Deep Koopman Iterative Learning and Stability-Guaranteed Control for Unknown Nonlinear Time-Varying Systems
Hengde Zhang, Yunxiao Ren, Zhisheng Duan, Zhiyong Sun, Guanrong Chen

TL;DR
This paper introduces a Koopman-based iterative learning framework for modeling and controlling unknown nonlinear time-varying systems, ensuring stability and improving prediction accuracy through online updates and data management.
Contribution
It develops a novel online iterative Koopman learning method with stability guarantees for controlling unknown nonlinear time-varying systems.
Findings
Outperforms existing methods in approximation accuracy.
Ensures input-to-state stability of the controlled system.
Demonstrates effectiveness on various complex systems.
Abstract
This paper proposes a Koopman-based framework for modeling, prediction, and control of unknown nonlinear time-varying systems. We present a novel Koopman-based learning method for predicting the state of unknown nonlinear time-varying systems, upon which a robust controller is designed to ensure that the resulting closed-loop system is input-to-state stable with respect to the Koopman approximation error. The error of the lifted system model learned through the Koopman-based method increases over time due to the time-varying nature of the nonlinear time-varying system. To address this issue, an online iterative update scheme is incorporated into the learning process to update the lifted system model, aligning it more precisely with the time-varying nonlinear system by integrating the updated data and discarding the outdated data. A necessary condition for the feasibility of the proposed…
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Taxonomy
TopicsModel Reduction and Neural Networks · Neural Networks and Reservoir Computing · Control Systems and Identification
