Publication detail

Generalized Voronoi Diagram-Guided and Contact-Optimized Motion Planning for Snake Robots

SHEHADEH, M. A. ŠEDA, M.

English title

Generalized Voronoi Diagram-Guided and Contact-Optimized Motion Planning for Snake Robots

Type

WoS Article

Language

en

Original abstract

In robot motion planning in a space with obstacles, the goal is to find a collision-free path for robots from the start to the target position. Numerous fundamentally different approaches, and their many variants, address this problem depending on the types of obstacles, the dimensionality of the space and the restrictions on robot movements. We present a hierarchical motion planning framework for snake-like robots navigating cluttered environments. At the global level, a bounded Generalized Voronoi Diagram (GVD) generates a maximal-clearance path through complex terrain. To overcome the limitations of pure avoidance strategies, we incorporate a local trajectory optimization layer that enables Obstacle-Aided Locomotion (OAL). This is realized through a simulation-in-theloop system in CoppeliaSim, where gait parameters are optimized using Particle Swarm Optimization (PSO) based on contact forces and energy efficiency. By coupling high-level deliberative planning with low-level contact-aware control, our approach enhances both adaptability and locomotion efficiency. Experimental results demonstrate improved motion performance compared to conventional planners that neglect environmental contact.

Keywords in English

motion planning; cell decomposition; sampling methods; roadmap methods; generalized Voronoi diagram; contact-aided locomotion; obstacle exploitation

Released

2026-01-19

Volume

14

Number

2

Pages from–to

1–17

Pages count

17

BIBTEX


@article{BUT200875,
  author="Mhd Ali {Shehadeh} and Miloš {Šeda}",
  title="Generalized Voronoi Diagram-Guided and Contact-Optimized Motion Planning for Snake Robots",
  journal="Mathematics",
  year="2026",
  volume="14",
  number="2",
  pages="1--17",
  doi="10.3390/math14020332",
  url="https://www.mdpi.com/2227-7390/14/2/332"
}