English

Causality-Informed Data-Driven Predictive Control

Optimization and Control 2025-05-26 v2

Abstract

As a useful and efficient alternative to generic model-based control scheme, data-driven predictive control is subject to bias-variance trade-off and is known to not perform desirably in face of uncertainty. Through the connection between direct data-driven control and subspace predictive control, we gain insight into the reason being the lack of causality as a main cause for high variance of implicit prediction. In this article, we seek to address this deficiency by devising a novel causality-informed formulation of direct data-driven control. Built upon LQ factorization, an equivalent two-stage reformulation of regularized data-driven control is first derived, which bears clearer interpretability and a lower complexity than generic forms. This paves the way for deriving a two-stage causality-informed formulation of data-driven predictive control, as well as a regularized form that balances between control cost minimization and implicit identification of multi-step predictor. Since it only calls for block-triangularization of a submatrix in LQ factorization, the new causality-informed formulation comes at no excess cost as compared to generic ones. Its efficacy is investigated based on numerical examples and application to model-free control of a simulated industrial heating furnace. Empirical results corroborate that the proposed method yields obvious performance improvement over existing formulations in handling stochastic noise and process nonlinearity.

Keywords

Cite

@article{arxiv.2311.09545,
  title  = {Causality-Informed Data-Driven Predictive Control},
  author = {Malika Sader and Yibo Wang and Dexian Huang and Chao Shang and Biao Huang},
  journal= {arXiv preprint arXiv:2311.09545},
  year   = {2025}
}