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Use of satellite-based aerosol optical depth and spatial clustering to predict ambient PM2.5 concentrations

机译:使用卫星的气溶胶光学深度和空间聚类来预测环境PM2.5浓度

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摘要

Satellite-based PM2.5 monitoring has the potential to complement ground PM2.5 monitoring networks, especially for regions with sparsely distributed monitors. Satellite remote sensing provides data on aerosol optical depth (AOD), which reflects particle abundance in the atmospheric column. Thus AOD has been used in statistical models to predict ground-level PM2.5 concentrations. However, previous studies have shown that AOD may not be a strong predictor of PM2.5 ground levels. Another shortcoming of remote sensing is the large number of non-retrieval days (i.e., days without satellite data available) due to clouds and snow- and ice-cover.In this paper we propose statistical approaches to overcome these two shortcomings, thereby making satellite imagery a viable method to estimate PM2.5 concentrations. First, we render AOD a robust predictor of PM2.5 mass concentration by introducing an AOD daily calibration approach through the use of mixed effects model. Second, we develop models that combine AOD and ground monitoring data to predict PM2.5 concentrations during non-retrieval days. A key feature of this approach is that we develop these prediction models separately for groups of days defined by the observed amount of spatial heterogeneity in concentrations across the study region. Subsequently, these methodologies were applied to examine the spatial and temporal patterns of daily PM2.5 concentrations for both retrieval days (i.e., days with satellite data available) and non-retrieval days in the New England region of the U.S. during the period 2000-2008. Overall, for the years 2000-2008, our statistical models predicted surface PM2.5 concentrations with reasonably high R2 (0.83) and low percent mean relative error (3.5%). Also the spatial distribution of the estimated PM2.5 levels in the study domain clearly exhibited densely populated and high traffic areas. The method we have developed demonstrates that remote sensing can have a tremendous impact on the fields of environmental monitoring and human exposure assessment.
机译:基于卫星的PM2.5监测具有补充地面PM2.5监测网络的潜力,特别是对于监测器分布稀疏的地区。卫星遥感提供有关气溶胶光学深度(AOD)的数据,该数据反映了大气柱中的颗粒丰度。因此,AOD已用于统计模型中以预测地面PM2.5浓度。但是,以前的研究表明,AOD可能不是PM2.5地面水平的有力预测指标。遥感的另一个缺点是由于云层和冰雪覆盖而导致的大量非检索日(即没有可用卫星数据的日子)。在本文中,我们提出了统计方法来克服这两个缺点,从而使卫星成像是估算PM2.5浓度的可行方法。首先,通过使用混合效应模型引入AOD每日校准方法,我们使AOD成为PM2.5质量浓度的可靠预测器。第二,我们开发的模型结合了AOD和地面监测数据,以预测非采掘期内的PM2.5浓度。这种方法的主要特点是,我们针对在研究区域内观察到的浓度空间异质性量定义的天数组分别开发了这些预测模型。随后,将这些方法应用于在2000-2000年期间美国新英格兰地区的检索日(即具有可用卫星数据的日)和非检索日的每日PM2.5浓度的时空格局。 2008。总体而言,在2000-2008年间,我们的统计模型预测的表面PM2.5浓度具有较高的R 2 (0.83)和较低的平均相对误差百分比(3.5%)。研究领域中估计的PM2.5水平的空间分布也清楚地显示了人口稠密和交通繁忙的地区。我们开发的方法表明,遥感技术可以对环境监测和人体暴露评估领域产生巨大影响。

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