An Optimization-Based Motion Planner for Car-like Logistics Robots on Narrow Roads

Sensors (Basel). 2022 Nov 18;22(22):8948. doi: 10.3390/s22228948.

Abstract

Thanks to their strong maneuverability and high load capacity, car-like robots with non-holonomic constraints are often used in logistics to improve efficiency. However, it is difficult to plan a safe and smooth optimal path in real time on the restricted narrow roads of the logistics park. To solve this problem, an optimization-based motion planning method inspired by the Timed-Elastic-Band algorithm is proposed, called Narrow-Roads-Timed-Elastic-Band (NRTEB). Three optimization modules are added to the inner and outer workflow of the Timed-Elastic-Band framework. The simulation results show that the proposed method achieves safe reversing planning on narrow roads while the jerk of the trajectory is reduced by 72.11% compared to the original method. Real-world experiments reveal that the proposed method safely and smoothly avoids dynamic obstacles in real time when navigating forward and backward. The motion planner provides a safer and smoother trajectory for car-like robots on narrow roads in real time, which greatly enhances the safety, robustness and reliability of the Timed-Elastic-Band planner in logistics parks.

Keywords: Timed-Elastic-Band; car-like robots; motion planning; narrow roads.

MeSH terms

  • Algorithms
  • Automobiles
  • Motion
  • Reproducibility of Results
  • Robotics* / methods