How Large-Time Behavior of Turbulent Flows Determine the Amount of Data Needed for Their Prediction

Elizabeth Carlson

Assistant Professor of Mathematics
Oregon State University

Seminar Information

Seminar Series
Fluid Mechanics, Combustion, & Engineering Physics

Seminar Date - Time
April 13, 2026, 3:00 pm
-
4:00

Seminar Location
Hybrid: In Person & Zoom (connection in link below)

Engineering Building Unit 2 (EBU2)
Room 479

Seminar Recording Available: Please contact seminar coordinator, Jake Blair at (j1blair@ucsd.edu)

Elizabeth Carlson

Abstract

Turbulence is often claimed to be "the last unsolved problem of classical mechanics," realized in the evolution of certain dynamical systems, most notably those for fluid dynamics.  In general, these systems behave nicely in that their large time behavior is finite dimensional and possibly even smooth, but the set of all possible solutions is chaotic.  This leads to incredible difficulties in predictive modeling.  For predictive modeling, one generally uses data assimilation (DA) or machine learning to course-correct models with real-world data.  Often overlooked in the literature is the importance of dynamical behavior; machine learning models or data assimilation techniques are regularly applied (and sometimes expected to work) without regard to the physics of the system they are being applied to (indeed, the algorithms are written to be agnostic to the dynamics in general).  In this talk, I will present various research papers exposing different perspectives of how accurate prediction from data is, provably, entirely dependent on the underlying dynamics of the system under consideration.  This talk presents multiple research papers which are joint work with many collaborators from Caltech, Hunter College, BYU, USC, and UVa.

Speaker Bio
Elizabeth Carlson received her PhD from University of Nebraska - Lincoln in 2021.  She was a PIMS Postdoctoral Fellow at the University of Victoria from 2021-2023, and a Von Karman Instructor from 2023 - 2025 before becoming Assistant Professor at Oregon State University.   Her research interests include partial differential equations and fluid dynamics, with practical emphases in data assimilation, optimization, high performance computing, and numerical analysis. She finds the intersection of theoretical and applied mathematics to be more fruitful than studying either subject in isolation.  For fun, she hangs out with friends, hikes, reads (voraciously), and plays piano.