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基于Kolmogorov熵权的城市轨道交通网络节点重要度识别算法

杨振珑 黄文成 法慧妍 范成敬

交通运输工程与信息学报2024,Vol.22Issue(1):139-149,11.
交通运输工程与信息学报2024,Vol.22Issue(1):139-149,11.DOI:10.19961/j.cnki.1672-4747.2023.07.012

基于Kolmogorov熵权的城市轨道交通网络节点重要度识别算法

Node importance recognition algorithm for urban rail transit networks based on Kolmogorov entropy weight

杨振珑 1黄文成 2法慧妍 1范成敬1

作者信息

  • 1. 西南交通大学,交通运输与物流学院,成都 611756
  • 2. 西南交通大学,交通运输与物流学院,成都 611756||西南交通大学,系统科学与系统工程研究所,成都 611756||综合交通运输智能化国家地方联合工程实验室,成都 611756||综合交通大数据应用技术国家工程实验室,成都 611756
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摘要

Abstract

In recent years,the frequency of accidents,such as delays,sabotage events,and operational failures,in China's urban rail transit system has escalated.Most of these incidents occur at locations with high passenger flow and heavy traffic,emphasizing the critical need to identify important nodes in urban rail transit networks for ensuring their normal operation.To realistically model the real-world complexities of such networks,this study initially develops a model based on complex net-work theory.Subsequently,we incorporate the influence of station-specific attributes and surround-ing regional environment on node importance,constructing an index evaluation system for urban rail transit networks.Then,leveraging the commonalities between chaotic time series and chaotic system index series,we introduce the Kolmogorov entropy weight method to compute index weights.The importance ranking of urban rail transit network nodes is then derived by integrating the index data.Case-study results from the Chengdu metro network demonstrate that the top-10 key stations are con-centrated in the central urban area and serve as transfer stations.Comparative analysis with the infor-mation entropy weight method reveals that the proposed approach shares eight common key sites,displaying a more concentrated distribution of ranking results with fewer extreme values and a small-er score gap.These research findings enhance our understanding of the structural characteristics of urban rail transit networks,providing a crucial theoretical foundation for accident prevention and op-erational optimization.

关键词

城市交通/城市轨道交通/复杂网络/节点重要度/Kolmogorov熵

Key words

urban traffic/urban rail transit/complex network/node importance degree/Kolmogorov entropy

分类

交通工程

引用本文复制引用

杨振珑,黄文成,法慧妍,范成敬..基于Kolmogorov熵权的城市轨道交通网络节点重要度识别算法[J].交通运输工程与信息学报,2024,22(1):139-149,11.

基金项目

国家自然科学基金项目(72001179,72171198) (72001179,72171198)

四川省科技厅国际科技创新合作项目(2021YFH0106) (2021YFH0106)

中央高校基本科研项目(2682021CX052) (2682021CX052)

交通运输工程与信息学报

OACSTPCD

1672-4747

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