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Applied Mathematics Seminar 291 (11/16/17)

Date: 
November 16, 2017 - 2:00pm

Nathan Kutz, Ph.D., University of Washington

Abstract:

The emergence of data methods for the sciences in the last decade has been enabled by the plummeting costs of sensors, computational power, and data storage. Such vast quantities of data afford us new opportunities for data-driven discovery, which has been referred to as the 4th paradigm of scientific discovery. We demonstrate that we can use emerging, large-scale time-series data from modern sensors to directly construct, in an adaptive manner, governing equations, even nonlinear dynamics and PDEs, that best model the system measured using modern regression and machine learning techniques. We can also discover nonlinear embeddings of the dynamics using Koopman theory and deep neural network architectures. Recent innovations also allow for handling multi-scale physics phenomenon and control protocols in an adaptive and robust way. The overall architecture is equation-free in that the dynamics and control protocols are discovered directly from data acquired from sensors. The theory developed is demonstrated on a number of canonical example problems from physics, biology and engineering. 

nathan_kutz_applied_mathematics_flyer.pdf

Contact Information

Name: 
Arnold Kim
Title: 
Professor
Address: 
5200 North Lake Rd.
Merced, CA 95343
United States
Address: 
5200 North Lake Rd.
Merced, CA 95343
United States