%0 Journal Article %T Evaluation of PM2.5 Emissions in Tehran by Means of Remote Sensing and Regression Models %J Pollution %I University of Tehran %Z 2383-451X %A Jafarian, H. %A Behzadi, S. %D 2020 %\ 07/01/2020 %V 6 %N 3 %P 521-529 %! Evaluation of PM2.5 Emissions in Tehran by Means of Remote Sensing and Regression Models %K Air pollution %K particulate matter %K GIS %K modelling %R 10.22059/poll.2020.292065.706 %X Defined as any substance in the air that may harm humans, animals, vegetation, and materials, air pollution poses a great danger to human health. It has turned into a worldwide problem as well as a huge environmental risk. Recent years have witnessed the increase of air pollution in many cities around the world. Similarly, it has become a big problem in Iran. Although ground-level monitoring can provide accurate PM2.5 measurements, it has limited spatial coverage and resolution. As a result, Satellite Remote Sensing (RS) has emerged as an approach to estimate ground-level ambient air pollution, making it possible to monitor atmospheric particulate matters continuously and have a spatial coverage of them. Recent studies show a high correlation between ground level PM2.5, estimated by RS on the one hand, and measurements, collected at regulatory monitoring sites on the other. As such, the present study addresses the relation between air pollution and satellite images. For so doing, it derives RS estimates, using satellite measurements from Landsat satellite images. Monitoring data is the daily concentration of PM2.5 contaminants, obtained from air pollution stations. The relation between the concentration of pollutants and the values of various bands of Landsat satellite images is examined through 19 regression models. Among them, the Ensembles Bagged Trees has the lowest Root-Mean-Square Error (RMSE), equal to 21.88. Results show that this model can be used to estimate PM2.5 contaminants, based on Landsat satellite images. %U https://jpoll.ut.ac.ir/article_76542_803171f09547a3a5d861551f9feaf0c5.pdf