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arxiv: 2606.02938 · v1 · pith:7PBTOVSLnew · submitted 2026-06-01 · 🧮 math.OC · cs.SY· eess.SY

Koopman operator learning for predictive control via Khatri-Rao kernel regression

classification 🧮 math.OC cs.SYeess.SY
keywords khatri-raooperatorframeworkgekokernelkoopmanliftedmulti-step
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This paper develops a data-driven realization of the generalized Koopman operator (GeKo), in which states and inputs are lifted independently and the dynamics are expressed as a tensor bilinear system. The first contribution is a time-sequenced multi-step Khatri-Rao kernel regression formulation that exposes the operator to evolved snapshots along trajectories rather than only single one-step pairs, which reduces compounded prediction error. Secondly, we develop a kernel- and input-agnostic structured SVD reduction that compresses the lifted state and input spaces while preserving the Khatri-Rao realization. We instantiate the framework with random Fourier features and describe a complete predictive-control pipeline, including a multi-step roll-out diagnostic that guides the choice of MPC horizon. The framework is validated on the chaotic Lorenz system, where the learned reduced-order GeKo model stabilizes an unstable equilibrium from a range of initial conditions.

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