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Spatiotemporal prediction of fine particulate matter using high resolution satellite images in the southeastern U.S 2003–2011

机译:使用美国东南部2003-2011年的高分辨率卫星图像对细颗粒物的时空预测

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摘要

Numerous studies have demonstrated that fine particulate matter (PM2.5, particles smaller than 2.5 μm in aerodynamic diameter) is associated with adverse health outcomes. The use of ground monitoring stations of PM2.5 to assess personal exposure; however, induces measurement error. Land use regression provides spatially resolved predictions but land use terms do not vary temporally. Meanwhile, the advent of satellite-retrieved aerosol optical depth (AOD) products have made possible to predict the spatial and temporal patterns of PM2.5 exposures.In this paper, we used AOD data with other PM2.5 variables such as meteorological variables, land use regression, and spatial smoothing to predict daily concentrations of PM2.5 at a 1 km2 resolution of the southeastern United States including the seven states of Georgia, North Carolina, South Carolina, Alabama, Tennessee, Mississippi, and Florida for the years from 2003 through 2011. We divided the study area into 3 regions and applied separate mixed-effect models to calibrate AOD using ground PM2.5 measurements and other spatiotemporal predictors.Using 10-fold cross-validation, we obtained out of sample R2 values of 0.77, 0.81, and 0.70 with the square root of the mean squared prediction errors (RMSPE) of 2.89, 2.51, and 2.82 μg/m3 for regions 1, 2, and 3, respectively. The slopes of the relationships between predicted PM2.5 and held out measurements were approximately 1 indicating no bias between the observed and modeled PM2.5 concentrations.Predictions can be used in epidemiological studies investigating the effects of both acute and chronic exposures to PM2.5. Our model results will also extend the existing studies on PM2.5 which have mostly focused on urban areas due to the paucity of monitors in rural areas.
机译:大量研究表明,细颗粒物(PM2.5,空气动力学直径小于2.5μm的颗粒)与不良健康后果相关。使用PM2.5地面监测站评估个人暴露情况;但是,会引起测量误差。土地利用回归提供了空间分解的预测,但土地利用条件不会随时间变化。同时,卫星遥感气溶胶光学深度(AOD)产品的出现使预测PM2.5暴露的时空格局成为可能。在本文中,我们将AOD数据与其他PM2.5变量(如气象变量,土地利用回归,并进行空间平滑处理以预测美国东南部1 km 2 分辨率下的PM2.5日浓度,包括乔治亚州,北卡罗来纳州,南卡罗来纳州,南阿拉巴马州,田纳西州,密西西比州和佛罗里达州从2003年到2011年。我们将研究区域划分为3个区域,并使用地面PM2.5测量值和其他时空预测因子应用了单独的混合效应模型来校准AOD。使用10倍交叉验证,我们从样本R 2 值0.77、0.81和0.70中获得,均方根预测误差(RMSPE)的平方根为2.89、2.51和2.82μg/ m 3 分别用于区域1、2和3。预测的PM2.5与保持的测量值之间的关系的斜率约为1,表明观察到的PM2.5浓度与模拟PM2.5浓度之间没有偏差。预测可用于流行病学研究,以调查急性和慢性暴露于PM2.5的影响。我们的模型结果还将扩展对PM2.5的现有研究,由于农村地区监视器的缺乏,这些研究主要集中在城市地区。

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