Submitted:
17 July 2025
Posted:
21 July 2025
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Abstract

Keywords:
1. Introduction
| Author | References | DEM Res. | Study Area | Key Findings |
|---|---|---|---|---|
| Teegavarapu et al., 2006 | [17] | 10m and 90m | Kentucky River, USA | Finer DEM improved watershed delineation and pollutant-load estimates; coarse grid overstated loads. |
| Wu et al., 2007 | [18] | 30m to 3000 m | Goodwin & Peacheater Creeks, USA | Grid size governs topographic index; coarser DEM smooths terrain, degrading slope and contributing-area estimates. |
| Dixon & Earls, 2009 | [19] | 30 m, 90 m | Charlie Creek, Florida | SWAT hydrographs differed between native and resampled DEMs; resolution change alters predicted flows. |
| Charrier & Li, 2012 | [20] | 1m to 30 m | Camp Creek, Missouri | Resampled 3–5 m LiDAR matched10m DEM; 1 m over-sensitive; coarser USGS DEMs added uncertainty. |
| Zhang et al., 2014 | [21] | 30m to 1000m | Xiangxi River, China | Nutrient and flow outputs highly resolution-sensitive; coarse grids under-predicted transport. |
| Reddy & Reddy, 2015 | [22] | 20m to 1000m | Kaddam, India | Sediment yields more sensitive than runoff; Finer DEM gave best accuracy-effort balance. |
| Tan et al., 2015 | [23] | 20m to 1500m | Johor River, Malaysia | DEM resolution outweighed source influence; coarse cells under-estimated streamflow. |
| Buakhao & Kangrang, 2016 | [24] | 5m to 90m | Chiang Mai, Thailand | Stream length/slope resolution-sensitive; watershed area less so; ASTER DEM accurate. |
| Hamel et al., 2017 | [25] | 10m to 180m | USA, HI, PR, Kenya, Spain | Finer DEMs refined sediment-delivery ratios across diverse terrains. |
| Nagaveni et al., 2019 | [26] | 12m to 90m | Krishna basin, India | Coarse DEMs lost terrain detail and increased runoff error; resolution most influential |
| Roostaee & Deng, 2020 | [27] | 3.5m to 100m | OR, IA, LA (USA) | Flat basins are very sensitive to resolution; drainage area shrinks with coarse DEMs; steep basins little impact. |
| Al-Khafaji et al., 2020 | [28] | 30m to 1000m | Iraqi Watersheds | Higher resolution increased HRU count but did not always improve flow simulation in flat areas. |
| Fan et al., 2021 | [29] | 12.5 m to 1000 m | Northeast China | Runoff depth fell as cell size grew; land-use resolution sometimes dominated influence. No difference for DEM ≤ 100 m. |
| Datta et al., 2022 | [30] | 30m to 225m | Bangladeshi Watersheds | Coarse DEMs inflated areas with less perimeter & shortened streams. |
| Roostaee & Deng, 2023 | [31] | 30m and 100m | IA, LA (USA) | DEM source caused more uncertainty in simulations than resolution; sediment most affected, nitrate least. |
| Choudhary et al., 2025 | [32] | 12.5m to 30m | Rajasthan, India | ALOS PALSAR 12.5 m gave the best flow-path and catchment delineation; DEM choice decisive. |
| Avila-Ruiz et al., 2025 | [33] | 0.13m and 5m | Mexicali, Mexico | Finer DEM greatly improved urban drainage modelling over coarser DEM. |
