Orthogonal polynomial approximation and Extended Dynamic Mode Decomposition in chaos

05/14/2023
by   Caroline L. Wormell, et al.
0

Extended Dynamic Mode Decomposition (EDMD) is a data-driven tool for forecasting and model reduction of dynamics, which has been extensively taken up in the physical sciences. While the method is conceptually simple, in deterministic chaos it is unclear what its properties are or even what it converges to. In particular, it is not clear how EDMD's least-squares approximation treats the classes of regular functions needed to make sense of chaotic dynamics. In this paper we develop a general, rigorous theory of EDMD on the simplest examples of chaotic maps: analytic expanding maps of the circle. To do this, we prove a new result in the theory of orthogonal polynomials on the unit circle (OPUC) and apply methods from transfer operator theory. We show that in the infinite-data limit, the least-squares projection is exponentially efficient for trigonometric polynomial observable dictionaries. As a result, we show that the forecasts and Koopman spectral data produced using EDMD in this setting converge to the physically meaningful limits, exponentially quickly in the size of the dictionary. This demonstrates that with only a relatively small polynomial dictionary, EDMD can be very effective, even when the sampling measure is not uniform. Furthermore, our OPUC result suggests that data-based least-squares projections may be a very effective approximation strategy.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/06/2022

The mpEDMD Algorithm for Data-Driven Computations of Measure-Preserving Dynamical Systems

Koopman operators globally linearize nonlinear dynamical systems and the...
research
08/02/2023

EDMD for expanding circle maps and their complex perturbations

We show that spectral data of the Koopman operator arising from an analy...
research
10/07/2021

On the possibility of fast stable approximation of analytic functions from equispaced samples via polynomial frames

We consider approximating analytic functions on the interval [-1,1] from...
research
08/08/2021

Generalizing Dynamic Mode Decomposition: Balancing Accuracy and Expressiveness in Koopman Approximations

This paper tackles the data-driven approximation of unknown dynamical sy...
research
06/27/2022

Heterogeneous mixtures of dictionary functions to approximate subspace invariance in Koopman operators

Koopman operators model nonlinear dynamics as a linear dynamic system ac...
research
07/15/2022

Temporal Forward-Backward Consistency, Not Residual Error, Measures the Prediction Accuracy of Extended Dynamic Mode Decomposition

Extended Dynamic Mode Decomposition (EDMD) is a popular data-driven meth...
research
12/30/2018

New conformal map for the Sinc approximation for exponentially decaying functions over the semi-infinite interval

The Sinc approximation has shown its high efficiency for numerical metho...

Please sign up or login with your details

Forgot password? Click here to reset