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Comparing exposure metrics for classifying ‘dangerous heat’ in heat wave and health warning systems

机译:比较热波和健康警告系统中对危险热进行分类的曝光度量

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摘要

Heat waves have been linked to excess mortality and morbidity, and are projected to increase in frequency and intensity with a warming climate. This study compares exposure metrics to trigger heat wave and health warning systems (HHWS), and introduces a novel multi-level hybrid clustering method to identify potential dangerously hot days. Two-level and three-level hybrid clustering analysis as well as common indices used to trigger HHWS, including spatial synoptic classification (SSC); and 90th, 95th, and 99th percentiles of minimum and relative minimum temperature (using a 10 day reference period), were calculated using a summertime weather dataset in Detroit from 1976 to 2006. The days classified as ‘hot’ with hybrid clustering analysis, SSC, minimum and relative minimum temperature methods differed by method type. SSC tended to include the days with, on average, 2.6 °C lower daily minimum temperature and 5.3 °C lower dew point than days identified by other methods. These metrics were evaluated by comparing their performance in predicting excess daily mortality. The 99th percentile of minimum temperature was generally the most predictive, followed by the three-level hybrid clustering method, the 95th percentile of minimum temperature, SSC and others. Our proposed clustering framework has more flexibility and requires less substantial meteorological prior information than the synoptic classification methods. Comparison of these metrics in predicting excess daily mortality suggests that metrics thought to better characterize physiological heat stress by considering several weather conditions simultaneously may not be the same metrics that are better at predicting heat-related mortality, which has significant implications in HHWSs.
机译:热波与过量的死亡率和发病率有关,并预计将增加频率和强度,气候变暖。本研究比较了触发热波和健康警告系统(HHW)的曝光度量,并引入了一种新的多级混合聚类方法来识别潜在的炎热天。两级和三级混合聚类分析以及用于触发HHW的常用指数,包括空间概要分类(SSC);使用90 th ,95 th ,和99 th 百分比的最小和相对最小温度(使用10天参考周期) 1976年至2006年底特律的夏季天气数据集。分类为“热”的日子,具有混合聚类分析,SSC,最小和相对最小温度方法的方法类型。 SSC倾向于包括平均每天2.6°C的日子,每天最低温度降低,5.3°C低于其他方法所识别的天数。通过比较预测每日过量死亡率的性能来评估这些度量。 99 th 百分位最小温度通常是最预测的,其次是三级混合聚类方法,95 th 百分位最小温度,ssc等。我们所提出的聚类框架具有更大的灵活性,并且需要较少的大量气象现有信息,而不是概要分类方法。这些指标在预测过量的日常死亡率方面的比较表明,通过考虑几种天气条件,测量思想更好地表征生理热应力,同时可能不是更好地预测热相关死亡率的相同度量,这在HHWS中具有显着影响。

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