Quantifying spatial interaction centrality in urban population mobility: A mobility feature- and network topology-based locational measure

IF 10.5 1区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY Sustainable Cities and Society Pub Date : 2024-08-28 DOI:10.1016/j.scs.2024.105769
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Abstract

Spatial interaction centrality reflects the relative importance of population mobility within a location in urban population mobility. Population mobility networks visually represent urban population mobility, with mobility features and network topology contributing to the quantification of spatial interaction centrality of locations (i.e., geographical nodes). However, existing centrality measures rarely consider mobility features and network topology simultaneously. Centrality quantification also ignores the differences in distance effects between long- and short-distance trips. These factors have led to the inaccurate quantification of centrality. We propose an algorithm called k-dis-weight-shell that quantifies the spatial interaction centrality of geographical nodes at different spatiotemporal scales. Considering the different effects of distance on long- and short-distance trips, we use a spatial continuous wavelet transformation to estimate the radiation radius of geographical nodes. Then, by combining network topology with mobility features (mobility distance and flow), the algorithm transforms them into a ranked order of spatial interaction centrality. Tested in Wuhan and Chengdu, our algorithm outperforms six existing benchmarks. For cases in urban planning and epidemic management, results show that k-dis-weight-shell effectively distinguishes similarities and differences between the distribution of population mobility's spatial interaction centrality and the urban center hierarchy at a coarse spatiotemporal scale. Additionally, it reveals a double wave phenomenon of spatiotemporal correlation between population mobility and COVID-19 transmission before and after lockdown at a fine spatiotemporal scale.

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量化城市人口流动中的空间互动中心性:基于流动特征和网络拓扑的定位衡量标准
空间交互中心性反映了一个地点内人口流动在城市人口流动中的相对重要性。人口流动网络直观地反映了城市人口流动情况,流动特征和网络拓扑结构有助于量化地点(即地理节点)的空间交互中心性。然而,现有的中心度测量很少同时考虑流动特征和网络拓扑结构。中心度量化也忽略了长途和短途旅行之间距离效应的差异。这些因素导致了中心度量化的不准确。我们提出了一种名为 "k-dis-weight-shell "的算法,可以量化不同时空尺度下地理节点的空间交互中心性。考虑到距离对长途和短途旅行的不同影响,我们使用空间连续小波变换来估计地理节点的辐射半径。然后,通过将网络拓扑与流动性特征(流动距离和流量)相结合,该算法将它们转化为空间交互中心性的排序。通过在武汉和成都的测试,我们的算法优于现有的六个基准。在城市规划和疫情管理的案例中,结果表明,k-dis-weight-shell 能有效区分人口流动的空间交互中心性分布与粗时空尺度下城市中心层级之间的异同。此外,在精细时空尺度上,它还揭示了封锁前后人口流动与 COVID-19 传播之间的时空相关性双波现象。
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来源期刊
Sustainable Cities and Society
Sustainable Cities and Society Social Sciences-Geography, Planning and Development
CiteScore
22.00
自引率
13.70%
发文量
810
审稿时长
27 days
期刊介绍: Sustainable Cities and Society (SCS) is an international journal that focuses on fundamental and applied research to promote environmentally sustainable and socially resilient cities. The journal welcomes cross-cutting, multi-disciplinary research in various areas, including: 1. Smart cities and resilient environments; 2. Alternative/clean energy sources, energy distribution, distributed energy generation, and energy demand reduction/management; 3. Monitoring and improving air quality in built environment and cities (e.g., healthy built environment and air quality management); 4. Energy efficient, low/zero carbon, and green buildings/communities; 5. Climate change mitigation and adaptation in urban environments; 6. Green infrastructure and BMPs; 7. Environmental Footprint accounting and management; 8. Urban agriculture and forestry; 9. ICT, smart grid and intelligent infrastructure; 10. Urban design/planning, regulations, legislation, certification, economics, and policy; 11. Social aspects, impacts and resiliency of cities; 12. Behavior monitoring, analysis and change within urban communities; 13. Health monitoring and improvement; 14. Nexus issues related to sustainable cities and societies; 15. Smart city governance; 16. Decision Support Systems for trade-off and uncertainty analysis for improved management of cities and society; 17. Big data, machine learning, and artificial intelligence applications and case studies; 18. Critical infrastructure protection, including security, privacy, forensics, and reliability issues of cyber-physical systems. 19. Water footprint reduction and urban water distribution, harvesting, treatment, reuse and management; 20. Waste reduction and recycling; 21. Wastewater collection, treatment and recycling; 22. Smart, clean and healthy transportation systems and infrastructure;
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