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  4. Recursively Feasible Model Predictive Control using Latent Force Models Applied to Disturbed Quadcopters
 
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2022
Conference Paper
Title

Recursively Feasible Model Predictive Control using Latent Force Models Applied to Disturbed Quadcopters

Abstract
In this work, recursively feasible model predictive control (MPC) is considered for systems under additive disturbances. Combining a nonparametric Gaussian Process (GP) prior for modeling the additive disturbance with the model of the undisturbed system results in a model structure referred to as latent force model (LFM). Using spectral factorization, the whole LFM can be represented by an equivalent/approximate stochastic state-space model used as the predictor in the MPC formulation. Chance constraints are incorporated by constraint tightening using so-called probabilistic reachable sets of the LFM state and recursive feasibility is guaranteed by optimizing the initial value of the MPC predicted trajectory. The LFM formulation allows leveraging the disturbance information to all components of the MPC, which can significantly enhance its performance. The proposed LFM-based MPC approach is demonstrated on a simulated quadcopter under additive disturbances. The performance of the closed-loop controller using the LFM-state-space reformulation is compared to standard MPC.
Author(s)
Gruner, Jonas
Schmid, Niklas
Männel, Georg
Fraunhofer-Einrichtung für Individualisierte und Zellbasierte Medizintechnik IMTE  
Grasshof, Jan
Fraunhofer-Einrichtung für Individualisierte und Zellbasierte Medizintechnik IMTE  
Abbas, Hossam Seddik
Rostalski, Philipp  
Fraunhofer-Einrichtung für Individualisierte und Zellbasierte Medizintechnik IMTE  
Mainwork
IEEE 61st Conference on Decision and Control, CDC 2022  
Conference
Conference on Decision and Control 2022  
DOI
10.1109/CDC51059.2022.9992944
Language
English
Fraunhofer-Einrichtung für Individualisierte und Zellbasierte Medizintechnik IMTE  
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