首页> 外文期刊>Environmental Science & Technology >Incorporating Local Land Use Regression And Satellite Aerosol Optical Depth In A Hybrid Model Of Spatiotemporal PM_(2.5) Exposures In The Mid-Atlantic States
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Incorporating Local Land Use Regression And Satellite Aerosol Optical Depth In A Hybrid Model Of Spatiotemporal PM_(2.5) Exposures In The Mid-Atlantic States

机译:在大西洋中部时空PM_(2.5)暴露混合模型中纳入本地土地利用回归和卫星气溶胶光学深度

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摘要

Satellite-derived aerosol optical depth (AOD) measurements have the potential to provide spatiotemporally resolved predictions of both long and short-term exposures, but previous studies have generally shown moderate predictive power and lacked detailed high spatio- temporal resolution predictions across large domains. We aimed at extending our previous work by validating our model in another region with different geographical and metrological characteristics, and incorporating fine scale land use regression and nonrandom missingness to better predict PM_(2.5) concentrations for days with or without satellite AOD measures. We start by calibrating AOD data for 2000-2008 across the Mid-Atlantic. We used mixed models regressing PM_(2.5) measurements against day-specific random intercepts, and fixed and random AOD and temperature slopes. We used inverse probability weighting to account for nonrandom missingness of AOD, nested regions within days to capture spatial variation in the daily calibration, and introduced a penalization method that reduces the dimensionality of the large number of spatial and temporal predictors without selecting different predictors in different locations. We then take advantage of the association between grid-cell specific AOD values and PM_(2.5) monitoring data, together with associations between AOD values in neighboring grid cells to develop grid cell predictions when AOD is missing. Finally to get local predictions (at the resolution of 50 m), we regressed the residuals from the predictions for each monitor from these previous steps against the local land use variables specific for each monitor. "Out-ofsample" 10-fold cross-validation was used to quantify the accuracy of our predictions at each step. For all days without AOD values, model performance was excellent (mean "out-ofsample" R~2 = 0.81, year-to-year variation 0.79-0.84). Upon removal of outliers in the PM_(2.5) monitoring data, the results of the cross validation procedure was even better (overall mean "out of sample" R~2 of 0.85). Further, cross validation results revealed no bias in the predicted concentrations (Slope of observed vs predicted = 0.97-1.01). Our model allows one to reliably assess short-term and long-term human exposures in order to investigate both the acute and effects of ambient particles, respectively.
机译:卫星衍生的气溶胶光学深度(AOD)测量有可能提供长期和短期暴露的时空分辨预测,但是以前的研究通常显示出中等的预测能力,并且在大范围内缺乏详细的高时空分辨率预测。我们的目标是扩展我们以前的工作,方法是在另一个具有不同地理和计量特征的地区验证我们的模型,并结合小规模土地利用回归和非随机缺失,以更好地预测有或没有卫星AOD措施的天的PM_(2.5)浓度。我们首先校准整个大西洋中部2000-2008年的AOD数据。我们使用混合模型对特定日期的随机截距,固定和随机AOD和温度斜率对PM_(2.5)进行回归。我们使用逆概率加权来说明AOD的非随机缺失,几天之内的嵌套区域以捕获每日校准中的空间变化,并介绍了一种惩罚方法,该方法可减少大量空间和时间预测变量的维数,而无需在不同的预测变量中选择不同的预测变量位置。然后,我们利用网格单元特定的AOD值与PM_(2.5)监视数据之间的关联,以及缺少AOD时相邻网格单元中AOD值之间的关联来开发网格单元预测。最后,为了获得局部预测(分辨率为50 m),我们将这些先前步骤中每个监测器的预测残差与每个监测器特定的本地土地利用变量进行了回归。使用“样本外” 10倍交叉验证来量化我们在每个步骤中预测的准确性。对于所有没有AOD值的日子,模型的表现都非常出色(平均“样本外” R〜2 = 0.81,逐年变化0.79-0.84)。去除PM_(2.5)监测数据中的异常值后,交叉验证过程的结果甚至更好(总体平均“样本外” R〜2为0.85)。此外,交叉验证结果表明预测浓度没有偏差(观察值与预测值的斜率= 0.97-1.01)。我们的模型允许人们可靠地评估短期和长期人体暴露,以便分别研究环境颗粒的急性和影响。

著录项

  • 来源
    《Environmental Science & Technology》 |2012年第21期|11913-11921|共9页
  • 作者单位

    Department of Environmental Health-Exposure, Epidemiology and Risk Program, Harvard School of Public Health, Landmark Center 401 Park Drive West, Boston, Massachusetts 02215, United States;

    Department of Environmental Health-Exposure, Epidemiology and Risk Program, Harvard School of Public Health, Landmark Center 401 Park Drive West, Boston, Massachusetts 02215, United States;

    Department of Biostatistics, Harvard School of Public Health, Boston, Massachusetts 02215, United States;

    Department of Environmental Health-Exposure, Epidemiology and Risk Program, Harvard School of Public Health, Landmark Center 401 Park Drive West, Boston, Massachusetts 02215, United States;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
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