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Bibliographic Details
Main Authors: Teutsch, Johannes, Narr, Christopher, Kerz, Sebastian, Wollherr, Dirk, Leibold, Marion
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.01955
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author Teutsch, Johannes
Narr, Christopher
Kerz, Sebastian
Wollherr, Dirk
Leibold, Marion
author_facet Teutsch, Johannes
Narr, Christopher
Kerz, Sebastian
Wollherr, Dirk
Leibold, Marion
contents In this work, an adaptive predictive control scheme for linear systems with unknown parameters and bounded additive disturbances is proposed. In contrast to related adaptive control approaches that robustly consider the parametric uncertainty, the proposed method handles all uncertainties stochastically by employing an online adaptive sampling-based approximation of chance constraints. The approach requires initial data in the form of a short input-output trajectory and distributional knowledge of the disturbances. This prior knowledge is used to construct an initial set of data-consistent system parameters and a distribution that allows for sample generation. As new data stream in online, the set of consistent system parameters is adapted by exploiting set membership identification. Consequently, chance constraints are deterministically approximated using a probabilistic scaling approach by sampling from the set of system parameters. In combination with a robust constraint on the first predicted step, recursive feasibility of the proposed predictive controller and closed-loop constraint satisfaction are guaranteed. A numerical example demonstrates the efficacy of the proposed method.
format Preprint
id arxiv_https___arxiv_org_abs_2409_01955
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Adaptive Stochastic Predictive Control from Noisy Data: A Sampling-based Approach
Teutsch, Johannes
Narr, Christopher
Kerz, Sebastian
Wollherr, Dirk
Leibold, Marion
Systems and Control
In this work, an adaptive predictive control scheme for linear systems with unknown parameters and bounded additive disturbances is proposed. In contrast to related adaptive control approaches that robustly consider the parametric uncertainty, the proposed method handles all uncertainties stochastically by employing an online adaptive sampling-based approximation of chance constraints. The approach requires initial data in the form of a short input-output trajectory and distributional knowledge of the disturbances. This prior knowledge is used to construct an initial set of data-consistent system parameters and a distribution that allows for sample generation. As new data stream in online, the set of consistent system parameters is adapted by exploiting set membership identification. Consequently, chance constraints are deterministically approximated using a probabilistic scaling approach by sampling from the set of system parameters. In combination with a robust constraint on the first predicted step, recursive feasibility of the proposed predictive controller and closed-loop constraint satisfaction are guaranteed. A numerical example demonstrates the efficacy of the proposed method.
title Adaptive Stochastic Predictive Control from Noisy Data: A Sampling-based Approach
topic Systems and Control
url https://arxiv.org/abs/2409.01955