Title: Data, Dynamics, and Manifolds: Machine Learning Approaches for Modeling and Controlling Complex Flows
Speaker: Michael Graham, Chemical Biological and Mechanical Engineering, University of Wisconsin-Madison
Abstract: This lecture will outline how exploitation of symmetries substantially improves performance in accurately simulating chaotic or turbulent fluid flows. Graham will describe a data-driven reduced order modeling method, “Data-driven Manifold Dynamics,” that finds a nonlinear coordinate representation of the manifold using a machine-learning architecture called an autoencoder, then learns an ordinary differential equation for the dynamics on the manifold.
Special Note: This is the 2023 Stephen H. Davis Lecture. Note the unusual day, time, and location.
Zoom: This event will be held in-person, as well as online via Zoom. Register for attendance or for the webinar at the following link: https://www.mccormick.northwestern.edu/applied-math/news-events/stephen-davis-symposium/
-----
To subscribe to the Applied Mathematics Colloquia List send a message to LISTSERV@LISTSERV.IT.NORTHWESTERN.EDU with the command:
add esam-seminar@listserv.it.northwestern.edu youremailaddress
Cost: Free
Audience
- Faculty/Staff
- Student
- Post Docs/Docs
- Graduate Students
Contact
Ted Shaeffer
(847) 491-3345
Email