Land Use Land Cover Mapping in Dhamangaon Railway, MH with the help of GIS Software and Remote Sensing
DOI:
https://doi.org/10.32628/IJSRST2310190Keywords:
Land Use Land Cover, Remote Sensing, Source of EnergyAbstract
Mapping land use land cover changes at regional scales is essential for a wide range of application, including, landslide, erosion, land planning, global warming etc. The aim of the project is to develop an action plan for land use cover mapping is the process of creating and implementing plans. To maintain the present natural resources and to understand to causes and consequences of over exploitation of soil and water resources the land use, a land cover mapping and monitoring was done in the study area i.e., Dhamanagaon railway. In this study satellite image for January 2015 and February 2019were used for LULC (land use land cover) supervised classification. For the classification purposes, seven LULC classes were decided change detection between both the image for al the land use and land cover classed were computer.
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