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http://dx.doi.org/10.11108/kagis.2022.25.2.001

Analysis of PM2.5 Pattern Considering Land Use Types and Meteorological Factors - Focused on Changwon National Industrial Complex -  

SONG, Bong-Geun (Institute of Industrial Technology, Changwon National University)
PARK, Kyung-Hun (School of Civil, Environmental and Chemical Engineering, Changwon National University)
Publication Information
Journal of the Korean Association of Geographic Information Studies / v.25, no.2, 2022 , pp. 1-17 More about this Journal
Abstract
This study analyzed the PM2.5 pattern by using data measured for one year from June 2020 to May 2021 by 21 low-cost sensors installed near the Changwon National Industrial Complex in Changwon, Gyeongsangnam-do. For the PM2.5 pattern, the land use types around the measuring points and meteorological factors such as air temperature and wind speed were considered. The PM2.5 concentration was high from November to March in winter, and from 1 to 9 in the morning and early in the morning by time zone. The concentration of PM2.5 was higher as it got closer to the industrial area, but the concentration was lower in the residential area and public facility area. In terms of meteorological factors, the higher the air temperature and wind speed, the lower the concentration of PM2.5. As a result of this study, it was possible to identify the PM2.5 patter near Changwon National Industrial Complex. This result will be useful data that can be used in urban and environmental planning to improve air quality including PM2.5 in urban area in the future.
Keywords
Ultra fine dust; GIS; Land use; Inverse distance weighted; Low-cost sensor;
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