Koopman Operators in Robot Learning
Lu Shi, Masih Haseli, Giorgos Mamakoukas, Daniel Bruder, Ian Abraham, Todd Murphey, Jorge Cortes, and Konstantinos Karydis

TL;DR
Koopman operator theory provides a promising framework for modeling, control, and learning in robotics by representing nonlinear dynamics linearly, enabling real-time applications and broad versatility across robotic systems.
Contribution
This review systematically connects Koopman theory fundamentals to practical robotic applications, highlighting recent advances and future challenges in the field.
Findings
Koopman methods effectively model diverse robotic systems.
They enable real-time control and state estimation.
The approach is computationally efficient for online learning.
Abstract
Koopman operator theory offers a rigorous treatment of dynamics and has been emerging as an alternative modeling and learning-based control method across various robotics sub-domains. Due to its ability to represent nonlinear dynamics as a linear (but higher-dimensional) operator, Koopman theory offers a fresh lens through which to understand and tackle the modeling and control of complex robotic systems. Moreover, it enables incremental updates and is computationally inexpensive, thus making it particularly appealing for real-time applications and online active learning. This review delves deeply into the foundations of Koopman operator theory and systematically builds a bridge from theoretical principles to practical robotic applications. We begin by explaining the mathematical underpinnings of the Koopman framework and discussing approximation approaches for incorporating inputs into…
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Taxonomy
TopicsNeural Networks and Applications
