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Model-Based Clustering of Social Vulnerability to Urban Extreme Heat Events

机译:基于模型的城市极端热事件社会脆弱性聚类

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Geodemographic classification methods are applied to Denver Colorado to develop a typology of social vulnerability to heat exposure. Environmental hazards are known to exhibit biophysical variations (e.g., land cover and housing characteristics) and social variations (e.g., demographic and economic adaptations to heat mitigation). Geodemographic model-based classification permits a more extensive set of input variables, with richer attributions; and it can account for spatial context on variable interactions. Additionally, it generates comparative assessments of environmental stress on multiple demographic groups. The paper emphasizes performance of model-based clustering in geodemographic analysis, describing two stages of classification analysis. In so doing, this research examines ways in which high heat exposure intersects with socioecological variation to drive social vulnerability during extreme heat events. The first stage classifies tract-level variables for social and biophysical stressors. Membership probabilities from the initial (baseline) classification are then input to a second classification that integrates the biophysical and social domains within a membership probability space to form a final place typology. Final place categories are compared to three broad land surface temperature (LST) regimes derived from simple clustering of mean daytime and nighttime land surface temperatures. The results point to several broad considerations for heat mitigation planning that are aligned with extant research on urban heat vulnerability. However, the relative coarseness of the classification structure also reveals a need for further investigation of the internal structure of each class, as well as aggregation effects, in future studies.
机译:地理人口统计分类方法已应用于科罗拉多州的丹佛市,以发展热暴露社会脆弱性的类型。已知环境危害表现出生物物理变化(例如,土地覆盖和住房特征)和社会变化(例如,人口和经济适应减热的变化)。基于地理人口统计模型的分类可以提供更广泛的输入变量集,并具有更丰富的归因;它可以解释变量交互作用的空间背景。此外,它可以对多个人口群体的环境压力进行比较评估。本文着重介绍了基于模型的聚类在地理人口分析中的性能,描述了分类分析的两个阶段。通过这样做,本研究探讨了高温暴露与社会生态变异相交的方式,以在极端高温事件中驱动社会脆弱性。第一阶段对社会和生物物理应激源的管道级变量进行分类。然后,将来自初始(基准)分类的成员资格概率输入到第二个分类中,该第二类将成员物理概率空间内的生物物理和社会领域整合在一起,以形成最终场所类型。将最终位置类别与从平均白天和晚上平均地表温度的简单聚类得出的三种广泛的地表温度(LST)方案进行比较。结果表明,与现有的城市热脆弱性研究相一致,对减热计划进行了广泛的考虑。但是,分类结构的相对粗糙性还表明,有必要在以后的研究中进一步研究每个类的内部结构以及聚集效应。

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