基于modis的气溶胶光学深度与加德满都地区颗粒物关系的回归模型

Saurav Timilsina, P. Gautam, K. Shrestha
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引用次数: 0

摘要

环境细颗粒物与各种不良健康后果有关。暴露在高水平的此类颗粒中会增加过早死亡的风险,尤其是对免疫系统较弱的人,如儿童和老年人。本研究基于加德满都季节(季风前季节(2020年3月)和冬季(2019年12月)的回归模型,推导了颗粒物与AOD的关系。本文建立了两种模型,一种是线性单变量回归模型,另一种是多变量回归模型。多变量回归模型采用地下风速、温度、相对湿度等气象因子,WRF模拟行星边界层高度。颗粒物(PM2.5)采用美国大使馆空气质量站数据,分析10公里分辨率的MODIS 2级AOD进行回归建模。分别在2019年12月1日至12月31日(冬季)和2020年3月1日至3月31日(季风前)建立单变量线性回归模型和多变量线性回归模型。得到了两种模型的季节相关系数。在两个季节,多变量线性回归模型AOD与颗粒物的相关系数R2(季风前)= 0.72657,R2(冬季)= 0.4687,而单变量回归模型的相关系数R2(季风前)= 0.45,R2(冬季)= 0.133。在这两种回归模型中,利用评估的回归系数,导出了两个季节方程,可以估计颗粒物。
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Relation between Modis-based Aerosol Optical Depth and Particulate Matter in Kathmandu using Regression Model
Ambient fine Particulate Matters have been linked to various adverse health outcomes. Exposure to the high level of such particles would increase the risk of premature death, especially for people with weak immune systems, such as children and elder people. This research derives the relation between particulate matter and AOD from the Regression model on the seasonal (Pre-monsoon season (March 2020) and winter season (December 2019) basis of Kathmandu. Here two models have been developed one linear single-variable regression model and the other multivariable regression model. For the multivariable regression model, meteorological factors like Wind speed, Temperature, and Relative Humidity were adopted from the underground and the Planetary boundary layer height was simulated from WRF. Particulate matter (PM2.5) was adopted from the US Embassy air quality station and MODIS Level 2 AOD having 10 km resolution was analyzed for regression modeling. The linear single variable and linear multivariable regression model were developed seasonally one from December 1st to December 31st, 2019 (winter season) and the other from March 1st to March 31st, 2020 (Pre-monsoon season) using Python. The seasonal correlation coefficient of these two models was obtained. In both seasons, the multivariable linear regression model showed a good correlation between AOD and Particulate Matter R2 (Pre-monsoon) = 0.72657, R2 (winter) = 0.4687) compared to the single variable regression model having R2 (Pre-monsoon) = 0.45, R2 (winter) = 0.133). In both these regression models using the evaluated regression coefficients, two seasonal equations were derived from which Particulate Matter can be estimated.
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