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Modeling spatial distribution of Tehran air pollutants using geostatistical methods incorporate uncertainty maps

机译:使用地统计方法对德黑兰空气污染物的空间分布进行建模,并结合了不确定性图

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The estimation of pollution fields, especially in densely populated areas, is an important application in the field of environmental science due to the significant effects of air pollution on public health. In this paper, we investigate the spatial distribution of three air pollutants in Tehran’s atmosphere: carbon monoxide (CO), nitrogen dioxide (NO2), and atmospheric particulate matters less than 10 μm in diameter (PM10μm). To do this, we use four geostatistical interpolation methods: Ordinary Kriging, Universal Kriging, Simple Kriging, and Ordinary Cokriging with Gaussian semivariogram, to estimate the spatial distribution surface for three mentioned air pollutants in Tehran’s atmosphere. The data were collected from 21 air quality monitoring stations located in different districts of Tehran during 2012 and 2013 for 00UTC. Finally, we evaluate the Kriging estimated surfaces using three statistical validation indexes: mean absolute error (MAE), root mean square error (RMSE) that can be divided into systematic and unsystematic errors (RMSES, RMSEU), and D-Willmot. Estimated standard errors surface or uncertainty band of each estimated pollutant surface was also developed. The results indicated that using two auxiliary variables that have significant correlation with CO, the ordinary Cokriginga scheme for CO consistently outperforms all interpolation methods for estimating this pollutant and simple Kriging is the best model for estimation of NO2 and PM10. According to optimal model, the highest concentrations of PM10 are observed in the marginal areas of Tehran while the highest concentrations of NO2 and CO are observed in the central and northern district of Tehran.
机译:由于空气污染对公众健康的重大影响,尤其是在人口稠密地区的污染场估计是环境科学领域的重要应用。在本文中,我们研究了德黑兰大气中三种空气污染物的空间分布:一氧化碳(CO),二氧化氮(NO2)和直径小于10μm(PM10μm)的大气颗粒物。为此,我们使用四种地统计插值方法:普通克里格法,通用克里格法,简单克里格法和具有高斯半变异函数的普通协同克里格法来估计德黑兰大气中三种提到的空气污染物的空间分布表面。该数据是在2012年和2013年从位于德黑兰不同地区的21个空气质量监测站收集的,用于00UTC。最后,我们使用三个统计验证指标评估Kriging估计曲面:平均绝对误差(MAE),均方根误差(RMSE)(可以分为系统误差和非系统误差(RMSES,RMSEU)和D-Willmot)。还开发了每个估计污染物表面的估计标准误差表面或不确定带。结果表明,使用两个与CO显着相关的辅助变量,普通的Cokriginga方案对CO的性能始终优于所有插值方法来估算这种污染物,简单的Kriging是估算NO2和PM10的最佳模型。根据最佳模型,在德黑兰边缘地区观察到最高的PM10浓度,而在德黑兰中部和北部地区观察到最高的NO2和CO浓度。

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