Abstract:
Basin hydrological characteristics including
terrain, land use, soil interpretations, etc., are crucial in
identifying catchment responses. A digital elevation model
(DEM) with reasonable accuracy should be used in the initial
stage of hydrologic applications. There are different sources and
platforms which offer different resolution DEMs with different
accuracy levels. Several parameters decide the DEM quality.
Identification of each of these parameters with defined accuracy
levels which represent their suitability for distinct studies is
crucial for developing applications and mitigation measures.
This study focuses on addressing the requirement of a tailormade
methodology to assess DEM accuracy levels in tandem
with associated applications to ensure their optimum
performance. For this study, open source SRTM and ASTER
DEMs, TOPO maps of 1:50,000, 1:10,000 resolutions, and
LiDAR data were used focusing on the upstream 50 km2 subcatchment
in Kelani River Basin in Sri Lanka. Accuracy
assessments were completed under two different approaches by
comparison and correlation of spot elevation points and profiles
examined for different geographic directions. As a conclusion
for the profile-based observation, it was identified that the
accuracy levels are high in the DEMs produced based on the
high-resolution LiDAR and satellite images in the study area.
An algorithm was developed to ensure improved hydrologic
performance based on critical parameters according to the
accuracy levels that exist in different DEMs and platforms.
Further development of the methodology can ensure the use of
even relatively low-resolution DEMs with appropriate
corrections according to the relevant critical parameters or
applications to achieve improved accuracy levels.
Citation:
G. Kaluarachchi and L. Rajapakse, "Improving the Accuracy of Low Resolution Digital Elevation Models (DEM) for Enhanced Performance in Hydrological Modelling," 2023 Moratuwa Engineering Research Conference (MERCon), Moratuwa, Sri Lanka, 2023, pp. 742-747, doi: 10.1109/MERCon60487.2023.10355488.