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http://dx.doi.org/10.7780/kjrs.2021.37.6.3.6

Prediction of Land Surface Temperature by Land Cover Type in Urban Area  

Kim, Geunhan (Korea Environment Institute)
Publication Information
Korean Journal of Remote Sensing / v.37, no.6_3, 2021 , pp. 1975-1984 More about this Journal
Abstract
Urban expansion results in raising the temperature in the city, which can cause social, economic and physical damage. In order to prevent the urban heat island and reduce the urban land surface temperature, it is important to quantify the cooling effect of the features of the urban space. Therefore, in order to understand the relationship between each object of land cover and the land surface temperature in Seoul, the land cover map was classified into 6 classes. And the correlation and multiple regression analysis between land surface temperature and the area of objects, perimeter/area, and normalized difference vegetation index was analyzed. As a result of the analysis, the normalized difference vegetation index showed a high correlation with the land surface temperature. Also, in multiple regression analysis, the normalized difference vegetation index exerted a higher influence on the land surface temperature prediction than other coefficients. However, the explanatory power of the derived models as a result of multiple regression analysis was low. In the future, if continuous monitoring is performed using high-resolution MIR Image from KOMPSAT-3A, it will be possible to improve the explanatory power of the model. By utilizing the relationship between such various land cover types considering vegetation vitality of green areas with that of land surface temperature within urban spaces for urban planning, it is expected to contribute in reducing the land surface temperature in urban spaces.
Keywords
Land Surface Temperature; Land Cover Map; Normalized Difference Vegetation Index; KOMPSAT;
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