English

Lipschitz Safe Bayesian Optimization for Automotive Control

Systems and Control 2025-03-12 v2 Systems and Control

Abstract

Controller tuning is a labor-intensive process that requires human intervention and expert knowledge. Bayesian optimization has been applied successfully in different fields to automate this process. However, when tuning on hardware, such as in automotive applications, strict safety requirements often arise. To obtain safety guarantees, many existing safe Bayesian optimization methods rely on assumptions that are hard to verify in practice. This leads to the use of unjustified heuristics in many applications, which invalidates the theoretical safety guarantees. Furthermore, applications often require multiple safety constraints to be satisfied simultaneously. Building on recently proposed Lipschitz-only safe Bayesian optimization, we develop an algorithm that relies on readily interpretable assumptions and satisfies multiple safety constraints at the same time. We apply this algorithm to the problem of automatically tuning a trajectory-tracking controller of a self-driving car. Results both from simulations and an actual test vehicle underline the algorithm's ability to learn tracking controllers without leaving the track or violating any other safety constraints.

Keywords

Cite

@article{arxiv.2501.12969,
  title  = {Lipschitz Safe Bayesian Optimization for Automotive Control},
  author = {Johanna Menn and Pietro Pelizzari and Michael Fleps-Dezasse and Sebastian Trimpe},
  journal= {arXiv preprint arXiv:2501.12969},
  year   = {2025}
}

Comments

Accepted for publication at 63rd Conference on Decision and Control, December 16-19, 2024 in Milano, Italy

R2 v1 2026-06-28T21:13:44.867Z