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Characterizing the polycentric spatial structure of Beijing Metropolitan Region using carpooling big data

机译:用碎布大数据表征北京大都市地区的多中心空间结构

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摘要

Polycentric metropolitan regions are a high-level urbanization form characterized with dynamic layout, fuzzy boundary and various human activity performances. Owing to the complexity of polycentricity, it can be difficult to understand their spatial structure characteristics merely based on conventional survey data and method. This poses a challenge for authorities wishing to make effective urban land use and transport policies. Fortunately, the presence and availability of big data provides an opportunity for scholars to explore the complex metropolitan spatial structures, but there are still some research limitations in terms of data use and processing, unit scale, and method. To address these limitations, we proposed a three-step method to apply the carpooling big data in metropolitan analysis including: first, locating the metropolitan sub-centers; second, delimiting the metropolitan sphere; third, measuring the performance of polycentric structure. The developed method was tested in Beijing Metropolitan Region and the results show that the polycentric metropolitan region represents a hierarchical regional center system: one primary center interacting with seven surrounding secondary centers. These metropolitan centers have a strong attraction, which results in the continuous expansion beyond the administrative boundary to radiate more adjacent jurisdictions. Furthermore, the heterogeneity of human activity performance and role for each regional center is remarkable. It is necessary to consider the specific role of each sub- center when making metropolitan transport and land use policies. Compared with previous studies, the proposed method has the advantages of being more reliable, accurate and comprehensive in characterizing the polycentric spatial structure. The application of carpooling big data and the proposed method would provide a novel perspective for research on the other metropolitan regions.
机译:多中心地区是一种高级城市化形式,具有动态布局,模糊边界和各种人类活动性能。由于多层的复杂性,仅仅基于传统的测量数据和方法,难以了解它们的空间结构特征。这对希望有效的城市土地利用和运输政策提出了挑战。幸运的是,大数据的存在和可用性为学者提供了探索复杂的大都市空间结构的机会,但数据使用和处理,单位规模和方法仍有一些研究限制。为了解决这些限制,我们提出了一种三步法,将拼车的大数据应用于大都市分析,包括:首先,定位大都市子中心;其次,划定了大都市领域;三,测量多中心结构的性能。开发方法在北京大都市地区进行了测试,结果表明,多中心大都市区代表分层区域中心系统:一个主要中心与七个周围的中间中心相互作用。这些大都市中心具有强烈的吸引力,这导致超越行政边界的持续扩张,以辐射更多邻近的司法管辖区。此外,人类活动性能的异质性和每个区域中心的作用是显着的。在制造大都市运输和土地利用政策时,有必要考虑每个子中心的具体作用。与先前的研究相比,所提出的方法在表征多中心空间结构时具有更可靠,准确和全面的优点。拼车大数据的应用和拟议方法将为其他大都市区的研究提供新颖的视角。

著录项

  • 来源
    《Cities》 |2021年第2期|103040.1-103040.17|共17页
  • 作者单位

    Beijing Jiaotong Univ Sch Traff & Transportat MOT Key Lab Transport Ind Big Data Applicat Techn Beijing 100044 Peoples R China;

    Beijing Jiaotong Univ Sch Traff & Transportat MOT Key Lab Transport Ind Big Data Applicat Techn Beijing 100044 Peoples R China;

    China Highway Engn Consulting Grp Co Ltd Beijing 100089 Peoples R China;

    UCL Ctr Transport Studies Gower St London WC1E 6BT England;

    Beijing Jiaotong Univ Sch Civil Engn Beijing 100044 Peoples R China;

    Natl Dev & Reform Commiss Belt & Rd Initiat Construct Promot Ctr Beijing 100824 Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Polycentric spatial structure; Functional boundary; Carpooling; Commuting; Beijing Metropolitan Region;

    机译:多中心空间结构;功能边界;拼车;通勤;北京大都市地区;

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