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首页> 外文期刊>Industrial and organizational psychology >Estimation of local daily PM2.5 concentration during wildfire episodes: integrating MODIS AOD with multivariate linear mixed effect (LME) models
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Estimation of local daily PM2.5 concentration during wildfire episodes: integrating MODIS AOD with multivariate linear mixed effect (LME) models

机译:探测野火剧集期间当地每日PM2.5浓度:用多变量线性混合效果集成MODIS AOD(LME)模型

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摘要

Seasonal peaks of air pollution from wildfires are increasing in frequency and severity in the western provinces of Canada. During these episodes, populations are exposed to adverse short-term health effects due to elevated levels of fine particulate matter, which is the primary pollutant associated with smoke. The spatial resolution of ground-based monitoring records generally is not sufficient for emergency preparedness and epidemiological studies of such events. Accurate spatial and temporal models of smoke pollution for the study of smoke exposure effects require reliable, fine-scale input data. Satellite aerosol optical depth (AOD) measures can provide a valuable alternative to the coarse spatial resolution of ground PM2.5 monitoring network measurements. Numerous statistical approaches have been used to estimate the link between AOD and PM2.5, most of which consider the relationship between AOD and PM2.5 as being fixed over space and for an entire day; however, due to time-varying meteorological variables, that relationship changes over time and space. Hence, to capture the effects of temporal and spatial variations on the AOD-PM2.5 relationship, two nested linear mixed effect (LME) models are developed herein. Daily estimation of PM2.5 concentration is derived by incorporating nested period-zone-specific random effects of the AOD-PM2.5 relationship over the province of Alberta, Canada. Model validation shows that LME improves the estimation performance of the model compared with ordinary multivariate linear regression by more than 115%. Our findings indicate that the potential of the LME model increases when additional variables are integrated with AOD measures in a multivariate framework. This single model yields an array of reliable spatial-temporal estimates of daily PM2.5 concentrations from wildfire at fine spatial resolution.
机译:野火的空气污染的季节性峰值在加拿大西部省份的频率和严重程度增加。在这些发作期间,由于细颗粒物质水平升高,群体暴露于不良短期健康效应,这是与烟雾相关的主要污染物。基于地面监测记录的空间分辨率通常不足以用于此类事件的应急准备和流行病学研究。准确的空间和时间模型的烟雾污染研究烟雾曝光效应需要可靠,精细输入数据。卫星气溶胶光学深度(AOD)措施可以提供有价值的替代地面PM2.5监测网络测量的粗糙空间分辨率。许多统计方法已被用于估计AOD和PM2.5之间的链路,其中大多数是考虑AOD和PM2.5之间的关系,因为固定在空间和整整一天;然而,由于气象变量时代,这种关系随时间和空间而变化。因此,为了捕获AOD-PM2.5关系对时间和空间变化的影响,这里开发了两个嵌套的线性混合效果(LME)模型。通过纳入加拿大艾伯塔省Aod-PM2.5关系的巢式期间特定的随机效应来源的PM2.5浓度的日常估计。模型验证表明,与普通多变量线性回归相比,LME提高了模型的估计性能超过115%。我们的研究结果表明,当在多变量框架中使用AOD测量集成了额外的变量时,LME模型的潜力会增加。这种单一模型在精细空间分辨率下产生了来自野火的每日PM2.5浓度的可靠空间估计数。

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