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A Learning-based Planning and Control Framework for Inertia Drift Vehicles

Robotics 2025-07-09 v1

Abstract

Inertia drift is a transitional maneuver between two sustained drift stages in opposite directions, which provides valuable insights for navigating consecutive sharp corners for autonomous racing.However, this can be a challenging scenario for the drift controller to handle rapid transitions between opposing sideslip angles while maintaining accurate path tracking. Moreover, accurate drift control depends on a high-fidelity vehicle model to derive drift equilibrium points and predict vehicle states, but this is often compromised by the strongly coupled longitudinal-lateral drift dynamics and unpredictable environmental variations. To address these challenges, this paper proposes a learning-based planning and control framework utilizing Bayesian optimization (BO), which develops a planning logic to ensure a smooth transition and minimal velocity loss between inertia and sustained drift phases. BO is further employed to learn a performance-driven control policy that mitigates modeling errors for enhanced system performance. Simulation results on an 8-shape reference path demonstrate that the proposed framework can achieve smooth and stable inertia drift through sharp corners.

Keywords

Cite

@article{arxiv.2507.05748,
  title  = {A Learning-based Planning and Control Framework for Inertia Drift Vehicles},
  author = {Bei Zhou and Zhouheng Li and Lei Xie and Hongye Su and Johannes Betz},
  journal= {arXiv preprint arXiv:2507.05748},
  year   = {2025}
}
R2 v1 2026-07-01T03:50:57.251Z