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Water resources research, 2018-07, Vol.54 (7), p.4965-4982
2018
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Details

Autor(en) / Beteiligte
Titel
DEM Resolution Effects on Coastal Flood Vulnerability Assessment: Deterministic and Probabilistic Approach
Ist Teil von
  • Water resources research, 2018-07, Vol.54 (7), p.4965-4982
Ort / Verlag
Washington: John Wiley & Sons, Inc
Erscheinungsjahr
2018
Quelle
Wiley Blackwell Single Titles
Beschreibungen/Notizen
  • Flood modeling is highly influenced by topography data set. Lower resolution digital elevation models (DEMs) are usually used because of their availability and less computational burden when they are used in modeling applications. However, low accuracy of these DEMs yields to even lower accuracy in flood risk analysis through spatial modeling. This study aims to explore the DEM resolution effects on coastal flood risk assessments. For this purpose, deterministic and probabilistic approaches are employed for flood inundation modeling utilizing hydrologically connected bathtub method. High‐resolution light detection and ranging (LiDAR) DEM is considered as the most accurate data from which different resolution maps are obtained using resampling techniques. This is incorporated into an error analysis framework along with U.S. Geological Survey (USGS) National Elevation Dataset (NED) DEMs. The probabilistic framework is developed by simulating the spatial variability of elevation errors compared to LiDAR DEM through a Monte Carlo‐based method called sequential Gaussian simulation. The proposed methodology is applied to the lower Manhattan in New York City. By integrating the flood model into the developed framework, flood inundation probability at each grid cells is obtained. Furthermore, using the concept of accuracy‐efficiency tradeoffs, a framework for selecting a suitable spatial resolution for probabilistic flood risk assessment has been suggested. The results show that by exercising a range of options presented in this paper, a broader insight into mapping resolution can be provided, improving flood assessment, evacuation zones, and mitigation plans depending upon the data availability in a region. Key Points A probabilistic framework is developed to assess coastal flood risk by incorporating DEM uncertainty using a sequential Gaussian simulation for DEMs of different resolutions Accuracy‐efficiency tradeoff is obtained to select a suitable DEM resolution for flood modeling purposes The significance of probabilistic approach when using low‐resolution DEMs is demonstrated

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