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Spatial Dependency of Urban Sprawl and the Underlying Road Network Structure

机译:城市扩张的空间依赖性及其底层道路网络结构

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摘要

The spatial correlation between urban sprawl and the underlying road network has long been recognized in urban studies. Accessibility to road networks is often considered an approximation for the measurement of human mobility, which is a key factor in determining potential urban sprawl in the future. Despite the close relationship between urban development and road networks, the spatial dependency of these two spatial layers has never been systematically evaluated. This study conducted a comprehensive investigation on the spatial dependency between these two spatial layers using an urban expansion data set between 2000 and 2010 of East Asian regions and the road network data from OpenStreetMap. Four Chinese cities, namely Beijing, Shanghai, Chengdu, and Shenzhen, were selected to conduct the analysis. The spatial correlations between the urban sprawl and road networks were first quantitatively analyzed using Ripley's cross-K function. Highly significant spatial correlation has been observed in all four tested cities. A Bayesian network model was also developed to verify the predictability of urban sprawl using the spatial and structural features extracted from the existing road networks as well as the spatial pattern of the past built-up areas. The results show an affirmative answer to the predictability of urban sprawl by achieving an overall accuracy of 79% in classifying urban sprawl and undeveloped areas. Finally, the hidden dependencies among the urban sprawl and the extracted spatial features were interpreted and analyzed based on the Bayesian network structure learned from the data. (C) 2019 American Society of Civil Engineers.
机译:长期以来,城市研究已认识到城市蔓延与基础道路网络之间的空间相关性。道路网络的可及性通常被认为是衡量人员流动性的一种近似方法,这是确定未来潜在的城市蔓延的关键因素。尽管城市发展与道路网络之间有着密切的联系,但从未系统地评估这两个空间层的空间依赖性。这项研究使用2000年至2010年东亚地区的城市扩展数据集以及来自OpenStreetMap的道路网络数据,对这两个空间层之间的空间依赖性进行了全面调查。选择了北京,上海,成都和深圳这四个中国城市进行分析。首先使用Ripley的cross-K函数对城市扩张和道路网络之间的空间相关性进行了定量分析。在所有四个测试城市中均观察到高度相关的空间关系。还建立了贝叶斯网络模型,以使用从现有道路网络中提取的空间和结构特征以及过去建成区的空间格局来验证城市扩张的可预测性。结果表明,在对城市蔓延和未开发地区进行分类时,通过达到79%的总体准确性,对城市蔓延的可预测性给出了肯定的答案。最后,基于从数据中学到的贝叶斯网络结构,对城市扩张与提取的空间特征之间的隐含依赖性进行了解释和分析。 (C)2019美国土木工程师学会。

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  • 来源
    《Journal of Urban Planning and Development》 |2019年第4期|04019014.1-04019014.8|共8页
  • 作者单位

    JD Digits JD Intelligent City Res Beijing 100176 Peoples R China|Purdue Univ Lyles Sch Civil Engn W Lafayette IN 47907 USA;

    Purdue Univ Lyles Sch Civil Engn W Lafayette IN 47907 USA;

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