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Learning-based state estimation and control using MHE and MPC schemes with imperfect models

Hossein Nejatbakhsh Esfahani, Arash Bahari Kordabad, Wenqi Cai, Sébastien Gros

2023European Journal of Control11 citationsDOIOpen Access PDF

Abstract

This paper presents a reinforcement learning-based observer/controller using Moving Horizon Estimation (MHE) and Model Predictive Control (MPC) schemes where the models used in the MHE-MPC cannot accurately capture the dynamics of the real system. We first show how an MHE cost modification can improve the performance of the MHE scheme such that a true state estimation is delivered even if the underlying MHE model is imperfect. A compatible Deterministic Policy Gradient (DPG) algorithm is then proposed to directly tune the parameters of both the estimator (MHE) and controller (MPC) in order to achieve the best closed-loop performance based on inaccurate MHE-MPC models. To demonstrate the effectiveness of the proposed learning-based estimator-controller, three numerical examples are illustrated.

Topics & Concepts

Control theory (sociology)Model predictive controlImperfectEstimatorController (irrigation)Reinforcement learningComputer scienceObserver (physics)Scheme (mathematics)State (computer science)Control (management)MathematicsAlgorithmArtificial intelligenceBiologyLinguisticsAgronomyPhysicsMathematical analysisStatisticsPhilosophyQuantum mechanicsAdvanced Control Systems OptimizationControl Systems and IdentificationAdaptive Dynamic Programming Control
Learning-based state estimation and control using MHE and MPC schemes with imperfect models | Litcius