Mapping of Groundwater, Flood, and Drought Potential Zones in Neom, Saudi Arabia, Using GIS and Remote Sensing Techniques
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Geology of the Study Area
2.3. Topography and Hydrology
2.4. Methodology
3. Results
3.1. Drainage Density
3.2. Lineament Density
3.3. Elevation
3.4. Slope
3.5. Land Use and Land Cover
3.6. Lithology
3.7. Annual Precipitation
3.8. Soil Type
3.9. Determination of Groundwater, Flood, and Drought Zones
3.9.1. Groundwater Potential Zoning
3.9.2. Flood Potential Zoning
3.9.3. Drought Potential Zoning
4. Conclusions
Funding
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Layer | Influence (%) | Parameter | Scale |
---|---|---|---|
Drainage density (km2) | 20 | 0–0.77 | 1 |
0.78–1.24 | 2 | ||
1.25–1.68 | 3 | ||
1.69–2.22 | 4 | ||
2.23–4.38 | 5 | ||
Lineament density (km2) | 5 | 0–0.05 | 1 |
0.06–0.12 | 2 | ||
0.13–0.2 | 3 | ||
0.21–0.36 | 4 | ||
0.37–0.73 | 5 | ||
Precipitation (mm) | 15 | 51–74 | 1 |
75–93 | 2 | ||
94–107 | 3 | ||
108–123 | 4 | ||
124–150 | 5 | ||
Elevation (m) | 15 | −20 to 338 | 5 |
339–699 | 4 | ||
700–1007 | 3 | ||
1008–1296 | 2 | ||
1297–2530 | 1 | ||
Lithology | 20 | Quaternary | 4 |
Tertiary | 3 | ||
Ordovician | 2 | ||
Cambrian | 1 | ||
Slope (°) | 10 | 0–6 | 5 |
7–14 | 4 | ||
15–24 | 3 | ||
25–35 | 2 | ||
36–78 | 1 | ||
Soil | 5 | Clay | 1 |
Loam | 2 | ||
Sandy loam | 3 | ||
Land use/land cover | 10 | Residential area | 2 |
Agricultural land | 3 | ||
Barren land | 1 |
Layer | Influence (%) | Parameter | Scale |
---|---|---|---|
Drainage density (km2) | 30 | 0–0.77 | 1 |
0.78–1.24 | 2 | ||
1.25–1.68 | 3 | ||
1.69–2.22 | 4 | ||
2.23–4.38 | 5 | ||
Precipitation (mm) | 20 | 51–74 | 1 |
75–93 | 2 | ||
94–107 | 3 | ||
108–123 | 4 | ||
124–150 | 5 | ||
Elevation (m) | 25 | −20 to 338 | 5 |
339–699 | 4 | ||
700–1007 | 3 | ||
1008–1296 | 2 | ||
1297–2530 | 1 | ||
Slope (°) | 20 | 0–6 | 5 |
7–14 | 4 | ||
15–24 | 3 | ||
25–35 | 2 | ||
36–78 | 1 | ||
Soil | 5 | Clay | 3 |
Loam | 1 | ||
Sandy loam | 2 |
Layer | Influence (%) | Parameter | Scale |
---|---|---|---|
Drainage density (km2) | 45 | 0–0.77 | 5 |
0.78–1.24 | 4 | ||
1.25–1.68 | 3 | ||
1.69–2.22 | 2 | ||
2.23–4.38 | 1 | ||
Precipitation (mm) | 35 | 51–74 | 5 |
75–93 | 4 | ||
94–107 | 3 | ||
108–123 | 2 | ||
124–150 | 1 | ||
Elevation (m) | 20 | −20 to 338 | 5 |
339–699 | 4 | ||
700–1007 | 3 | ||
1008–1296 | 2 | ||
1297–2530 | 1 |
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Alharbi, T. Mapping of Groundwater, Flood, and Drought Potential Zones in Neom, Saudi Arabia, Using GIS and Remote Sensing Techniques. Water 2023, 15, 966. https://doi.org/10.3390/w15050966
Alharbi T. Mapping of Groundwater, Flood, and Drought Potential Zones in Neom, Saudi Arabia, Using GIS and Remote Sensing Techniques. Water. 2023; 15(5):966. https://doi.org/10.3390/w15050966
Chicago/Turabian StyleAlharbi, Talal. 2023. "Mapping of Groundwater, Flood, and Drought Potential Zones in Neom, Saudi Arabia, Using GIS and Remote Sensing Techniques" Water 15, no. 5: 966. https://doi.org/10.3390/w15050966
APA StyleAlharbi, T. (2023). Mapping of Groundwater, Flood, and Drought Potential Zones in Neom, Saudi Arabia, Using GIS and Remote Sensing Techniques. Water, 15(5), 966. https://doi.org/10.3390/w15050966