Abstract:
Land cover (LC) data is a valuable resource
in a wide array of remote sensing applications to monitor
dynamic changes on Earth's surface. A series of accurate land
cover maps play a crucial role in capturing extreme hazard
events. There are multiple remotely sensed LC products
available today, yet the absence of a common classification
system hinders their ability to use for hydrological applications.
In this study, a common classification system was developed for
WaPOR and MD12Q1 data sets by using LANDSAT 8 satellite
images. The classification scheme consisting of five land cover
classes was then employed by logical sequence to extract land
cover information of the Malwatu Oya River Basin. Among
several indices tested, the Normalized Difference Water Index
(NDWI) was selected as a suitable index for identifying water
areas, which achieved an accuracy of 85%. Additionally, a
combination of the Normalized Difference Vegetation Index
(NDVI) and the slope found water areas with an acceptable
accuracy of over 75%. The NDVI proved to be the most effective
index for capturing forest areas and cropland, with an accuracy
exceeding 80%. Furthermore, the NDVI difference method was
adopted to identify cropland areas. The Modified Normalized
Difference Water Index (MNDWI) was identified as a
moderately suitable index for delineating built-up areas. The
developed land cover map provided a datum for assessing
temporal changes in watershed LC and the proposed
methodology can be used for integrating remote sensing
technology for water resource management in other river
basins.
Citation:
A. Uthpala, L. Gunawardhana and L. Rajapakse, "Development of a Land Cover Reclassification Scheme for Malwatu Oya Basin in Sri Lanka," 2023 Moratuwa Engineering Research Conference (MERCon), Moratuwa, Sri Lanka, 2023, pp. 171-176, doi: 10.1109/MERCon60487.2023.10355517.