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Investigating metrological and geographical effect in remote sensing retrival of PM2.5 concentration in Yangtze River Delta

机译:长江三角洲PM2.5浓度遥感反演中的气象和地理效应研究

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Remote sensing technique constructs a regression model to describe the relations between Aerosol optical depth (AOD) and the ground PM2.5 concentration. However, potential effects from meteorological and geographical factors on the regression models have never been carefully investigated. The manuscript selects three main meteorological variables and two major geographical variables, and investigates their impacts in the performance of geographical weighted regression (GWR) and ordinary least square (OLS) models for estimating ground PM2.5 concentration. Preliminary results on the case of Yangtze River Delta show that meteorological factors have more significant influence on the estimation of PM2.5 concentration than geographical factors. Moreover, the observations tell that the GWR is more preferably to estimate PM2.5 concentration than the OLS.
机译:遥感技术构建了一个回归模型来描述气溶胶光学深度(AOD)与地面PM2.5浓度之间的关系。但是,从未仔细研究过气象和地理因素对回归模型的潜在影响。该手稿选择了三个主要的气象变量和两个主要的地理变量,并研究了它们对估计地面PM2.5浓度的地理加权回归(GWR)和普通最小二乘(OLS)模型的影响。长江三角洲地区的初步结果表明,气象因素对PM2.5浓度估算的影响比地理因素影响更大。而且,观察结果表明,与OLS相比,GWR更适合估算PM2.5浓度。

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