English

Large-Scale Multi-Fleet Platoon Coordination: A Dynamic Programming Approach

Systems and Control 2023-07-25 v1 Systems and Control

Abstract

Truck platooning is a promising technology that enables trucks to travel in formations with small inter-vehicle distances for improved aerodynamics and fuel economy. The real-world transportation system includes a vast number of trucks owned by different fleet owners, for example, carriers. To fully exploit the benefits of platooning, efficient dispatching strategies that facilitate the platoon formations across fleets are required. This paper presents a distributed framework for addressing multi-fleet platoon coordination in large transportation networks, where each truck has a fixed route and aims to maximize its own fleet's platooning profit by scheduling its waiting times at hubs. The waiting time scheduling problem of individual trucks is formulated as a distributed optimal control problem with continuous decision space and a reward function that takes non-zero values only at discrete points. By suitably discretizing the decision and state spaces, we show that the problem can be solved exactly by dynamic programming, without loss of optimality. Finally, a realistic simulation study is conducted over the Swedish road network with 5,0005,000 trucks to evaluate the profit and efficiency of the approach. The simulation study shows that, compared to single-fleet platooning, multi-fleet platooning provided by our method achieves around 1515 times higher monetary profit and increases the CO2_2 emission reductions from 0.4%0.4\% to 5.5%5.5\%. In addition, it shows that the developed approach can be carried out in real-time and thus is suitable for platoon coordination in large transportation systems.

Keywords

Cite

@article{arxiv.2307.11867,
  title  = {Large-Scale Multi-Fleet Platoon Coordination: A Dynamic Programming Approach},
  author = {Ting Bai and Alexander Johansson and Karl Henrik Johansson and Jonas Mårtensson},
  journal= {arXiv preprint arXiv:2307.11867},
  year   = {2023}
}

Comments

IEEE Transactions on Intelligent Transportation Systems, accepted

R2 v1 2026-06-28T11:37:22.345Z