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Robust Constraint Satisfaction in Data-Driven MPC

Julian Berberich, Johannes Köhler, Matthias A. Müller, Frank Allgöwer

202052 citationsDOIOpen Access PDF

Abstract

We propose a purely data-driven model predictive control (MPC) scheme to control unknown linear time-invariant systems with guarantees on stability and constraint satisfaction in the presence of noisy data. The scheme predicts future trajectories based on data-dependent Hankel matrices, which span the full system behavior if the input is persistently exciting. This paper extends previous work on data-driven MPC by including a suitable constraint tightening which ensures that the closed-loop trajectory satisfies desired pointwise-in-time output constraints. Furthermore, we provide estimation procedures to compute system constants related to controllability and observability, which are required to implement the constraint tightening. The practicality of the proposed approach is illustrated via a numerical example.

Topics & Concepts

ObservabilityPointwiseControllabilityModel predictive controlControl theory (sociology)Constraint (computer-aided design)Constraint satisfactionConstraint satisfaction problemComputer scienceStability (learning theory)Mathematical optimizationTrajectoryLTI system theoryScheme (mathematics)DigraphLinear systemMathematicsControl (management)Applied mathematicsArtificial intelligenceProbabilistic logicPhysicsMathematical analysisAstronomyGeometryMachine learningCombinatoricsAdvanced Control Systems OptimizationControl Systems and IdentificationFault Detection and Control Systems