解析香港地铁系统中的跨境出行流及其基于地点的解释因素

Unravelling cross-boundary travel flow and its place-based explanatory factors in the Hong Kong metro system

Urban Studies · 2025
被引 0
ABS 3

中文导读

利用香港地铁智能卡数据,识别从深圳到香港的跨境乘客并聚类,分析其时空分布与站点周边特征的关系,为跨境都市区规划提供参考。

Abstract

Cross-boundary travel flows highlight urban integration and interdependence between cities with territorial boundaries. Cross-boundary travellers exhibit varying travel purposes, behaviours and demands for facilities and opportunities. Existing research rarely conducts large-scale analysis of these distinct travellers and their travel behaviours. This study develops analytical techniques to examine different types of non-local cross-boundary travellers (NCBTs). Using a large-scale smartcard dataset encompassing millions of metro trips in Hong Kong, we applied data mining to identify NCBTs travelling from Shenzhen to Hong Kong and clustered them based on their dynamic cross-boundary trip patterns using K-means clustering techniques. We then analysed these clusters’ spatiotemporal patterns and assessed how their distribution correlates with place-based characteristics at and near metro stations. The results show that NCBT trips are concentrated in four subareas of the city. A higher ratio of NCBT trips occurs at stations with specific place-based characteristics, such as proximity to boundaries, more commercial facilities and restaurants and lower percentages of low-income and highly educated populations. However, the explanatory power of these characteristics varies between NCBT clusters. Frequent NCBTs are more concentrated in station areas with a higher proportion of the population residing outside Hong Kong, while infrequent NCBTs particularly interact less with low-income populations. The findings offer valuable insights for urban planning and management in cross-boundary metropolitan areas.

城市交通跨境出行空间分析大数据挖掘