Adamek, JoshuaHeinlein, MoritzLüken, LukasLucia, Sergio2025-09-152025-09-152024-05-30http://hdl.handle.net/2003/43965This letter presents a novel framework to guarantee safety for learning-based control of nonlinear monotone systems under uncertainty. We propose to evaluate online whether a one-step simulation brings a nonlinear system into a robust control invariant (RCI) set. Such evaluation can be very efficiently computed even under the presence of uncertainty for learning-based approximate controllers and monotone systems, which also enable a simple computation of RCI sets. In case the one-step simulation drives the system outside of the RCI set, a fallback strategy is used, which is obtained as a byproduct of the RCI set computation. We also develop a method to calculate an N-step RCI set to reduce the conservativeness of the proposed strategy and we illustrate the results with a simulation study of a nonlinear monotone system.enIEEE control systems letters / IEEE Control Systems Society; 8https://creativecommons.org/licenses/by/4.0/Optimal controlRobust controlMachine learning660Deterministic safety guarantees for learning-based control of monotone nonlinear systems under uncertaintyArticle