English

DRCC-LPVMPC: Robust Data-Driven Control for Autonomous Driving and Obstacle Avoidance

Systems and Control 2026-03-17 v1 Systems and Control

Abstract

Safety in obstacle avoidance is critical for autonomous driving. While model predictive control (MPC) is widely used, simplified prediction models such as linearized or single-track vehicle models introduce discrepancies between predicted and actual behavior that can compromise safety. This paper proposes a distributionally robust chance-constrained linear parameter-varying MPC (DRCC-LPVMPC) framework that explicitly accounts for such discrepancies. The single-track vehicle dynamics are represented in a quasi-linear parameter-varying (quasi-LPV) form, with model mismatches treated as additive uncertainties of unknown distribution. By constructing chance constraints from finite sampled data and employing a Wasserstein ambiguity set, the proposed method avoids restrictive assumptions on boundedness or Gaussian distributions. The resulting DRCC problem is reformulated as tractable convex constraints and solved in real time using a quadratic programming solver. Recursive feasibility of the approach is formally established. Simulation and real-world experiments demonstrate that DRCC-LPVMPC maintains safer obstacle clearance and more reliable tracking than conventional nonlinear MPC and LPVMPC controllers under significant uncertainties.

Keywords

Cite

@article{arxiv.2603.14408,
  title  = {DRCC-LPVMPC: Robust Data-Driven Control for Autonomous Driving and Obstacle Avoidance},
  author = {Shiming Fang and Xilin Li and Changzhi Wu and Kaiyan Yu},
  journal= {arXiv preprint arXiv:2603.14408},
  year   = {2026}
}
R2 v1 2026-07-01T11:20:45.575Z