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Hauptverfasser: Baggio, Giacomo, Carli, Ruggero, Grimaldi, Riccardo Alessandro, Pillonetto, Gianluigi
Format: Preprint
Veröffentlicht: 2024
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2409.16717
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author Baggio, Giacomo
Carli, Ruggero
Grimaldi, Riccardo Alessandro
Pillonetto, Gianluigi
author_facet Baggio, Giacomo
Carli, Ruggero
Grimaldi, Riccardo Alessandro
Pillonetto, Gianluigi
contents In this paper we investigate the existence of a separation principle between model identification and control design in the context of model predictive control. First, we clarify that such a separation principle holds asymptotically in the number of data in a Fisherian context, and show that it holds universally, i.e. regardless of the data size, in a Bayesian context. Then, by formulating model predictive control within a Gaussian regression framework, we describe how the Bayesian separation principle can be used to derive computable, uncertainty-aware expressions for the control cost and optimal input sequence, thereby bridging direct and indirect data-driven approaches. Numerical results in both linear and nonlinear scenarios illustrate that the proposed approach outperform nominal methods that neglect uncertainty, highlighting the advantages of incorporating uncertainty in the control design process.
format Preprint
id arxiv_https___arxiv_org_abs_2409_16717
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle The Bayesian Separation Principle for Data-driven Control
Baggio, Giacomo
Carli, Ruggero
Grimaldi, Riccardo Alessandro
Pillonetto, Gianluigi
Systems and Control
In this paper we investigate the existence of a separation principle between model identification and control design in the context of model predictive control. First, we clarify that such a separation principle holds asymptotically in the number of data in a Fisherian context, and show that it holds universally, i.e. regardless of the data size, in a Bayesian context. Then, by formulating model predictive control within a Gaussian regression framework, we describe how the Bayesian separation principle can be used to derive computable, uncertainty-aware expressions for the control cost and optimal input sequence, thereby bridging direct and indirect data-driven approaches. Numerical results in both linear and nonlinear scenarios illustrate that the proposed approach outperform nominal methods that neglect uncertainty, highlighting the advantages of incorporating uncertainty in the control design process.
title The Bayesian Separation Principle for Data-driven Control
topic Systems and Control
url https://arxiv.org/abs/2409.16717