Главная
Study mode:
on
1
Introduction
2
Dynamical Systems
3
Lorentz Attractor
4
Sparse Regression
5
Noisy Data
6
Example Problem
7
Parametrized Dynamics
8
Time Delay Coordinates
Description:
Explore the Sparse Identification of Nonlinear Dynamics (SINDy) algorithm in this 27-minute video lecture. Discover how machine learning, sparse regression, and dynamical systems are combined to identify nonlinear differential equations from measurement data alone. Learn about the Lorentz Attractor, sparse regression techniques, handling noisy data, and applications to parametrized dynamics and time delay coordinates. Gain insights into the algorithm's ability to uncover governing equations from data, as presented in the 2016 PNAS paper by Brunton, Proctor, and Kutz. Access the accompanying code and delve into additional resources for a deeper understanding of this innovative approach to dynamical systems analysis.

Sparse Identification of Nonlinear Dynamics - SINDy

Steve Brunton
Add to list