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Chul Hee Lim

Researcher at Korea University

Publications -  67
Citations -  1142

Chul Hee Lim is an academic researcher from Korea University. The author has contributed to research in topics: Climate change & Vegetation. The author has an hindex of 14, co-authored 59 publications receiving 636 citations. Previous affiliations of Chul Hee Lim include Chapman University & George Mason University.

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Assessment of land cover change and desertification using remote sensing technology in a local region of Mongolia

TL;DR: In this article, the authors used Decision Tree (DT) approach to assess the land cover change and desertification of the Hogno Khaan protected area in 1990, 2002, and 2011.
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Long-term trend and correlation between vegetation greenness and climate variables in Asia based on satellite data.

TL;DR: The temperature was found to be the main driver of the changing vegetation greenness in Kazakhstan, northern Mongolia, Northeast and Central China, North Korea, South Korea, and northern Japan, showing an indirect relationship with climate variables.
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Understanding global PM2.5 concentrations and their drivers in recent decades (1998-2016)

TL;DR: Global risk regions of PM2.5 concentrations during 1998-2016 were spatiotemporally derived and a "decoupling" phenomenon occurred in developed countries, where urban expansion continued while PM2 .5 concentrations decreased, whereas developing countries increased PM 2.5 with decreasing greenness significantly in High Risk regions.
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Multi-Temporal Analysis of Forest Fire Probability Using Socio-Economic and Environmental Variables

TL;DR: The analysis revealed that the spatial distribution of forest fire probability was concentrated in or around cities, and the probability had a strong correlation with variables related to human activity and accessibility over the decades.
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Hyperspectral Analysis of Pine Wilt Disease to Determine an Optimal Detection Index

TL;DR: The hyperspectral analysis of pine wilt disease to determine the optimal detection indices for measuring changes in the spectral reflectance characteristics and leaf reflectance in the Pinus thunbergii forest on Geoje Island, South Korea found the green-red spectral area index (GRSAI) showed less variability than the other indices used.