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National NO_2 exposure models for measuring its impact on vulnerable people in the US metropolitan areas

机译:国家NO_2暴露模型,用于测量其对美国大都市地区弱势人群的影响

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Epidemiological research requires accurate prediction of the concentrations of air pollutants. In this study, satellite-based estimates (OMI NO2), distance-weighted models (DWMs), and universal kriging (UK) are applied to land use regression (LUR) to predict annually and monthly averaged NO2 concentrations in the continental United States. In addition, to assess environmental risk, the relationship between NO2 concentrations and people potentially exposed to NO2 within urban areas is explored in 377 metropolitan statistical areas (MSAs). The results of this study show that the application of a combination of OMI NO2, UK, and DWMs to LUR yielded the highest cross-validated (CV) R-2 values and the lowest root mean square error of prediction (RMSEP): 82.9% and 0.392 on a square root scale of ppb in the annual model and 70.4-83.5% and 0.408-0.518 on square root scale of ppb in the monthly models, respectively. Moreover, the model presented a spatially unbiased distribution of CV error terms. Models based on LUR provided more accurate NO2 predictions with lower RMSEP in urban areas than in rural areas. In addition, this study finds that the people living in the urban areas of MSAs, with larger populations and a higher percentage of children under 18 years of age, are likely to be exposed to higher NO2 concentrations. By contrast, people living in the urban areas of MSAs with a higher percentage of the elderly over 65 years of age are likely to be exposed to lower NO2 concentrations.
机译:流行病学研究要求准确预测空气污染物的浓度。在这项研究中,将基于卫星的估算值(OMI NO2),距离加权模型(DWMs)和通用克里金法(UK)应用于土地利用回归(LUR),以预测美国大陆上每年和每月的平均NO2浓度。此外,为了评估环境风险,在377个大都市统计区域(MSA)中探索了NO2浓度与城市地区可能接触NO2的人群之间的关系。这项研究的结果表明,将OMI NO2,UK和DWM组合用于LUR可以产生最高的交叉验证(CV)R-2值和最低的均方根预测误差(RMSEP):82.9%年度模型中ppb的平方根标度分别为0.392和ppb的平方根,分别为70.4-83.5%和0.408-0.518。此外,该模型还提供了CV误差项的空间无偏分布。基于LUR的模型在城市地区比农村地区提供了更准确的NO2预测,而RMSEP更低。此外,这项研究发现,生活在MSA市区的人口众多,18岁以下儿童的比例较高,他们可能会暴露于更高的NO2浓度。相比之下,生活在MSA城市地区且65岁以上老年人比例较高的人们可能会暴露于较低的NO2浓度。

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