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利用土地利用回归模型和 MODIS 数据预测 PM2.5 的区域时空变化。

Predicting regional space-time variation of PM2.5 with land-use regression model and MODIS data.

机构信息

Department of Geography, College of Liberal Arts and Sciences, University of Florida, Gainesville, FL 32611, USA.

出版信息

Environ Sci Pollut Res Int. 2012 Jan;19(1):128-38. doi: 10.1007/s11356-011-0546-9. Epub 2011 Jun 23.

Abstract

PURPOSE

Existing land-use regression (LUR) models use land use/cover, population, and traffic information to predict long-term intra-urban variation of air pollution. These models are limited to explaining spatial variation of air pollutants, and few of them are capable of addressing temporal variability. This article proposes a space-time LUR model at a regional scale by incorporating aerosol optical depth (AOD) data from the Moderate Resolution Imaging Spectroradiometer (MODIS).

METHODS

A multivariate regression model was established to predict the distribution of particle matters less than 2.5 μm in aerodynamic diameter (PM(2.5)) in Florida, USA. Monthly PM(2.5) averages at 34 monitoring sites in the year 2005 were used as the dependent variable, while independent variables include land-use patterns, population, traffic, and topographic characteristics. In addition, a monthly AOD variable derived from the MODIS data was integrated into the regression as a space-time predictor. Cross-validation procedures were conducted to validate this AOD-enhanced LUR model.

RESULTS

The final regression model yields a coefficient of determination (R (2)) of 0.63, which is comparable to other studies that employ aerodynamic/meteorological models. The cross validation indicated a good agreement between the observed and predicted PM(2.5) with a mean residual of 0.02 μg/m(3). The distance to heavy-traffic roads is negatively associated with the concentrations of PM(2.5), while agricultural land use is positively correlated. PM(2.5) tends to concentrate in high-latitude areas of Florida and during summer/fall seasons. The monthly AOD has a significant contribution to explaining the variation of PM(2.5) and remarkably enhances the model performance.

CONCLUSIONS

This research is the first attempt to improve current LUR models by integrating remote sensing technologies. The integrative model approach offers an effective means to estimate air pollution over time and space, and could be an alternative to the classic meteorological approach. The model results would provide adequate measurements for epidemiological studies, particularly for chronic health effects in large populations.

摘要

目的

现有的基于土地利用的回归(LUR)模型使用土地利用/覆盖、人口和交通信息来预测城市内部的空气污染长期变化。这些模型仅限于解释空气污染物的空间变化,而且很少有模型能够解决时间变化性。本文通过将来自中分辨率成像光谱仪(MODIS)的气溶胶光学深度(AOD)数据纳入,提出了一种区域性时空 LUR 模型。

方法

建立了一个多元回归模型来预测美国佛罗里达州小于 2.5μm 空气动力学直径的颗粒物(PM(2.5))的分布。2005 年 34 个监测点的每月 PM(2.5)平均值作为因变量,而独立变量包括土地利用模式、人口、交通和地形特征。此外,将从 MODIS 数据中得出的每月 AOD 变量作为时空预测因子纳入回归。采用交叉验证程序验证了该 AOD 增强的 LUR 模型。

结果

最终的回归模型产生了 0.63 的决定系数(R(2)),与其他采用空气动力学/气象模型的研究相当。交叉验证表明,观测值和预测值之间存在良好的一致性,平均残差为 0.02μg/m(3)。与高交通量道路的距离与 PM(2.5)的浓度呈负相关,而农业用地利用与 PM(2.5)呈正相关。PM(2.5)倾向于集中在佛罗里达州的高纬度地区和夏季/秋季。每月 AOD 对解释 PM(2.5)的变化有显著贡献,并显著提高了模型性能。

结论

本研究首次尝试通过整合遥感技术来改进现有的 LUR 模型。综合模型方法提供了一种有效手段,可以在时间和空间上估计空气污染,这可能是对经典气象方法的替代。模型结果将为流行病学研究提供充分的测量,特别是对大量人群的慢性健康影响。

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