English

A Hybrid Framework for Efficient Koopman Operator Learning

Systems and Control 2025-04-29 v1 Systems and Control

Abstract

Koopman analysis of a general dynamics system provides a linear Koopman operator and an embedded eigenfunction space, enabling the application of standard techniques from linear analysis. However, in practice, deriving exact operators and mappings for the observable space is intractable, and deriving an approximation or expressive subset of these functions is challenging. Programmatic methods often rely on system-specific parameters and may scale poorly in both time and space, while learning-based approaches depend heavily on difficult-to-know hyperparameters, such as the dimension of the observable space. To address the limitations of both methods, we propose a hybrid framework that uses semidefinite programming to find a representation of the linear operator, then learns an approximate mapping into and out of the space that the operator propagates. This approach enables efficient learning of the operator and explicit mappings while reducing the need for specifying the unknown structure ahead of time.

Keywords

Cite

@article{arxiv.2504.18676,
  title  = {A Hybrid Framework for Efficient Koopman Operator Learning},
  author = {Alexander Estornell and Leonard Jung and Alenna Spiro and Mario Sznaier and Michael Everett},
  journal= {arXiv preprint arXiv:2504.18676},
  year   = {2025}
}

Comments

Submitted to 64th IEEE Conference on Decision and Control (CDC 2025), 7 Pages, 7 Figures

R2 v1 2026-06-28T23:11:56.180Z