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Pragmatic Estimation of a Spatio-Temporal Air Quality Model With Irregular Monitoring Data

机译:基于不规则监测数据的时空空气质量模型的实用估计

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摘要

Statistical analyses of the health effects of air pollution have increasingly used GIS-based covariates for prediction of ambient air quality in “land-use” regression models. More recently these regression models have accounted for spatial correlation structure in combining monitoring data with land-use covariates. The current paper builds on these concepts to address spatio-temporal prediction of ambient concentrations of particulate matter with aerodynamic diameter less than 2.5 μm (PM2.5) on the basis of a model representing spatially varying seasonal trends and spatial correlation structures. Our hierarchical methodology provides a pragmatic approach that fully exploits regulatory and other supplemental monitoring data which jointly define a complex spatio-temporal monitoring design. We explain the elements of the computational approach, including estimation of smoothed empirical orthogonal functions (SEOFs) as basis functions for temporal trend, spatial (“land use”) regression by Partial Least Squares (PLS), modeling of spatio-temporal correlation structure, and generalized universal kriging prediction of ambient exposure for subjects in the Multi-Ethnic Study of Atherosclerosis and Air Pollution (MESA Air) project. Analyses are demonstrated in detail for the South California study area of the MESA Air project using AQS monitoring data from 2000 to 2006 and supplemental MESA Air monitoring data beginning in 2005. Results of application of the modeling and estimation methodology are presented also for five other MESA Air metropolitan study areas across the country with comments on current and future research developments.
机译:空气污染对健康的影响的统计分析越来越多地使用基于GIS的协变量来预测“土地利用”回归模型中的环境空气质量。最近,这些回归模型在将监测数据与土地利用协变量相结合时考虑了空间相关性结构。本论文基于代表空间变化的季节趋势和空间相关结构的模型,基于这些概念来解决空气动力学直径小于2.5μm(PM2.5)的颗粒物的环境浓度的时空预测。我们的分层方法提供了一种实用的方法,可以充分利用监管和其他补充性监测数据,这些数据共同定义了复杂的时空监测设计。我们解释了计算方法的要素,包括估算平滑的经验正交函数(SEOF)作为时间趋势的基础函数,偏最小二乘(PLS)进行空间(“土地利用”)回归,时空相关结构建模,在动脉粥样硬化和空气污染多民族研究(MESA Air)项目中,对受试者的环境暴露进行了通用通用克里格法预测。使用2000年至2006年的AQS监测数据以及2005年开始的补充MESA空气监测数据,对MESA空气项目的南加利福尼亚研究区进行了详细的分析。还介绍了其他五个MESA的建模和估计方法的应用结果全国各地的大都会航空研究区,对当前和未来的研究进展发表评论。

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