This paper presents a distributed Koopman operator learning framework for modeling unknown nonlinear dynamics using sequential observations from multiple agents. Each agent estimates a local Koopman approximation based on lifted data and collaborates over a communication graph to reach exponential consensus on a consistent distributed approximation. The approach supports distributed computation under asynchronous and resource-constrained sensing. Its performance is demonstrated through simulation results, validating convergence and predictive accuracy under sensing-constrained scenarios and limited communication.
@article{arxiv.2509.20071,
title = {Distributed Koopman Operator Learning from Sequential Observations},
author = {Ali Azarbahram and Shenyu Liu and Gian Paolo Incremona},
journal= {arXiv preprint arXiv:2509.20071},
year = {2026}
}