系统城市问题的混合数据网格方法

T. Langhorst, S. Orzan, Teade Punter, Bernd-Jan Witkamp
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摘要

和许多城市一样,埃因霍温收集了大量的数据,比如城市的地理信息、人口统计、公民调查,以及实时交通或空气质量测量。公众可以获得这些信息中的大部分,并以各种交互式可视化方式在线呈现。然而,这些数据并没有被充分用于解决重要的城市问题,为市民提供有关城市的见解,或为政策决策提供信息。特别是,缺乏可视化和分析,这些可视化和分析包含了代表城市不同角度的多个变量,如人、环境、基础设施和经济。虽然城市数字孪生是将这些视角结合在一起的一种很有前途的方法,但高数据量和详细程度使城市统计分析变得困难。为了解决这一差距,我们组装了一个地理空间网格数据集,将34个具有代表性的城市数据变量映射到纬度为0.001度,经度为0.001度的网格上。这创造了一个共同的基础,一个轻量级的城市系统视图可以出现。我们还展示了两个例子,说明如何使用该数据集对城市数据进行多变量分析,而不是一次分析一个或两个变量,从而获得新的、更细致的见解。
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A mixed data grid approach for systemic city questions
As many cities do, Eindhoven collects a significant amount of data, such as information on the city's geography, demography, citizen surveys, and up to real-time traffic or air quality measurements. Much of this information is available to the public and presented online in various interactive visualizations. However, this data is not being fully used to address important city questions, provide citizens with insights about their city, or inform policy decisions. In particular, there is a lack of visualizations and analyses that incorporate multiple variables representing various perspectives on the city, like people, environment, infrastructure, and economy. Although city digital twinning is a promising approach towards bringing these perspectives together, the high data volumes and level of detail make city statistics analysis difficult. To address this gap, we assembled a geospatial grid dataset that maps 34 representative city-data variables onto a grid of 0.001 degrees latitude by 0.001 degrees longitude. This creates a common ground where a lightweight systemic view of the city can emerge. We also show two examples of how using this dataset for multivariate analysis of city data can lead to new and more nuanced insights than by analysing one or two variables at a time.
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