English

Learning in Networked Control Systems

Machine Learning 2020-03-24 v1 Information Theory Dynamical Systems math.IT Machine Learning

Abstract

We design adaptive controller (learning rule) for a networked control system (NCS) in which data packets containing control information are transmitted across a lossy wireless channel. We propose Upper Confidence Bounds for Networked Control Systems (UCB-NCS), a learning rule that maintains confidence intervals for the estimates of plant parameters (A(),B())(A_{(\star)},B_{(\star)}), and channel reliability p()p_{(\star)}, and utilizes the principle of optimism in the face of uncertainty while making control decisions. We provide non-asymptotic performance guarantees for UCB-NCS by analyzing its "regret", i.e., performance gap from the scenario when (A(),B(),p())(A_{(\star)},B_{(\star)},p_{(\star)}) are known to the controller. We show that with a high probability the regret can be upper-bounded as O~(CT)\tilde{O}\left(C\sqrt{T}\right)\footnote{Here O~\tilde{O} hides logarithmic factors.}, where TT is the operating time horizon of the system, and CC is a problem dependent constant.

Keywords

Cite

@article{arxiv.2003.09596,
  title  = {Learning in Networked Control Systems},
  author = {Rahul Singh and P. R. Kumar},
  journal= {arXiv preprint arXiv:2003.09596},
  year   = {2020}
}

Comments

Submitted to CDC and LCSS (http://ieee-cssletters.dei.unipd.it/index.php)

R2 v1 2026-06-23T14:22:20.383Z