On the Generalisation of Koopman Representations for Chaotic System Control
Hjikakou, Kyriakos, Cartagena, Juan Diego Cardenas, Sabatelli, Matthia
–arXiv.org Artificial Intelligence
This paper investigates the generalisability of Koopman-based representations for chaotic dynamical systems, focusing on their transferability across prediction and control tasks. Using the Lorenz system as a testbed, we propose a three-stage methodology: learning Koopman embeddings through autoencoding, pre-training a transformer on next-state prediction, and fine-tuning for safety-critical control. Our results show that Koopman embeddings outperform both standard and physics-informed PCA baselines, achieving accurate and data-efficient performance. Notably, fixing the pre-trained transformer weights during fine-tuning leads to no performance degradation, indicating that the learned representations capture reusable dynamical structure rather than task-specific patterns. These findings support the use of Koopman embeddings as a foundation for multi-task learning in physics-informed machine learning. A project page is available at https://kikisprdx.github.io/.
arXiv.org Artificial Intelligence
Aug-27-2025
- Country:
- Europe
- Belgium > Wallonia
- Liège Province > Liège (0.04)
- Netherlands > Groningen (0.04)
- Belgium > Wallonia
- North America > United States
- District of Columbia > Washington (0.04)
- New York > New York County
- New York City (0.04)
- Europe
- Genre:
- Research Report > New Finding (1.00)
- Technology: