This paper presents a framework of learning parameter space for event-triggered control. In particular, our goal is to find a set of parameters for the event-triggered condition, such that certain specifications on safety and convergence properties are satisfied. The exploration strategy is based on the Gaussian process-based active learning, in which, for each iteration, the parameter with having the largest variance is evaluated. Moreover, we provide a theoretical analysis, so that the derived parameter space satisfies both convergence and safety. Finally, a numerical simulation is given to illustrate the effectiveness of the approach.
@article{arxiv.2010.09174,
title = {Safe and active parameter exploration for event-triggered control},
author = {Kazumune Hashimoto},
journal= {arXiv preprint arXiv:2010.09174},
year = {2020}
}
Comments
Presented at 2020 IEEE International Conference on Control and Automation (IEEE ICCA)