Videos

Computational learning of dynamical systems with stability constraints

Presenter
January 7, 2025
Abstract
We study the derivation of mathematical models of dynamical systems from measured or computed time domain data (trajectories). Particular emphasis is given to learning models satisfying certain physical properties like stability or conservation laws. We show how such constraints can be explicitly parameterized in the learning problem in strong form. We will demonstrate this for several methods, including operator inference, sparse identification of dynamical systems (SINDy), and deep learning.
Supplementary Materials