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Spatio-temporal modeling of fine particulate matter

机译:细颗粒物的时空模拟

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Studies indicate that even short-term exposure to high concentrations of fine atmospheric particulate matter (PM2.5) can lead to long-term health effects. In this article, we propose a random effects model for PM2.5 concentrations. In particular, we anticipate urban/rural differences with regard to both mean levels and variability. Hence we introduce two random effects components, one for rural or background levels and the other as a Supplement for urban areas. These are specified in the form of spatio-temporal processes. Weighting these processes through a population density surface results ill nonstationarity in space. We analyze daily PM2.5 concentrations in three midwestern U.S. states for the year 2001. A fully Bayesian model is implemented, using MCMC techniques, which enables full inference with regard to process unknowns as well as predictions in time and space.
机译:研究表明,即使短期暴露于高浓度的大气细颗粒物(PM2.5)也可能导致长期健康影响。在本文中,我们提出了PM2.5浓度的随机效应模型。特别是,我们预计在平均水平和变异性方面的城乡差异。因此,我们引入了两个随机效应分量,一个分量用于农村或背景水平,另一个分量作为城市区域的补充。这些以时空过程的形式指定。通过人口密度表面对这些过程进行加权会导致不良的空间非平稳性。我们分析了2001年美国中西部三个州的每日PM2.5浓度。使用MCMC技术实施了完全贝叶斯模型,该模型可对过程未知数以及时空预测进行全面推断。

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