Time Delays for Model Discovery
COURSE WEBPAGE: Inferring Structure of Complex Systems
https://faculty.washington.edu/kutz/am563/am563.html
This lecture discusses how to discovery dynamical models from time series measurements of dynamical systems when missing measurements of key variables. The algorithmic procedure formulates the problem in terms of a time-delay embedding which helps determine the number of missing variables and generates a "shadow" of their true dynamics.
Видео Time Delays for Model Discovery канала Nathan Kutz
https://faculty.washington.edu/kutz/am563/am563.html
This lecture discusses how to discovery dynamical models from time series measurements of dynamical systems when missing measurements of key variables. The algorithmic procedure formulates the problem in terms of a time-delay embedding which helps determine the number of missing variables and generates a "shadow" of their true dynamics.
Видео Time Delays for Model Discovery канала Nathan Kutz
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