Data-Driven Robust Control Using Prediction Error Bounds Based on Perturbation Analysis
Abstract
For linear systems, many data-driven control methods rely on the behavioral framework, using historical data of the system to predict the future trajectories. However, measurement noise introduces errors in predictions. When the noise is bounded, we propose a method for designing historical experiments that enable the computation of an upper bound on the prediction error. This approach allows us to formulate a minimax control problem where robust constraint satisfaction is enforced. We derive an upper bound on the suboptimality gap of the resulting control input sequence compared to optimal control utilizing accurate measurements. As demonstrated in numerical experiments, the solution derived by our method can achieve constraint satisfaction and a small suboptimality gap despite the measurement noise.
Cite
@article{arxiv.2308.14178,
title = {Data-Driven Robust Control Using Prediction Error Bounds Based on Perturbation Analysis},
author = {Baiwei Guo and Yuning Jiang and Colin N. Jones and Giancarlo Ferrari-Trecate},
journal= {arXiv preprint arXiv:2308.14178},
year = {2023}
}