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Classifying heatwaves: Developing health-based models to predict high-mortality versus moderate United States heatwaves

机译:对热浪进行分类:开发基于健康的模型来预测高死亡率与中等美国热浪

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摘要

Heatwaves are divided between moderate, more common heatwaves and rare “high-mortality” heatwaves that have extremely large health effects per day, which we define as heatwaves with a 20% or higher increase in mortality risk. Better projections of the expected frequency of and exposure to these separate types of heatwaves could help communities optimize heat mitigation and response plans and gauge the potential benefits of limiting climate change. Whether a heatwave is high-mortality or moderate could depend on multiple heatwave characteristics, including intensity, length, and timing. We created heatwave classification models using a heatwave training dataset created using recent (1987—2005) health and weather data from 82 large US urban communities. We built twenty potential classification models and used Monte Carlo cross-validations to evaluate these models. We ultimately identified several models that can adequately classify high-mortality heatwaves. These models can be used to project future trends in high-mortality heatwaves under different scenarios of a changing future (e.g., climate change, population change). Further, these models are novel in the way they allow exploration of different scenarios of adaptation to heat, as they include, as predictive variables, heatwave characteristics that are measured relative to a community’s temperature distribution, allowing different adaptation scenarios to be explored by selecting alternative community temperature distributions. The three selected models have been placed on GitHub for use by other researchers, and we use them in a companion paper to project trends in high-mortality heatwaves under different climate, population, and adaptation scenarios.
机译:热浪分为中等,更常见的热浪和罕见的“高死亡率”热浪,它们每天对健康的影响非常大,我们将其定义为死亡率增加20%或更高的热浪。对这些不同类型的热浪的预期频率和暴露进行更好的预测,可以帮助社区优化减热和响应计划,并评估限制气候变化的潜在利益。热浪是高死亡率还是中等死亡率可能取决于多种热浪特征,包括强度,长度和时机。我们使用热波训练数据集创建了热波分类模型,该数据集使用来自美国82个大型城市社区的近期(1987-2005年)健康和天气数据创建。我们建立了二十个潜在的分类模型,并使用蒙特卡洛交叉验证对这些模型进行评估。我们最终确定了可以对高死亡率热波进行充分分类的几种模型。这些模型可用于预测未来变化的不同场景(例如气候变化,人口变化)下高死亡率热浪的未来趋势。此外,这些模型的新颖之处在于,它们允许探索不同的热适应方案,因为它们包括作为预测变量的相对于社区温度分布测得的热浪特征,从而允许通过选择替代方案来探索不同的适应方案。社区温度分布。选定的三个模型已放置在GitHub上供其他研究人员使用,我们在随附的论文中使用它们来预测不同气候,人口和适应情景下高死亡率热浪的趋势。

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