北京城市区域的分割与演化——来自大规模个体流动数据的视角

Jichang Zhao, Ruiwen Li, X. Liang, Ke Xu
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引用次数: 6

摘要

近几十年来,随着北京城市化的快速发展,全面了解其区域结构和功能变得越来越具有挑战性,尽管它在城市规划中确实起着基础性的作用。幸运的是,大量个人移动记录的积累为解决这一问题提供了前所未有的大数据窗口。本文通过对出租车GPS轨迹的挖掘,将北京城区划分为行政区划和功能区划。首先,建立小区域之间的流动网络,在行政上分割城市区域,发现Infomap是一种更好的方法。其次,提取区域流动动态的时间特征,通过谱聚类对城市区域进行功能分割,有效识别不同功能和流动模式的区域;第三,不同时期的分割对比可以形象地反映城市的演变,包括新区域的出现和老区域的消失。我们的研究结果表明,由大量用户产生的运动大数据可能为理解城市在空间和时间维度上的演变提供一种新的但有希望的探索。
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Segmentation and evolution of urban areas in Beijing: A view from mobility data of massive individuals
With the rapid urbanization of Beijing in recent decades, comprehensively understanding its regions' structures and functions becomes more and more challenging, though it indeed plays a fundamental role in the city planning. While fortunately, the accumulation of huge mobility records from massive individuals provides an unprecedented big-data window for solving this issue. In this paper, we segment urban areas of Beijing into administrative and functional subdivisions through mining GPS trajectories of taxis. First, a flow network between small regions is established to administratively segment the urban area and Infomap is found to be a better approach. Second, temporal features from regions' flow dynamics are extracted to functionally segment the urban area through spectral clustering, which effectively identifies regions with different functions and flow patterns. Third, the comparison of segmentation at different time can vividly represent the evolution of the city, including emergence of new regions and vanishment of aging areas. Our results demonstrate the possibility that the big-data of movements generated by massive users could provide a new but promising probe to understand the evolution of cities in both spatial and temporal dimensions.
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