In this paper, we introduce a targeted exploration strategy for the non-asymptotic, finite-time case. The proposed strategy is applicable to uncertain linear time-invariant systems subject to sub-Gaussian disturbances. As the main result, the proposed approach provides a priori guarantees, ensuring that the optimized exploration inputs achieve a desired accuracy of the model parameters. The technical derivation of the strategy (i) leverages existing non-asymptotic identification bounds with self-normalized martingales, (ii) utilizes spectral lines to predict the effect of sinusoidal excitation, and (iii) effectively accounts for spectral transient error and parametric uncertainty. A numerical example illustrates how the finite exploration time influence the required exploration energy.
@article{arxiv.2504.02380,
title = {Beyond Asymptotics: Targeted exploration with finite-sample guarantees},
author = {Janani Venkatasubramanian and Johannes Köhler and Frank Allgöwer},
journal= {arXiv preprint arXiv:2504.02380},
year = {2026}
}
Comments
Contains supplementary material and corrections to the version published in the proceedings of IEEE CDC 2025