Physics-informed Gaussian Processes as Linear Model Predictive Controller
Jörn Tebbe , Andreas Besginow und Markus Lange-Hegermann,Dec 2024
We introduce a novel algorithm for controlling linear time invariant systems in a tracking problem. The controller is based on a Gaussian Process (GP) whose realizations satisfy a system of linear ordinary differential equations with constant coefficients. Control inputs for tracking are determined by conditioning the prior GP on the setpoints, i.e. control as inference. The resulting Model Predictive Control scheme incorporates pointwise soft constraints by introducing virtual setpoints to the posterior Gaussian process. We show theoretically that our controller satisfies asymptotical stability for the optimal control problem by leveraging general results from Bayesian inference and demonstrate this result in a numerical example.
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@misc{3013,
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author | = | {Tebbe, Jörn and Besginow, Andreas and Lange-Hegermann, Markus}, |
title | = | {Physics-informed Gaussian Processes as Linear Model Predictive Controller}, |
howpublished | = | {Preprint: arXiv:2412.04502}, |
month | = | {Dec}, |
year | = | {2024}, |
note | = | {}, |