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A statistical model to estimate the local vulnerability to severe weather

机译:估计对恶劣天气的地方脆弱性的统计模型

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摘要

We present a spatial analysis of weather-related fire brigade operations in Berlin. By comparing operation occurrences to insured losses for a set of severe weather events we demonstrate the representativeness and usefulness of such data in the analysis of weather impacts on local scales. We investigate factors influencing the local rate of operation occurrence. While depending on multiple factors - which are often not available - we focus on publicly available quantities. These include topographic features, land use information based on satellite data and information on urban structure based on data from the OpenStreetMap project. After identifying suitable predictors such as housing coverage or local density of the road network we set up a statistical model to be able to predict the average occurrence frequency of local fire brigade operations. Such model can be used to determine potential "hotspots" for weather impacts even in areas or cities where no systematic records are available and can thus serve as a basis for a broad range of tools or applications in emergency management and planning.
机译:我们在柏林展示了与天气相关的消防队业务的空间分析。通过将操作出现与一组恶劣天气事件的保险损失进行比较,我们展示了这些数据在对当地尺度的天气影响分析中的代表性和有用性。我们调查影响本地运营率的因素。虽然取决于多个因素 - 通常不可用 - 我们专注于公开的数量。这些包括地形特征,基于卫星数据的土地利用信息和基于来自OpenStreetMap项目的数据的城市结构信息。在识别出合适的预测因子之后,例如道路网络的外壳覆盖或局部密度,我们建立了统计模型,以便能够预测局部消防队操作的平均出现频率。这种模型可用于确定天气影响的潜在“热点”,即使在没有系统记录的区域或城市中也可以作为基础,可以是广泛的工具或应急管理和规划中的应用。

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