Complex & Intelligent Systems (Apr 2023)

Collaborative optimization of task scheduling and multi-agent path planning in automated warehouses

  • Zhang Honglin,
  • Wu Yaohua,
  • Hu Jinchang,
  • Wang Yanyan

DOI
https://doi.org/10.1007/s40747-023-01023-5
Journal volume & issue
Vol. 9, no. 5
pp. 5937 – 5948

Abstract

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Abstract Task scheduling (TS) and multi-agent-path-finding (MAPF) are two cruxes of pickup-and-delivery in automated warehouses. In this paper, the two cruxes are optimized simultaneously. Firstly, the system model, task model, and path model are established, respectively. Then, a task scheduling algorithm based on enhanced HEFT, a heuristic MAPF algorithm and a TS- MAPF algorithm are proposed to solve this combinatorial optimization problem. In EHEFT, a novel rank priority rule is used to determine task sequencing and task allocation. In MAPF algorithm, a CBS algorithm with priority rules is designed for path search. Subsequently, the TS-MAPF algorithm which combines EHEFT and MAPF is proposed. Finally, the proposed algorithms are tested separately against relevant typical algorithms at different scales. The experimental results indicate that the proposed algorithms exhibited good performance.

Keywords