IET Intelligent Transport Systems (Jun 2024)

Research on a local path planning algorithm based on multivehicle collaborative mapping and a potential field method

  • Chunya Sun,
  • Haixin Jing,
  • Yanqiu Xiao,
  • Guangzhen Cui,
  • Meijie Zhao,
  • Weili Zhang

DOI
https://doi.org/10.1049/itr2.12491
Journal volume & issue
Vol. 18, no. 6
pp. 1121 – 1136

Abstract

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Abstract To eliminate blind spots in the field of vision and achieve a safe and collision‐free path, this paper proposes a path planning method based on multivehicle collaborative mapping in the context of vehicle networking. First, a multi vehicle map merging strategy based on the fireworks algorithm is proposed. In this strategy, a dissimilarity objective function based on the concept of grid map similarity is established and an improved fireworks algorithm is used to quickly search for the maximum overlap between local maps, achieving multivehicle collaborative mapping. Second, a real‐time path planning method based on artificial potential field theory is proposed. The information obtained from multivehicle collaborative mapping is first combined with the potential field model to form a multifield coupled road environment model. Then, the obstacle repulsion potential field model is improved to address the issues of traditional artificial potential field methods that target unreachability and poor dynamic response. The feasibility and effectiveness of the collaborative path planning method and single vehicle path planning method are tested through simulation analysis. This paper demonstrates through simulation analysis that the proposed path planning method can effectively achieve beyond line of sight perception and safely and comfortably guide vehicles to complete path planning.

Keywords