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Fine Scale Spatio-Temporal Modelling of Urban Air Pollution

机译:城市大气污染的精细时空模型

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Urban air pollution is a leading environmental health concern. However, the association between urban air pollution and health outcomes is not consistently reported in the literature, likely because of inaccurate exposure assessment induced by spatial error. In this study, a spatio-temporal model is presented, which integrates harmonic regression and land use regression (LUR) to estimate urban air pollution at fine spatio-temporal scale. The space-time field is decomposed into space-time mean and space-time residuals. The mean is estimated by linear combinations of harmonic regression components, and the spatial field is modelled with LUR. The residuals account for spatio-temporal deviation from the mean model. Using data from a regulatory monitor network and geographic covariates from a LUR model, the study yields monthly nitrogen dioxide estimates at the postal code level for Calgary, Canada. The model yields a satisfactory fit (R~2 = 0.78). The space-time residuals exhibit non-significant to moderate spatial and temporal autocorrelation.
机译:城市空气污染是主要的环境健康问题。然而,文献中并未始终报道城市空气污染与健康结果之间的关联,这可能是由于空间误差引起的暴露评估不准确所致。在这项研究中,提出了一个时空模型,该模型将谐波回归和土地利用回归(LUR)集成在一起,以估算精细的时空尺度上的城市空气污染。时空场被分解为时空平均值和时空残差。通过谐波回归分量的线性组合来估计平均值,并使用LUR对空间场进行建模。残差解释了与均值模型的时空偏差。利用来自监管监视网络的数据和来自LUR模型的地理协变量,该研究得出了加拿大卡尔加里邮政编码水平的每月二氧化氮估算值。该模型产生令人满意的拟合度(R〜2 = 0.78)。时空残差表现出不显着的适度空间和时间自相关。

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