Litcius/Paper detail

Data-driven model predictive control: closed-loop guarantees and experimental results

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

2021at - Automatisierungstechnik50 citationsDOIOpen Access PDF

Abstract

Abstract We provide a comprehensive review and practical implementation of a recently developed model predictive control (MPC) framework for controlling unknown systems using only measured data and no explicit model knowledge. Our approach relies on an implicit system parametrization from behavioral systems theory based on one measured input-output trajectory. The presented MPC schemes guarantee closed-loop stability for unknown linear time-invariant (LTI) systems, even if the data are affected by noise. Further, we extend this MPC framework to control unknown nonlinear systems by continuously updating the data-driven system representation using new measurements. The simple and intuitive applicability of our approach is demonstrated with a nonlinear four-tank system in simulation and in an experiment.

Topics & Concepts

Model predictive controlParametrization (atmospheric modeling)Nonlinear systemComputer scienceRepresentation (politics)Stability (learning theory)Simple (philosophy)Control theory (sociology)Linear systemSampled data systemsSystem identificationControl (management)Control systemHybrid systemTerm (time)MathematicsMathematical optimizationNonlinear modelAlgorithmLinear modelEstimation theoryData modelingSystem modelAction (physics)Nonlinear controlNonlinear system identificationExperimental dataIdentification (biology)Advanced Control Systems OptimizationControl Systems and IdentificationModel Reduction and Neural Networks