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CSDO: Enhancing Efficiency and Success in Large-Scale Multi-Vehicle Trajectory Planning

Yibin Yang, Shaobing Xu, Xintao Yan, Junkai Jiang, Jianqiang Wang, Heye Huang

TL;DR

Experimental results demonstrate that CSDO outperforms existing MVTP algorithms in large-scale, high-density scenarios, achieving up to 95% success rate in 50m $\times$ 50m random scenarios around one second.

Abstract

This paper presents an efficient algorithm, naming Centralized Searching and Decentralized Optimization (CSDO), to find feasible solution for large-scale Multi-Vehicle Trajectory Planning (MVTP) problem. Due to the intractable growth of non-convex constraints with the number of agents, exploring various homotopy classes that imply different convex domains, is crucial for finding a feasible solution. However, existing methods struggle to explore various homotopy classes efficiently due to combining it with time-consuming precise trajectory solution finding. CSDO, addresses this limitation by separating them into different levels and integrating an efficient Multi-Agent Path Finding (MAPF) algorithm to search homotopy classes. It first searches for a coarse initial guess using a large search step, identifying a specific homotopy class. Subsequent decentralized Quadratic Programming (QP) refinement processes this guess, resolving minor collisions efficiently. Experimental results demonstrate that CSDO outperforms existing MVTP algorithms in large-scale, high-density scenarios, achieving up to 95% success rate in 50m $\times$ 50m random scenarios around one second. Source codes are released in https://github.com/YangSVM/CSDOTrajectoryPlanning.

CSDO: Enhancing Efficiency and Success in Large-Scale Multi-Vehicle Trajectory Planning

TL;DR

Experimental results demonstrate that CSDO outperforms existing MVTP algorithms in large-scale, high-density scenarios, achieving up to 95% success rate in 50m 50m random scenarios around one second.

Abstract

This paper presents an efficient algorithm, naming Centralized Searching and Decentralized Optimization (CSDO), to find feasible solution for large-scale Multi-Vehicle Trajectory Planning (MVTP) problem. Due to the intractable growth of non-convex constraints with the number of agents, exploring various homotopy classes that imply different convex domains, is crucial for finding a feasible solution. However, existing methods struggle to explore various homotopy classes efficiently due to combining it with time-consuming precise trajectory solution finding. CSDO, addresses this limitation by separating them into different levels and integrating an efficient Multi-Agent Path Finding (MAPF) algorithm to search homotopy classes. It first searches for a coarse initial guess using a large search step, identifying a specific homotopy class. Subsequent decentralized Quadratic Programming (QP) refinement processes this guess, resolving minor collisions efficiently. Experimental results demonstrate that CSDO outperforms existing MVTP algorithms in large-scale, high-density scenarios, achieving up to 95% success rate in 50m 50m random scenarios around one second. Source codes are released in https://github.com/YangSVM/CSDOTrajectoryPlanning.
Paper Structure (22 sections, 23 equations, 9 figures, 4 tables, 1 algorithm)

This paper contains 22 sections, 23 equations, 9 figures, 4 tables, 1 algorithm.

Figures (9)

  • Figure 1: The CSDO framework for multi-vehicle trajectory planning.
  • Figure 2: MVTP discretization process.
  • Figure 3: Centralized priority based searching framework.
  • Figure 4: PBS failed reason and well-formed scenarios.
  • Figure 5: The initial guess and collision states after interpolation.
  • ...and 4 more figures

Theorems & Definitions (4)

  • Remark
  • proof
  • Remark
  • proof