| Muthusamy et al., 2021 | [34] | 1m to 50m | Cumbria, UK | Coarser DEM inflates flood extent/depth; Hybrid DEM improves accuracy. |
| de Almeida et al., 2018 | [35] | 10cm | Warwickshire, UK | Decimetric terrain changes shifted flood extent, depth, timing; high res needed but computationally heavy. |
| Aristizábal, 2023 | [36] | 3m to 90m | Neuse River, NC | Accuracy declined sharply beyond 60 m; mid-res (~30 m) balanced runtime and reliability. |
| Savage et al., 2016 | [37] | 10m to 50m | Imera basin, Sicily | Resolution chiefly affected local water depth/timing; gains diminished below 10 m. |
| Hsu et al., 2016 | [38] | 1m to 50m | Sanyei, Taiwan | Coarse grids over-predicted inundation by up to 150 %; high res captured bottlenecks. |
| Ozdemir et al., 2013 | [39] | 10cm to 1m | Alcester, UK | 0.10 m DEM captured kerbs/ramps vital for pluvial flows; friction less influential than resolution. |
| Xu et al., 2021 | [40] | 30m and 90m | Yangtze River Delta, China |
High-res DEM improved flow paths and depression mapping in flat terrain, enhancing pluvial models. |
2. Mathematical Framework
2.1. Exploratory Data Analysis
2.2. Terrain Based Comparisions
2.3. Topological Comparisons
2.4. Flood Susceptibility Ranking Comparisons
2.5. Pluvial Flood Characterization
2.6. Flood-Event Modeling Comparison
2.7. Sediment Yield Modeling Comparison
3. Illustrative Case Study
3.1. Data Compilation and Processing
4. Results and Discussion
4.1. Exploratory Data Analysis
4.2. Terrain Based Assessment
4.3. Topological Comparisons
4.4. Role of DEM in Flood Susceptibility Mapping
4.5. Rainfall-Runoff Modeling Applications
4.6. DEM Impacts on Sediment Yield Computations
4.7. Role of DEMs in Pluvial Flooding Characterization
5. Summary and Conclusions
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| DEM | Digital Elevation Model |
| MCDM | Multi Criteria Decision Making |
| TOPSIS | Technique for Order Preference by Similarity to Ideal Solution |
| LiDAR | Light Detection and Ranging |
| NPS | Non-Point Source |
| WBC | Watershed Boundary Concordance |
| SCS-CN | Soil Conservation Service-Curve Number |
| RUSLE | Revised Universal Soil Loss Equation |
| USGS | United States Geological Survey |
| NHD | National Hydrography Dataset |
| SRTM | Shuttle Radar Topography Mission |
| ASTER | Advanced Spaceborne Thermal Emission and Reflection Radiometer |
| SWAT | Soil and Water Assessment Tool |
| HEC-HMS | Hydrologic Engineering Center - Hydrologic Modeling System |
| FEMA | Federal Emergency Management Agency |
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| Parameter | Formula | Significance |
|---|---|---|
| Slope | Indicates steepness; affects runoff and erosion potential | |
| Flow Accumulation | Represents number of upslope cells contributing flow to a location | |
| Upslope Contribution Area | Estimates drainage area affecting moisture and runoff | |
| Topographic Wetness Index | Predicts potential soil moisture; higher values indicate wetter areas [41] |
| Metric | Equation | Description & Utility |
|---|---|---|
