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PM_(2.5) estimation using multiple linear regression approach over industrial and non-industrial stations of India

机译:PM_(2.5)使用多种线性回归方法在印度工业和非工业站的多元线性回归方法估计

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PM2.5(particulate matter size less than 2.5 mu m, also called Respirable suspended particulate matter (RSPM)) is causing devastating effects on various living entities and is deleterious more than any other pollutants. As ambient air pollution is a scourge to India, in the present research work, PM(2.5)is considered and the current study aims to estimate surface level PM(2.5)concentrations using satellite-derived aerosol optical depth (AOD) along with meteorological data obtained from reanalysis and in-situ measurements over two different cities of India, namely: Agra, a non-industrial site for a study period of 2011-2015 and Rourkela, a highly industrialized location for 2009-2013, respectively. From the average daily variation of PM2.5, the pollution levels are critical and exceeding the threshold values defined by the pollution control board for most of the days at both the sites. Satellite-observed AOD values were also found to be very high over Agra (average AOD 0.76-0.8) and Rourkela (average AOD 0.4-0.46) during the study period. The annual exceedance factor (AEF) values over Agra and Rourkela were found to be always 1.5 which indicates the above critical state of pollution. Traditional simple linear regression method (Model I), multiple linear regression (Model II (a-e)), log-linear regression (Model III) and conditional based MLR (Model IV and Model V) methods are applied to estimate the PM(2.5)concentrations over Taj for Agra region for a study period of 2011-2015 and Sonaparbat for Rourkela region for a study period of 2009-2013. The models obtained over Taj and Sonaparbat are applied to Rambagh (2011-2015) and Rourkela (2009-2013) sites for validation. The coefficient of determination (R) between observed and estimated values are found to be statistically significant for model II (e) during training and validation at both the sites and model performance is adequate. The Model II (e) can thus be used as a unified explanatory model for the estimation of PM(2.5)over these two monitoring stations.
机译:PM2.5(颗粒物质尺寸小于2.5μm,也称为可吸入悬浮颗粒物(RSPM))对各种生活实体产生破坏性影响,并且对任何其他污染物有害。随着环境空气污染是印度的祸害,在目前的研究工作中,考虑了PM(2.5),目前的研究旨在使用卫星衍生的气溶胶光学深度(AOD)以及气象数据来估计表面级PM(2.5)浓度。从印度的两种不同城市的再分析和原位测量获得,即:AGRA,2011-2015和Rourkela的非工业部位,分别为2009 - 2013年的高度工业化地点。从PM2.5的平均日常变化,污染水平是关键的,并且超过污染控制板定义的阈值,以便在网站上的大部分日子。在研究期间,还发现卫星观察到的AOD值对Agra(平均AOD 0.76-0.8)和Rourkela(平均AOD 0.4-0.46)非常高。发现年度超过AGRA和ROURKELA的价值观,始终是> 1.5,这表明了上述污染状况。传统的简单线性回归方法(型号I),多元线性回归(模型II(AE)),对数线性回归(型号III)和条件基于MLR(型号IV和型号V)方法估计PM(2.5) 2009 - 2013年研究期为2011 - 2015年研究期为2011-2015和Rourkela地区的SOOAPARBAT的泰姬陵地区的浓度。通过TAJ和SONAPARBAT获得的模型应用于Rambagh(2011-2015)和Rourkela(2009-2013)站点进行验证。发现观察和估计值之间的测定系数(R)在训练和验证期间,在网站和模型性能方面的训练和验证期间,对II(E)之间的统计学意义有统计学意义。因此,模型II(e)可以用作统一的解释模型,用于在这两个监测站上估计PM(2.5)。

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