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Magnitude, trends, and impacts of ambient long-term ozone exposure in the United States from 2000 to 2015

机译:从2000年到2015年美国环境长期臭氧暴露对环境长期臭氧暴露的幅度,趋势和影响

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Long-term exposure to ambient ozone (O3) is associated with a variety of impacts, including adverse human-health effects and reduced yields in commercial crops. Ground-level O3 concentrations for assessments are typically predicted using chemical transport models; however such methods often feature biases that can influence impact estimates. Here, we develop and apply artificial neural networks to empirically model long-term O3 exposure over the continental United States from 2000 to 2015, and we generate a measurement-based assessment of impacts on human-health and crop yields. Notably, we found that two commonly used human-health averaging metrics, based on separate epidemiological studies, differ in their trends over the study period. The population-weighted, April–September average of the daily 1h maximum concentration peaked in 2002 at 55.9ppb and decreased by 0.43 [95% CI: 0.28, 0.57]ppbyr?1 between 2000 and 2015, yielding an ~18% decrease in normalized human-health impacts. In contrast, there was little change in the population-weighted, annual average of the maximum daily 8h average concentration between 2000 and 2015, which resulted in a ~5% increase in normalized human-health impacts. In both cases, an aging population structure played a substantial role in modulating these trends. Trends of all agriculture-weighted crop-loss metrics indicated yield improvements, with reductions in the estimated national relative yield loss ranging from 1.7% to 1.9% for maize, 5.1% to 7.1% for soybeans, and 2.7% for wheat. Overall, these results provide a measurement-based estimate of long-term O3 exposure over the United States, quantify the historical trends of such exposure, and illustrate how different conclusions regarding historical impacts can be made through the use of varying metrics.
机译:长期暴露于环境臭氧(O 3)与各种影响有关,包括不良人体健康效应和商业作物的产量降低。通常使用化学传输模型预测评估的地面O3浓度;然而,这些方法通常具有可能影响影响估计的偏差。在这里,我们从2000年到2015年的美国大陆o3曝光的经验模型开发和应用人工神经网络,我们为对人体健康和作物产量的影响产生了基于衡量的评估。值得注意的是,我们发现,基于单独的流行病学研究,两个常用的人类健康平均度量在研究期间的趋势中不同。每日1H的人口加权,4月平均每日1H最大浓度为55.9ppb,并减少0.43 [95%Ci:0.28,0.57] Ppbyr?1在2000和2015之间,归一化〜18%减少人体健康影响。相比之下,人口加权的变化很小,2000年至2015年期间最大每日8小时平均浓度的年平均值,导致正常化人健康影响增加了〜5%。在这两种情况下,人口结构在调制这些趋势方面发挥了重要作用。所有农业加权作物损失指标的趋势表明产量改善,估计的国家相对屈服损失减少为玉米的1.7%至1.9%,大豆的5.1%至7.1%,小麦为2.7%。总体而言,这些结果提供了基于测量的估计,对美国的长期O3暴露,量化了这种暴露的历史趋势,并说明了如何通过使用不同指标进行历史影响的结论。

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