Supervised DKRC with Images for Offline System Identification
- URL: http://arxiv.org/abs/2109.02241v1
- Date: Mon, 6 Sep 2021 04:39:06 GMT
- Title: Supervised DKRC with Images for Offline System Identification
- Authors: Alexander Krolicki and Pierre-Yves Lavertu
- Abstract summary: Modern dynamical systems are becoming increasingly non-linear and complex.
There is a need for a framework to model these systems in a compact and comprehensive representation for prediction and control.
Our approach learns these basis functions using a supervised learning approach.
- Score: 77.34726150561087
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Koopman spectral theory has provided a new perspective in the field of
dynamical systems in recent years. Modern dynamical systems are becoming
increasingly non-linear and complex, and there is a need for a framework to
model these systems in a compact and comprehensive representation for
prediction and control. The central problem in applying Koopman theory to a
system of interest is that the choice of finite-dimensional basis functions is
typically done apriori, using expert knowledge of the systems dynamics. Our
approach learns these basis functions using a supervised learning approach
where a combination of autoencoders and deep neural networks learn the basis
functions for any given system. We demonstrate this approach on a simple
pendulum example in which we obtain a linear representation of the non-linear
system and then predict the future state trajectories given some initial
conditions. We also explore how changing the input representation of the
dynamic systems time series data can impact the quality of learned basis
functions. This alternative representation is compared to the traditional raw
time series data approach to determine which method results in lower
reconstruction and prediction error of the true non-linear dynamics of the
system.
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