2021
DOI: 10.48550/arxiv.2112.09046
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Distributed neural network control with dependability guarantees: a compositional port-Hamiltonian approach

Abstract: 1 Large-scale cyber-physical systems require that control policies are distributed, that is, that they only rely on local real-time measurements and communication with neighboring agents. Optimal Distributed Control (ODC) problems are, however, highly intractable even in seemingly simple cases. Recent work has thus proposed training Neural Network (NN) distributed controllers. A main challenge of NN controllers is that they are not dependable during and after training, that is, the closed-loop system may be un… Show more

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