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韧性视角下城轨交通关键车站识别与恢复顺序优化

刘杰 李周宇 石庄彬 王宇浩 何明卫

北京交通大学学报2026,Vol.50Issue(1):95-103,9.
北京交通大学学报2026,Vol.50Issue(1):95-103,9.DOI:10.11860/j.issn.1673-0291.20250004

韧性视角下城轨交通关键车站识别与恢复顺序优化

Critical station identification and recovery sequence optimization in urban rail transit under a resilience perspective

刘杰 1李周宇 2石庄彬 2王宇浩 2何明卫2

作者信息

  • 1. 昆明理工大学 交通工程学院,昆明 650031||剑桥大学 工学院,剑桥 CB2 1PZ
  • 2. 昆明理工大学 交通工程学院,昆明 650031
  • 折叠

摘要

Abstract

To address operational disruption risks in urban rail transit networks arising from station fail-ures,this study proposes a systematic resilience optimization methodology based on a weighted coupled map lattice(CML)model integrated with an improved simulated annealing algorithm.First,by comprehensively incorporating station degree,inter-station passenger flows,and boarding/alight-ing volumes,a weighted CML model is constructed to accurately simulate cascading failure processes following station disruptions.Structural and service performance metrics derived from this simulation are then employed to quantify system resilience.Subsequently,two optimization models are estab-lished:A critical station identification model aimed at minimizing cumulative resilience loss,and a re-covery sequence optimization model for failed stations designed to maximize restoration efficiency.To enhance algorithmic robustness and search efficiency,an improved simulated annealing algorithm fea-turing dynamic cooling rates and hybrid perturbation strategies is developed.Finally,the Wuhan Metro network serves as a case study for empirical validation.Results demonstrate that,compared to traditional single-indicator-based methods(such as those relying solely on station degree,inter-station flow,or boarding/alighting flow),the critical stations identified by the proposed model(primarily high-flow non-transfer stations)induce 7%to 13%greater network performance degradation upon failure.Moreover,the recovery sequence optimization model and algorithm yield a 3%to 7%improvement in restoration efficiency,validating the effectiveness of the proposed approach in enhancing network ro-bustness and recovery capacity.

关键词

交通运输规划与管理/关键车站识别/恢复顺序优化/耦合映像格子/网络韧性

Key words

transportation planning and management/critical station identification/recovery sequence optimization/coupled map lattice/network resilience

分类

交通工程

引用本文复制引用

刘杰,李周宇,石庄彬,王宇浩,何明卫..韧性视角下城轨交通关键车站识别与恢复顺序优化[J].北京交通大学学报,2026,50(1):95-103,9.

基金项目

国家自然科学基金(52102378) (52102378)

云南省基础研究计划(202401AT070382,202301AU070052) (202401AT070382,202301AU070052)

欧洲地平线玛丽居里行动计划(101034337) National Natural Science Foundation of China(52102378) (101034337)

General Project of Basic Research Program of Yunnan Province(202401AT070382,202301AU070052) (202401AT070382,202301AU070052)

European Union's Horizon Research and Innovation Program under the Marie Skłodowska-Curie(101034337) (101034337)

北京交通大学学报

1673-0291

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