IEEE Access (Jan 2020)

Design and Experiments of Safeguard Protected Preview Lane Keeping Control for Autonomous Vehicles

  • Shaobing Xu,
  • Huei Peng,
  • Pingping Lu,
  • Minghan Zhu,
  • Yifan Tang

DOI
https://doi.org/10.1109/ACCESS.2020.2972329
Journal volume & issue
Vol. 8
pp. 29944 – 29953

Abstract

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Lane keeping control needs to achieve smooth steering operation while ensuring safety-no lane departures and maintain small lateral displacement. In this paper, we solve this challenge by developing a preview lane keeping control supervised by a safeguard controller. The preview control utilizes both tracking errors and future lane curvatures to generate the optimal steering commands. The safeguard controller is then designed to guarantee bounded tracking errors. It supervises the preview control and intervenes if and only if the tracking error is approaching the safety boundary. Both algorithms have analytical control laws and thus require little on-line computations. The integrated system is compared with a model predictive control (MPC) design in terms of both tracking performance and computing efficiency. We implemented the proposed controls on a self-driving vehicle platform and tested on open roads and in the Mcity test facility.

Keywords