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Learning Stable Models for Prediction and Control

Title:Learning Stable Models for Prediction and Control
Publication Type:Journal Article
Year of Publication:2023
Authors: G. Mamakoukas, I. Abraham, and T. D. Murphey
Journal Title:IEEE Transactions on Robotics
Pages:2255-2275
Date Published:June 2023
URL:https://ieeexplore.ieee.org/document/10091950
DOI:10.1109/TRO.2022.3228130
Abstract:In this article, we demonstrate the benefits of imposing stability on data-driven Koopman operators. The data-driven identification of stable Koopman operators (DISKO) is implemented using an algorithm [1] that computes the nearest stable matrix solution to a least-squares reconstruction error. As a first result, we derive a formula that describes the prediction error of Koopman representations for an arbitrary number of time steps, and which shows that stability constraints can improve the predictive accuracy over long horizons. As a second result, we determine formal conditions on basis functions of Koopman operators needed to satisfy the stability properties of an underlying nonlinear system. As a third result, we derive formal conditions for constructing Lyapunov functions for nonlinear systems out of stable data-driven Koopman operators, which we use to verify stabilizing control from data. Finally, we demonstrate the benefits of DISKO in prediction and control with simulations using a pendulum and a quadrotor and experiments with a pusher-slider system. The paper is complemented with a video: https://sites.google.com/view/learning-stable-koopman.
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