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A Time Series Analysis of PM2.5 Concentrations in the Southeastern U.S. Using MAIAC AOD in a Two-stage Spatial Statistical Model

机译:在两阶段空间统计模型中使用MAIAC AOD对美国东南部PM2.5浓度进行时间序列分析

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Background. Long term PM2.5 exposure has been associated with various health outcomes. However, ground monitoring networks leave large rural and suburban areas uncovered even in developed countries.ln recent years, satellite-retrieved aerosol optical depth (AOD) has been used for PM2.5 concentration estimation due to its large spatial coverage. A limitation of the current AOD products is their coarse spatial resolution (10-20 km).Aims. We examined the PM2.5 predicting power of a new AOD product with 1 km spatial resolution retrieved by the Multi-Angle Implementation of Atmospheric Correction (MAIAC) algorithm. Methods. We developed a two stage spatial model with MAIAC AOD, meteorological and land use variables as covariates. The first stage linear mixed effects model accounts for the day-to-day variability of the PM2.5-AOD relationship, and the second stage geographically weighted regression model reduces the spatially varying residuals from the first stage. A 10-year model simulation was performed in the southeastern U.S. centered at the Atlanta Metro area. Results. Annual model R2 ranged from 0.52 to 0.83, and annual mean prediction error ranged from 1.97 to 2.58 μg/m3. Model performance is significantly better than a similar model developed without MAIAC AOD. Our time series analysis results showed that PM2.5 concentration level in the study area was in a general declining trend from 2001 to 2010 with the exception of 2005, which could be attributed to higher sulfate concentrations related to increased power production during the warm season.Conclusions. MAIAC AOD is a strong predictor of ground level PM2.5 when used together with effect modifiers such as temperature and wind speed. The prediction error of our MAIAC AOD model at 1 km resolution is comparable with that of a similar MODIS AOD model at 10 km resolution.
机译:背景。长期暴露于PM2.5与各种健康状况有关。但是,地面监测网络甚至在发达国家也没有发现大范围的农村和郊区。近年来,由于卫星覆盖的气溶胶光学深度(AOD)由于其较大的空间覆盖范围而被用于PM2.5浓度估算。当前AOD产品的局限性在于其粗糙的空间分辨率(10-20 km)。我们检查了通过大气校正的多角度实现(MAIAC)算法检索到的具有1 km空间分辨率的新AOD产品的PM2.5预测能力。方法。我们使用MAIAC AOD,气象和土地利用变量作为协变量开发了一个两阶段空间模型。第一阶段的线性混合效应模型说明了PM2.5-AOD关系的日常变化,第二阶段的地理加权回归模型减少了第一阶段的空间变化残差。在以亚特兰大都会区为中心的美国东南部进行了为期10年的模型模拟。结果。年度模型R2的范围从0.52到0.83,年度平均预测误差的范围从1.97到2.58μg/ m3。模型性能明显优于没有MAIAC AOD的类似模型。我们的时间序列分析结果表明,除2005年外,研究区域的PM2.5浓度水平在2001年至2010年总体呈下降趋势,这可能归因于硫酸盐浓度升高与温暖季节发电量的增加有关。结论当与温度和风速等影响因子一起使用时,MAIAC AOD是地面PM2.5的有力预测指标。我们的MAIAC AOD模型在1 km分辨率下的预测误差与类似的MODIS AOD模型在10 km分辨率下的预测误差相当。

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