Science Inventory

Delineating wetland catchments and modeling hydrologic connectivity using lidar data and aerial imagery

Citation:

Wu, Q. AND C. Lane. Delineating wetland catchments and modeling hydrologic connectivity using lidar data and aerial imagery. HYDROLOGY AND EARTH SYSTEM SCIENCES. EGS, 21(7):3579-3595, (2017). https://doi.org/10.5194/hess-21-3579-2017

Impact/Purpose:

Analysis of landscape using LIDAR to delineate wetland depressions.

Description:

In traditional watershed delineation and topographic modeling, surface depressions are generally treated as spurious features and simply removed from a digital elevation model (DEM) to enforce flow continuity of water across the topographic surface to the watershed outlets. In reality, however, many depressions in the DEM are actual wetland landscape features with seasonal to permanent inundation patterning characterized by nested hierarchical structures and dynamic filling–spilling–merging surface-water hydrological processes. Differentiating and appropriately processing such ecohydrologically meaningful features remains a major technical terrain-processing challenge, particularly as high-resolution spatial data are increasingly used to support modeling and geographic analysis needs. The objectives of this study were to delineate hierarchical wetland catchments and model their hydrologic connectivity using high-resolution lidar data and aerial imagery. The graph-theory-based contour tree method was used to delineate the hierarchical wetland catchments and characterize their geometric and topological properties. Potential hydrologic connectivity between wetlands and streams were simulated using the least-cost-path algorithm. The resulting flow network delineated potential flow paths connecting wetland depressions to each other or to the river network on scales finer than those available through the National Hydrography Dataset. The results demonstrated that our proposed framework is promising for improving overland flow simulation and hydrologic connectivity analysis.

Record Details:

Record Type:DOCUMENT( JOURNAL/ PEER REVIEWED JOURNAL)
Product Published Date:07/14/2017
Record Last Revised:06/11/2021
OMB Category:Other
Record ID: 336986