arXiv Analytics

Sign in

arXiv:2209.08995 [math.OC]AbstractReferencesReviewsResources

Data-Driven Control of Stochastic Systems: An Innovation Estimation Approach

Yibo Wang, Chao Shang, Dexian Huang

Published 2022-09-19Version 1

Recent years have witnessed a booming interest in the data-driven paradigm for predictive control. However, under noisy data ill-conditioned solutions could occur, causing inaccurate predictions and unexpected control behaviours. In this article, we explore a new route toward data-driven control of stochastic systems through active offline learning of innovation data, which gives an answer to the critical question of how to derive an optimal data-driven model from a noise-corrupted dataset. A generalization of the Willems' fundamental lemma is developed for non-parametric representation of input-output-innovation trajectories, provided realizations of innovation are precisely known. This yields a model-agnostic unbiased output predictor and paves the way for data-driven receding horizon control, whose behaviour is identical to the ``oracle" solution of certainty-equivalent model-based control with measurable states. For efficient innovation estimation, a new low-rank subspace identification algorithm is developed. Numerical simulations show that by actively learning innovation from input-output data, remarkable improvement can be made over present formulations, thereby offering a promising framework for data-driven control of stochastic systems.

Related articles: Most relevant | Search more
arXiv:2305.12936 [math.OC] (Published 2023-05-22)
Entropy bounds for invariant measure perturbations in stochastic systems with uncertain noise
arXiv:2301.10873 [math.OC] (Published 2023-01-25)
When sampling works in data-driven control: Informativity for stabilization in continuous time
arXiv:1711.06327 [math.OC] (Published 2017-11-16)
Estimating stationary characteristic functions of stochastic systems via semidefinite programming