Submitted:
13 August 2025
Posted:
15 August 2025
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Abstract

Keywords:
1. Introduction
- Quantifying coastal inundation areas under +1, +2, and +3 m SLR using static bathub-style flood maps derived from Google Earth’s Firetree;
- Evaluating the sensitivity of inundation estimates by testing image resolution and pixel-alignment effects;
- Applying a geometric Geomorphological Coastal Flooding Index (GCFI) based on normalized width, length, and flooded area indicators, developed to classify inundated zones by shape, inland penetration, and surface impact.
2. Materials and Methods
2.1. Inundation Mapping and Image Acquisition
2.2. Image Processing and Flooded Area Calculation
2.3. Sensitivity Analysis and Error Estimation
2.4. Geomorphological Coastal Flooding Index
2.5. Study Sites
2.6. Data and Code Availability
3. Results
3.1. Flooded Area Estimation Under SLR Scenarios
3.2. Sensitivity to Spatial Resolution
- Under +1 m SLR, the flooded area was 528.72 km² using the 500 m map, compared to 562.08 km² with the 2 km map, representing a relative overestimation of 6.3%.
- Under +2 m SLR, the respective values were 713.31 km² and 736.32 km², corresponding to a difference of 3.2%.
- Under +3 m SLR, the overestimation reached 3.1%, with areas of 846.76 km² (500 m) and 873.15 km² (2 km).
3.3. Uncertainty Estimation from Image Tolerance
3.4. Geomorphological Coastal Flooding Index
3.5. Comparative Ranking of Study Sites
3.5.1. Link Between SLR and Flooded Area
3.5.2. GCFI Calculation
4. Discussion
5. Conclusions
- The heterogeneity of vulnerability along the Catalonia and Valencia coastlines, identifying deltas and lagoons as priority areas due to their large low-lying surfaces and rapid inundation progression where the first meter of SLR accounts for the majority of territorial loss, reinforcing the need for early adaptation strategies focused below this threshold;
- The use of high-resolution imagery demonstrated that detailed flooding patterns and geomorphological features can be effectively captured without the need for intensive computational resources;
- Resolution and image tolerance significantly affect inundation estimates, suggesting that methodological consistency is essential for comparative studies and long-term monitoring;
- The shape and extent of the inundated areas provide meaningful information beyond surface area alone, particularly in identifying potential bottlenecks for emergency response or critical ecosystem exposure.
- The proposed GCFI offers a cost-effective tool for vulnerability screening, particularly in regions lacking high-resolution dynamic models or detailed socioeconomic datasets.
- The method is particularly suitable for preliminary coastal risk assessments and can support regional adaptation planning, land use zoning, and awareness-building initiatives. Future work should explore the integration of dynamic flood models, land use data, and economic impact layers to enhance the operational relevance of this approach.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| SLR | Sea Level Rise |
| DEM | Digital Elevation Model |
| GCFI | Geomorphic Coastal Flooding Index |
| CVI | Coastal Vulnerability Indices |
| IPCC | Intergovernmental Panel on Climate Change |
| RCP | Representative Concentration Pathways |
| NASA's SRTM | National Aeronautics and Space Administration's Shuttle Radar Topography Mission |
| BMP | BitMaP |
| LiDAR | Light Detection And Ranging |
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| Measurement map | Scale [cm map/cm real] | Scale | Comparation [km /px] | Pixels [1km2] |
|---|---|---|---|---|
| 200 m | 1.3 cm = 200 cm | 1: 15384.62 | 200 m = 49.25 px | 60639.06 |
| 500 m | 1.7 cm = 500 cm | 1: 29411.76 | 500 m = 49.25 px | 15376 |
| 1 km | 1.7 cm = 1 km | 1: 58823.53 | 1 km = 49.25 px | 3844 |
| 2 km | 1.7 cm = 2 km | 1: 117647.06 | 2 km = 62px | 961 |
| Site | SLR | Flooding (km2) |
|---|---|---|
| L'Estartit | +1 m | 12.427 |
| +2 m | 22.786 | |
| +3 m | 31.805 | |
| Tordera Delta | +1 m | 0.396 |
| +2 m | 1.378 | |
| +3 m | 2.633 | |
| Llobregat Delta | +1 m | 9.722 |
| +2 m | 21.649 | |
| +3 m | 33.891 | |
| Tarragona | +1 m | 3.052 |
| +2 m | 5.349 | |
| +3 m | 7.874 | |
| Ebro Delta | +1 m | 277.167 |
| +2 m | 295.753 | |
| +3 m | 304.544 | |
| Prat de Cabanes-Torreblanca | +1 m | 10.274 |
| +2 m | 12.19 | |
| +3 m | 13.727 | |
| Castellón de la Plana | +1 m | 21.473 |
| +2 m | 37.018 | |
| +3 m | 50.075 | |
| Sagunto | +1 m | 27.7 |
| +2 m | 45.576 | |
| +3 m | 62.136 | |
| Albufera de Valencia | +1 m | 156.805 |
| +2 m | 183.952 | |
| +3 m | 206.301 |
| Map | Tolerance | Level of inundation [m] | Pixels [px] | Affected km2 | Percentage increase in flooding [%] | |
|---|---|---|---|---|---|---|
| 500 m | 0 | +1 m | 8129618 | 528.721 | 21.947 | |
| +2 m | 9913835 | 644.760 | ||||
| 15.251 | ||||||
| +3 m | 11425777 | 743,092 | ||||
| 5 | +1 m | 8127125 | 528,559 | 21,948 | ||
| +2 m | 9910852 | 644,566 | ||||
| 15.253 | ||||||
| +3 m | 11422532 | 742,881 | ||||
| 2 km | 0 | +1 m | 540157 | 562,078 | 20.990 | |
| +2 m | 653534 | 680.056 | ||||
| 14.711 | ||||||
| +3 m | 749676 | 780.100 | ||||
| 5 | +1 m | 539967 | 561.880 | 20.992 | ||
| +2 m | 653319 | 679.832 | ||||
| 14.713 | ||||||
| +3 m | 749442 | 779.856 |
| Scale | Inundation level [m] | Affected km2 | Percentage of error with respect to 200 m map [%] |
|---|---|---|---|
| 200 m resolution | 1 | 1.362 | - |
| 2 | 2.519 | - | |
| 3 | 3.672 | - | |
| 500 m resolution | 1 | 1.354 | 0.59 |
| 2 | 2.487 | 1.27 | |
| 3 | 3.624 | 1.31 | |
| 1 km resolution | 1 | 1.335 | 1.98 |
| 2 | 2.431 | 3.49 | |
| 3 | 3.569 | 2.81 | |
| 2 km resolution | 1 | 1.288 | 5.43 |
| 2 | 2.373 | 5.80 | |
| 3 | 3.513 | 4.33 |
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