Spatiotemporal Evolution Analysis of the Chinese Railway Network Structure Based on Self-Organizing Maps

Lingzhi Yin, Yafei Wang
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Abstract

Delving into the spatiotemporal evolution of the railway network in different periods can provide guidance and reference for the planning and layout of the railway network. However, most of the existing studies tended to model the railway data separately and compare the network indices of adjacent periods based on the railway data of different periods, thus failing to integrate the railway network in different periods into a unified framework for evolution analysis. Therefore, this paper used the railway data from 2008, 2010, 2015, and 2019, and analyzed the spatiotemporal integration of the railway network evolution based on the complex network theory and the self-organizing maps (SOM) method. Firstly, this study constructed the geographical railway network in the four years and probed into how the network feature indices changed. Then, it used the SOM method to capture the spatiotemporal integration of the railway network evolution in multi-time series. Finally, it clustered the change trajectory of each city node and unveiled the relationship between the evolution of city nodes and the hierarchy of urban systems. The results show that from 2008 to 2019, the railway network feature indices showed an upward trend and that the expansion pattern of the railway network could be divided into the core–peripheral pattern, belt expansion pattern, strings of beads pattern, and multi-center network pattern. The evolution of the change trajectory of the city nodes was highly related to the hierarchical structure of the urban system. This study helps to understand the evolution process of the railway network in China, and provides decision-making reference for improving and optimizing China’s railway network.
基于自组织地图的中国铁路网结构时空演化分析
研究不同时期铁路网的时空演变,可以为铁路网的规划布局提供指导和参考。然而,现有的研究大多倾向于对铁路数据单独建模,并根据不同时期的铁路数据比较相邻时期的网络指标,未能将不同时期的铁路网络整合到一个统一的框架中进行演化分析。为此,本文利用2008年、2010年、2015年和2019年的铁路数据,基于复杂网络理论和自组织地图(SOM)方法,对铁路网络演化的时空整合进行了分析。首先,构建了4年的地理铁路网,探讨了路网特征指标的变化规律。在此基础上,利用SOM方法在多时间序列中捕捉铁路网演化的时空整合。最后,对各城市节点的变化轨迹进行聚类,揭示了城市节点演化与城市体系层级的关系。结果表明:2008 - 2019年,铁路网特征指数呈上升趋势,铁路网扩展模式可分为核心-外围扩展模式、带状扩展模式、串珠状扩展模式和多中心网络模式;城市节点变化轨迹的演变与城市体系的层次结构密切相关。本研究有助于了解中国铁路网的演变过程,为改善和优化中国铁路网提供决策参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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