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Stability of data-driven Koopman MPC with terminal conditions

Irene Schimperna, Lea Bold, Johannes Köhler, Karl Worthmann, Lalo Magni

Year
2025
Access
Open access

Abstract

This paper derives conditions under which Model Predictive Control (MPC) with terminal conditions, using a data-driven surrogate model as a prediction model, asymptotically stabilizes the plant despite approximation errors. In particular, we prove recursive feasibility and asymptotic stability if a proportional error bound holds, where proportional means that the bound is linear in the norm of the state and the input. For a broad class of nonlinear systems, this condition can be satisfied using data-driven surrogate models generated by kernel Extended Dynamic Mode Decomposition (kEDMD) using the Koopman operator. Last, the applicability of the proposed framework is demonstrated in a numerical case study.

Keywords

eess.SYmath.OC

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