Nonlinear Science Webinar

Charting dynamics from data

Abstract

We often find ourselves working with systems for which governing equations are unknown, or if they are known, they may be high-dimensional to the point of being difficult to analyze and prohibitively expensive to make predictions with. These difficulties, together with the ever-increasing availability of data, have led to the new paradigm of data-driven model discovery. I will present recent work that fruitfully combines a classical idea from applied mathematics with modern methods of machine learning to learn minimal dynamical models directly from time series data. In full analogy with cartography, we learn a representation of a system as an atlas of charts. This approach allows us to obtain dynamical models of the lowest possible dimension, leads to computational benefits, and can separate state space into regions of distinct behaviors.   https://arxiv.org/abs/2108.05928

Event Details

Date/Time:

  • Date: 
    Wednesday, November 10, 2021 - 3:00pm to 4:00pm

Location:
https://bluejeans.com/159924180 via bluejeans

For More Information Contact

Predrag Cvitanovic