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G-DIF: A geospatial data integration framework to rapidly estimate post- earthquake damage

机译:g-dif:一种地理空间数据集成框架,以便快速估计地震后损伤

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摘要

While unprecedented amounts of building damage data are now produced after earthquakes, stakeholders do not have a systematic method to synthesize and evaluate damage information, thus leaving many datasets unused. We propose a Geospatial Data Integration Framework (G-DIF) that employs regression kriging to combine a sparse sample of accurate field surveys with spatially exhaustive, though uncertain, damage data from forecasts or remote sensing. The framework can be implemented after an earthquake to produce a spatially distributed estimate of damage and, importantly, its uncertainty. An example application with real data collected after the 2015 Nepal earthquake illustrates how regression kriging can combine a diversity of datasets-and downweight uninformative sources-reflecting its ability to accommodate context-specific variations in data type and quality. Through a sensitivity analysis on the number of field surveys, we demonstrate that with only a few surveys, this method can provide more accurate results than a standard engineering forecast.
机译:虽然在地震后现在生产了前所未有的建筑物损坏数据,但利益相关者没有系统的方法来合成和评估损坏信息,从而留下许多未使用的数据集。我们提出了一种地理空间数据集成框架(G-DIF),该框架(G-DIF)采用回归克里格,以将精确的现场调查的稀疏样本与空间穷举,尽管来自预测或遥感的不确定,损坏数据。框架可以在地震发生后实现,以产生对损坏的空间分布估计,重要的是,其不确定性。在2015年尼泊尔地震之后收集的实际数据的示例应用程序说明了回归克里格语可以如何组合数据集和低级无规方式的多样性 - 反映其能够适应数据类型和质量的上下文的变化。通过对现场调查数量的敏感性分析,我们证明只有几次调查,这种方法可以提供比标准工程预测更准确的结果。

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