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Easy Cases of Deadlock Detection in Train Scheduling

Author

Listed:
  • Veronica Dal Sasso

    (OptRail, Rome 00154, Italy)

  • Leonardo Lamorgese

    (OptRail, Rome 00154, Italy)

  • Carlo Mannino

    (SINTEF, Oslo 0373, Norway; University of Oslo, Oslo, Norway)

  • Antonio Tancredi

    (OptRail, Rome 00154, Italy)

  • Paolo Ventura

    (Institute of System Analysis and Informatics (IASI) of CNR, Rome 00185, Italy)

Abstract

A deadlock occurs when two or more trains are preventing each other from moving forward by occupying the required tracks. Deadlocks are rare but pernicious events in railroad operations and, in most cases, are caused by human errors. Recovering is a time-consuming and costly operation, producing large delays and often requiring crew rescheduling and complex switching moves. In practice, most deadlocks involve only two long trains missing their last potential meet location. In this paper, we prove that, for any network configuration, the identification of two-train deadlocks can be performed in polynomial time. This is the first exact polynomial algorithm for such a practically relevant combinatorial problem. We also develop a pseudo-polynomial but efficient oracle that allows real-time early detection and prevention of any (potential) two-train deadlock in the Union Pacific (a U.S. class 1 rail company) railroad network. A deadlock prevention module based on the work in this paper will be put in place at Union Pacific to prevent all deadlocks of this kind.

Suggested Citation

  • Veronica Dal Sasso & Leonardo Lamorgese & Carlo Mannino & Antonio Tancredi & Paolo Ventura, 2022. "Easy Cases of Deadlock Detection in Train Scheduling," Operations Research, INFORMS, vol. 70(4), pages 2101-2118, July.
  • Handle: RePEc:inm:oropre:v:70:y:2022:i:4:p:2101-2118
    DOI: 10.1287/opre.2022.2283
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