Receding-Horizon Control of Constrained Switched Systems with Neural Networks as Parametric Function Approximators
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In: SN Computer Science Volume 4 / issue 1 (2022-11-21) , S. ; eissn:2661-8907
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This work studies receding-horizon control of discrete-time switched linear systems subject to polytopic constraints for the continuous states and inputs. The objective is to approximate the optimal receding-horizon control strategy for cases in which the online computation is intractable due to the necessity of solving mixed-integer quadratic programs in each discrete time instant. The proposed approach builds upon an approximated optimal finite-horizon control law in closed-loop form with guaranteed constraint satisfaction. The paper derives the properties of recursive feasibility and asymptotic stability for the proposed approach. A numerical example is provided for illustration and evaluation of the approach.
@article{doi:10.17170/kobra-202301047295, author ={Markolf, Lukas and Stursberg, Olaf}, title ={Receding-Horizon Control of Constrained Switched Systems with Neural Networks as Parametric Function Approximators}, keywords ={600 and Modellprädiktive Regelung and Neuronales Netz and Optimierung and Approximation and Modell}, copyright ={http://creativecommons.org/licenses/by/4.0/}, language ={en}, journal ={SN Computer Science}, year ={2022-11-21} }