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Exploring relation of land surface temperature with selected variables using geographically weighted regression and ordinary least square methods in Manipur State,India
Authors:Dheera Kalota
Affiliation:Department of Geography, Lovely Professional University, Phagwara, India
Abstract:In the present study, relationship between Land surface temperature and selected indices, vegetation index (VARI), built-up index (BUI) and elevation (DEM) is investigated. Ordinary least square method and geographically weighted regression are used to analyse the spatial correlation between the indices with surface temperature. Subsequently, temporal trends (2001–2015) in surface temperature and vegetation are explored after every two years of interval. LANDSAT image and ASTER DEM are used to extract LST and additional indices. The selected variables (Built-up, vegetation and topography) explain 69% of the variation in surface temperature. The OLS and GWR revealed that topography and vegetation are the significant factor of LST in Manipur State. Topography being a constant parameter, its effect is constant over time. The changing scenario of vegetation is significantly contributing to LST. The surface temperature over a period of 15 years show increasing trend and is negatively and strongly correlated to vegetation cover.
Keywords:Surface temperature  geographically weighted regression  ordinary least square  geographic information system  environmental geography
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