Frequency Domain Gaussian Process Models for $H^\infty$ Uncertainties
Systems and Control
2022-11-30 v1 Systems and Control
Abstract
Complex-valued Gaussian processes are used in Bayesian frequency-domain system identification as prior models for regression. If each realization of such a process were an function with probability one, then the same model could be used for probabilistic robust control, allowing for robustly safe learning. We investigate sufficient conditions for a general complex-domain Gaussian process to have this property. For the special case of processes whose Hermitian covariance is stationary, we provide an explicit parameterization of the covariance structure in terms of a summable sequence of nonnegative numbers.
Cite
@article{arxiv.2211.15923,
title = {Frequency Domain Gaussian Process Models for $H^\infty$ Uncertainties},
author = {Alex Devonport and Peter Seiler and Murat Arcak},
journal= {arXiv preprint arXiv:2211.15923},
year = {2022}
}
Comments
Extended version of a submission to Learning for Dynamics and Control 2023. 18 pages, 2 figures