the case of semi-Lagrangian methods, discrete-velocity models and
spectral methods. In the second part, we give an overview of the current state of the art
of numerical methods for kinetic equations. This covers the derivation of fast algorithms,
the notion of asymptotic-preserving methods and the construction of hybrid schemes. Since,
in all models a degree of uncertainty is implicitly embedded which can be due to the lack of
knowledge about the microscopic interaction details, incomplete informations on the initial
state or at the boundaries, a last part will be dedicated to an overview of numerical methods
to deal with the quantification of the uncertainties in kinetic equations. Applications of the
models and the numerical methods to different fields ranging from physics to biology and social
sciences will be discussed as well.
Slides : [lecture 1],
[lecture 2],
[lecture 3],
[lecture 3 - appendix],
[lecture 5]
Videos: [lecture1], [lecture2]