| Watershed Boundary Concordance (WBC) | Measures the overall overlap between two watershed polygons. Values closer to 1 indicate high similarity. | |
| Convex Hull Containment (A ∈ B) | Quantifies how much of A’s convex hull is contained in B’s, indicating broader shape agreement. | |
| Convex Hull Containment (B ∈ A) | Same as above but in reverse; provides symmetry in evaluation. | |
| Maximum Span Distance | Identifies the maximum distance between boundary points; reflects overall spatial spread. | |
| Hausdorff Distance | Measures the largest boundary deviation; sensitive to outliers and worst-case mismatch. | |
| Centroid Distance | Represents the Euclidean distance between polygon centroids; useful for detecting positional shifts. | |
| Centroid Angle (θ) | Indicates the directional offset between watershed centroids, measured from the horizontal axis. |
| Symbol | Description | Equation | |
|---|---|---|---|
| Linear Metrics | Li | Stream Length | |
| Nu | Stream Number | ||
| I | Basin Integral Length | ||
| Br | Weighted Mean Bifurcation Ratio | Supplementary Materials S1 | |
| Aeral Metrics | A | Area | |
| Cc | Compactness Index | ||
| Dd | Drainage Density | ||
| E | Basin Elongation | ||
| Ff | Form Factor | ||
| Fs | Stream Frequency | ||
| P | Perimeter | ||
| Rc | Circularity Ratio | ||
| T | Drainage Texture | ||
| Relief Metrics | Elevation Differential | ||
| Rn | Ruggedness Number | ||
| Rr | Relief Ratio | ||
| % Slope | Basin slope |
| Gauge Station ID | Station Name | Latitude | Longitude | Listed Drainage Area (sqkm) |
|---|---|---|---|---|
| USGS08041500 | Village Creek nr Kountze, TX | 30.40 | -94.26 | 2228.48 |
| USGS08068780 | Little Cypress Creek nr Cypress, TX | 30.02 | -95.70 | 114.07 |
| USGS08164300 | Navidad River nr Hallettsville, TX | 29.47 | -96.81 | 861.54 |
| USGS08163500 | Lavaca River at Hallettsville, Tx | 29.44 | -96.94 | 264.29 |
| USGS08189500 | Mission River at Refugio, TX | 28.29 | -97.28 | 1808.29 |
| USGS08212400 | Los Olmos Creek nr Falfurrias, Tx | 27.26 | -98.14 | 1236.47 |
| Resolution | Dataset | Source | Coverage | Collection Period |
|---|---|---|---|---|
| 1m | Neches River Basin Lidar | USGS/FEMA/Quantum Spatial and Dewberry | Neches River Basin (East Texas) | March 3-5, 2016 |
| South Central Texas Lidar | USGS/FEMA /Dewberry | Texas Counties (Atascosa, Frio, Live Oak, Gillespie, Kimble, Kerr) | Jan 4-28, 2018 | |
| Hurricane Lidar | USGS/FEMA/Furgo | 45 Texas Counties (Central to Coastal) | Jan 14 – Feb 20, 2019 | |
| South Texas Lidar | USGS/FEMA/Quantum Spatial | 30 counties in South Texas | Jan 13 – Feb 23, 2018 | |
| 1/3 Arc Sec (~10m) | 3DEP National Map Seamless | USGS | United States | June 2000 – Dec 2011 |
| 1 Arc Sec (~30m) | Shuttle Radar Topography Mission (SRTM) | NASA/NGA | Global | Feb 11–22, 2000 |
| ASTER GDEM V3 | NASA /JAXA | Global (3 arc sec) USA (1 arc sec) |
1999 – 2013 |
| Resolution | RMSE | NSE | PCC | PBIAS | R2 | ME | STD | KGE |
|---|---|---|---|---|---|---|---|---|
| 1m | 1.21 | 0.99 | >0.99 | -0.37 | >0.99 | -0.24 | 1.13 | 0.99 |
