Jorge Cortés
Professor
Cymer Corporation Endowed Chair
Temporal forward-backward consistency, not residual
error, measures the prediction accuracy of extended dynamic
mode decomposition
M. Haseli, J. Cortés
IEEE Control Systems Letters 7 (2023), 649-654
Abstract
Extended Dynamic Mode Decomposition (EDMD) is a popular data-driven
method to approximate the action of the Koopman operator on a linear
function space spanned by a dictionary of functions. The accuracy of
EDMD model critically depends on the quality of the particular
dictionary's span, specifically on how close it is to being
invariant under the Koopman operator. Motivated by the observation
that the residual error of EDMD, typically used for dictionary
learning, does not encode the quality of the function space and is
sensitive to the choice of basis, we introduce the novel concept of
consistency index. We show that this measure, based on using EDMD
forward and backward in time, enjoys a number of desirable qualities
that make it suitable for data-driven modeling of dynamical systems:
it measures the quality of the function space, it is invariant under
the choice of basis, can be computed in closed form from the data,
and provides a tight upper-bound for the relative root mean square
error of all function predictions on the entire span of the
dictionary.
pdf
Mechanical and Aerospace Engineering,
University of California, San Diego
9500 Gilman Dr,
La Jolla, California, 92093-0411
Ph: 1-858-822-7930
Fax: 1-858-822-3107
cortes at ucsd.edu
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jorgilliyo