Aperiodic-sampled neural network controllers with closed-loop stability verifications (extended version)
Systems and Control
2025-06-24 v1 Systems and Control
Abstract
In this paper, we synthesize two aperiodic-sampled deep neural network (DNN) control schemes, based on the closed-loop tracking stability guarantees. By means of the integral quadratic constraint coping with the input-output behaviour of system uncertainties/nonlinearities and the convex relaxations of nonlinear DNN activations leveraging their local sector-bounded attributes, we establish conditions to design the event- and self-triggered logics and to compute the ellipsoidal inner approximations of region of attraction, respectively. Finally, we perform a numerical example of an inverted pendulum to illustrate the effectiveness of the proposed aperiodic-sampled DNN control schemes.
Cite
@article{arxiv.2506.18386,
title = {Aperiodic-sampled neural network controllers with closed-loop stability verifications (extended version)},
author = {Renjie Ma and Zhijian Hu and Rongni Yang and Ligang Wu},
journal= {arXiv preprint arXiv:2506.18386},
year = {2025}
}
Comments
17 pages, 10 figures