| 5m | 1.21 | 0.99 | >0.99 | -0.37 | >0.99 | -0.24 | 1.13 | 0.99 |
| 15m | 0.49 | >0.99 | >0.99 | <0.01 | >0.99 | >-0.01 | 0.49 | >0.99 |
| 30m ASTER | 6.65 | 0.79 | 0.94 | 2.10 | 0.89 | 1.23 | 5.94 | 0.88 |
| 30m SRTM | 4.67 | 0.94 | 0.98 | 4.32 | 0.97 | 3.50 | 2.95 | 0.94 |
| Watershed-Resolution | Sink Depth (m) | Area (m2) | Volume (m3) | |||||
|---|---|---|---|---|---|---|---|---|
| Min | Max | Mean | Median | SD | ||||
| USGS08041500 | 1m | 1.00 | 8.00 | 1.06 | 1.00 | 0.29 | 3.62E+07 | 3.83E+07 |
| 5m | 1.00 | 8.00 | 1.06 | 1.00 | 0.30 | 3.41E+07 | 3.62E+07 | |
| 10m | 1.00 | 4.00 | 1.09 | 1.00 | 0.30 | 2.90E+06 | 3.17E+06 | |
| 15m | 1.00 | 4.00 | 1.07 | 1.00 | 0.27 | 3.82E+06 | 4.09E+06 | |
| ASTER | 1.00 | 51.00 | 4.09 | 3.00 | 3.40 | 7.30E+08 | 2.99E+09 | |
| SRTM | 1.00 | 19.00 | 2.79 | 2.00 | 2.11 | 5.42E+08 | 1.51E+09 | |
| USGS08068780 | 1m | 1.00 | 11.00 | 1.59 | 1.00 | 1.37 | 5.05E+06 | 8.03E+06 |
| 5m | 1.00 | 11.00 | 1.58 | 1.00 | 1.22 | 4.50E+06 | 7.11E+06 | |
| 10m | 1.00 | 4.00 | 1.28 | 1.00 | 0.58 | 1.80E+06 | 2.30E+06 | |
| 15m | 1.00 | 4.00 | 1.28 | 1.00 | 0.58 | 1.85E+06 | 2.37E+06 | |
| ASTER | 1.00 | 20.00 | 2.99 | 2.00 | 2.16 | 3.06E+07 | 9.14E+07 | |
| SRTM | 1.00 | 11.00 | 1.74 | 1.00 | 1.03 | 2.32E+07 | 4.04E+07 | |
| USGS08164300 | 1m | 1.00 | 8.00 | 1.20 | 1.00 | 0.55 | 1.03E+07 | 1.24E+07 |
| 5m | 1.00 | 8.00 | 1.19 | 1.00 | 0.55 | 9.95E+06 | 1.19E+07 | |
| 10m | 1.00 | 138.00 | 3.21 | 1.00 | 14.23 | 2.15E+06 | 6.90E+06 | |
| 15m | 1.00 | 138.00 | 2.72 | 1.00 | 12.45 | 2.98E+06 | 8.12E+06 | |
| ASTER | 1.00 | 33.00 | 3.81 | 3.00 | 2.99 | 2.81E+08 | 1.07E+09 | |
| SRTM | 1.00 | 13.00 | 2.16 | 2.00 | 1.59 | 1.44E+08 | 3.11E+08 | |
| USGS08163500 | 1m | 1.00 | 5.00 | 1.13 | 1.00 | 0.40 | 3.25E+06 | 3.68E+06 |
| 5m | 1.00 | 5.00 | 1.14 | 1.00 | 0.41 | 2.98E+06 | 3.39E+06 | |
| 10m | 1.00 | 121.00 | 4.69 | 1.00 | 17.84 | 5.93E+05 | 2.78E+06 | |
| 15m | 1.00 | 121.00 | 3.49 | 1.00 | 14.73 | 9.22E+05 | 3.22E+06 | |
| ASTER | 1.00 | 25.00 | 3.58 | 3.00 | 2.71 | 8.21E+07 | 2.94E+08 | |
| SRTM | 1.00 | 10.00 | 1.57 | 1.00 | 0.91 | 3.40E+07 | 5.36E+07 | |
| USGS08189500 | 1m | 1.00 | 13.00 | 1.24 | 1.00 | 0.77 | 1.80E+07 | 2.23E+07 |
| 5m | 1.00 | 13.00 | 1.22 | 1.00 | 0.76 | 1.76E+07 | 2.15E+07 | |
| 10m | 0.10 | 5.80 | 0.52 | 0.30 | 0.60 | 1.06E+07 | 5.53E+06 | |
| 15m | 0.10 | 5.80 | 0.56 | 0.30 | 0.61 | 1.40E+07 | 7.76E+06 | |
| ASTER | 1.00 | 40.00 | 3.06 | 2.00 | 2.39 | 4.80E+08 | 1.47E+09 | |
| SRTM | 1.00 | 20.00 | 1.61 | 1.00 | 0.94 | 3.31E+08 | 5.33E+08 | |
| USGS08212400 | 1m | 1.00 | 9.00 | 1.46 | 1.00 | 0.84 | 2.35E+07 | 3.43E+07 |
| 5m | 1.00 | 9.00 | 1.46 | 1.00 | 0.87 | 2.14E+07 | 3.12E+07 | |
| 10m | 0.10 | 6.30 | 0.83 | 0.50 | 0.87 | 1.82E+07 | 1.50E+07 | |
| 15m | 0.10 | 6.40 | 0.81 | 0.50 | 0.86 | 2.00E+07 | 1.63E+07 | |
| ASTER | 1.00 | 51.00 | 4.23 | 3.00 | 3.87 | 3.35E+08 | 1.42E+09 | |
| SRTM | 1.00 | 17.00 | 1.56 | 1.00 | 0.92 | 1.81E+08 | 2.83E+08 | |
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