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Remote sensing detection of the spatial pattern of urban air pollution in Los Angeles

机译:洛杉矶城市空气污染空间格局的遥感探测

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Traditional monitoring method of PM concentrations with field campaigns cannot accurately identify the spatial pattern of air pollution in urban areas. Remote sensing techniques have been applied to monitor the distribution of atmospheric particulate pollution. However, remotely sensed aerosol data products with low spatial-resolution cannot reveal the spatial variations of urban air pollution. In this study, urban aerosol optical depth (AOD) data with 500 m resolution was generated using the Moderate Resolution Imaging Spectroradionmeter (MODIS) image data for the Greater Los Angeles area. The AOD was then used to build a land-use based regression (LUR) model (Model B) for mapping the urban PM concentration, by combining with population density and leaf area index. The accuracy of the modeling method was evaluated by comparing with the results of LUR model (Model A) without AOD and of Ordinary Kriging (OK) interpolation. The results show that: (1) the AOD values varied over the city, and were higher in the downtown area; (2) correlation coefficient of LUR model increased from 0.28 to 0.35 by incorporating AOD data; and (3) the proposed LUR model (B) can well reveal the distribution of air pollution with a smaller relative error than the Ordinary Kriging interpolation method. It is suggested that the AOD aided LUR model offers a potential to reveal the spatial pattern of PM pollution with “high spatial resolution” in urban areas, and can thus provide support for mitigating the growingly concerned air pollution in city worldwide.
机译:传统的野外监测PM浓度的方法无法准确识别城市空气污染的空间格局。遥感技术已被用于监测大气颗粒物污染的分布。但是,具有低空间分辨率的遥感气溶胶数据产品无法揭示城市空气污染的空间变化。在这项研究中,使用大洛杉矶地区的中分辨率成像光谱仪(MODIS)图像数据生成了500 m分辨率的城市气溶胶光学深度(AOD)数据。然后,将AOD与人口密度和叶面积指数相结合,用于建立基于土地利用的回归(LUR)模型(模型B),以绘制城市PM浓度图。通过与没有AOD的LUR模型(模型A)和普通Kriging(OK)插值的结果进行比较,评估了建模方法的准确性。结果表明:(1)AOD值随城市变化,在市区较高。 (2)通过合并AOD数据,LUR模型的相关系数从0.28增加到0.35; (3)提出的LUR模型(B)可以很好地揭示空气污染的分布,其相对误差比普通Kriging插值方法小。建议使用AOD辅助LUR模型以“高空间分辨率”揭示城市地区PM污染的空间格局,从而为减轻全球城市日益关注的空气污染提供支持。

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