首页> 外文期刊>The Science of the Total Environment >National PM_(2.5) and NO_2 exposure models for China based on land use regression, satellite measurements, and universal kriging
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National PM_(2.5) and NO_2 exposure models for China based on land use regression, satellite measurements, and universal kriging

机译:基于土地利用回归,卫星测量和通用克里金法的中国国家PM_(2.5)和NO_2暴露模型

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Outdoor air pollution is a major killer worldwide and the fourth largest contributor to the burden of disease in China. China is the most populous country in the world and also has the largest number of air pollution deaths per year, yet the spatial resolution of existing national air pollution estimates for China is generally relatively low. We address this knowledge gap by developing and evaluating national empirical models for China incorporating land-use regression (LUR), satellite measurements, and universal kriging (UK). Land use, traffic and meteorological variables were included for model building. We tested the resulting models in several ways, including (1) comparing models developed using forward variable selection vs. partial least squares (PLS) variable reduction, (2) comparing models developed with and without satellite measurements, and with and without UK, and (3) 10-fold cross-validation (CV), Leave-One-Province-Out CV (LOPO-CV), and Leave-One-City-Out CV (LOCO-CV). Satellite data and kriging are complementary in making predictions more accurate: kriging improved the models in well-sampled areas; satellite data substantially improved performance at locations far away from monitors. Variable-selection models performed similarly to PLS models in 10-fold CV, but better in LOPO-CV. Our best models employed forward variable selection and UK, with 10-fold CV R-2 of 0.89 (for both 2014 and 2015) for PM2.5 and of 0.73 (year-2014) and 0.78 (year-2015) for NO2. Population-weighted concentrations during 2014-2015 decreased for PM2.5 (58.7 mu g/m(3) to 52.3 mu g/m(3)) and NO2 (29.6 mu g/m(3) to 26.8 mu g/m(3)). We produced the first high resolution national LUR models for annual-average concentrations in China. Models were applied on 1 km grid to support future research. In 2015, 80% of the Chinese population lived in areas that exceeded the Chinese national PM2.5 standard, 35 mu g/m(3). Results here will be publicly available and may be useful for epidemiology, risk assessment, and environmental justice research. (C) 2018 Elsevier B.V. All rights reserved.
机译:室外空气污染是世界范围内的主要杀手,也是造成中国疾病负担的第四大因素。中国是世界上人口最多的国家,每年的空气污染死亡人数也最多,但中国现有的全国空气污染估算的空间分辨率通常相对较低。我们通过开发和评估结合土地利用回归(LUR),卫星测量和通用克里金(英国)的中国国家经验模型来解决这一知识差距。土地使用,交通和气象变量都包括在模型构建中。我们以几种方式测试了所得模型,包括(1)比较使用前向变量选择与偏最小二乘(PLS)变量缩减开发的模型,(2)比较使用和不使用卫星测量以及使用和不使用UK的开发模型,以及(3)10倍交叉验证(CV),一省一出CV(LOPO-CV)和一市一出CV(LOCO-CV)。卫星数据和克里金法在使预测更加准确方面是互补的:克里金法改善了采样良好的地区的模型;卫星数据大大提高了远离显示器的位置的性能。变量选择模型在10倍CV中的表现与PLS模型相似,但在LOPO-CV中表现更好。我们的最佳模型采用前向变量选择和UK,PM2.5的CV R-2为10倍(2014年和2015年),NO2的CV R-2为0.73(2014年)和0.78(2015年)。 2014-2015年期间的人口加权浓度分别为PM2.5(58.7μg / m(3)至52.3μg / m(3))和NO2(29.6μg/ m(3)至26.8 mu g / m( 3))。我们为中国的年平均浓度制作了第一个高分辨率的国家LUR模型。将模型应用于1 km的网格以支持未来的研究。 2015年,超过80%的中国人口居住在超过中国国家PM2.5标准(35微克/平方米)的地区(3)。此处的结果将公开提供,可能对流行病学,风险评估和环境正义研究有用。 (C)2018 Elsevier B.V.保留所有权利。

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