English

A comparison of methods to eliminate regularization weight tuning from data-enabled predictive control

Systems and Control 2023-05-02 v1 Systems and Control

Abstract

Data-enabled predictive control (DeePC) is a recently established form of Model Predictive Control (MPC), based on behavioral systems theory. While eliminating the need to explicitly identify a model, it requires an additional regularization with a corresponding weight to function well with noisy data. The tuning of this weight is non-trivial and has a significant impact on performance. In this paper, we compare three reformulations of DeePC that either eliminate the regularization, or simplify the tuning to a trivial point. A building simulation study shows a comparable performance for all three reformulations of DeePC. However, a conventional MPC with a black-box model slightly outperforms them, while solving much faster, and yielding smoother optimal trajectories. Two of the DeePC variants also show sensitivity to an unobserved biased input noise, which is not present in the conventional MPC.

Keywords

Cite

@article{arxiv.2305.00807,
  title  = {A comparison of methods to eliminate regularization weight tuning from data-enabled predictive control},
  author = {Manuel Koch and Colin N. Jones},
  journal= {arXiv preprint arXiv:2305.00807},
  year   = {2023}
}

Comments

Submitted to CDC 2023

R2 v1 2026-06-28T10:22:28.113Z