Dam Site Suitability Mapping and Analysis Using an Integrated GIS and Machine Learning Approach
Abstract
:1. Introduction
- Investigate suitable zones for constructing a dam in Sharjah in the light of managing replenished water resources
- Identify and map related geological, geomorphological and climatological factors and discover their weighted commitment in deciding the most suitable site for dam construction
- Employ ML techniques, AHP and a weighted overlay analysis to prepare a DSSM
- Perform a sensitivity analysis to establish factors that determine the suitable locations for dam construction
- Validate the outcome of the DSSM through already existing dams in Sharjah
2. Study Area
3. Methodology
3.1. Data Used
3.2. Analytical Hierarchal Process
3.2.1. Assigning Weights to the Parameters
3.2.2. Consistency Ratio
3.3. Machine Learning
4. Results and Discussions
- The very high zone is located in the north-eastern part of Sharjah. The properties of the input parameters include a slope at approximately 3%, elevation at 130 m, sand geology, high dune geomorphology, drainage density of 0.21 per km2 and precipitation of approximately 85–90 mm for the categorised region. The neighbouring region of this site has already been used for constructing the Falajalamala Dam (ID 11) which lies within the Umm Al-Quwain Emirate and has a storage capacity of 0.068 million m3.
- The eastern part of Sharjah has been categorised as a highly suitable location because of its satisfactory drainage and geology properties. Conversely, the western part of Sharjah has been categorised as a highly or moderately suitable location for dam construction by the AHP model.
- Three locations were proposed for constructing a dam: Locations A, B and C. Locations A and B have been categorised as very highly suitable regions according to the AHP model. Location C falls under a highly suitable region for dam construction.
- The Shokah dam (ID 7) with a storage capacity of 0.275 million m3 has already been constructed on the first-order stream of the proposed Location A. Thus, given all the factors, the site was proposed at the conjunction of the second- and third-order streams. Location A receives approximately 84 mm of rainfall and has a high dune geomorphology and alluvium geology. Its drainage density is near to 0.34 per km2, and its TDS ranges within 1400–1430 mg/L.
- Location B was proposed at the conjunction of the second- and third-order stream. The Koderah (ID 10) dam has already been constructed in the adjacent stream, so a parallel conjoint point was selected for dam construction. The average rainfall for the proposed location is approximately 85 mm, the drainage density is 0.44 per km2, TDS is 1550 mg/L and elevation is 122 m.
- Location C was proposed at the conjunction of the third- and fourth-order streams which falls into a highly suitable region. The area has an observed rainfall of 82 mm, a drainage of 0.4 per km2, a high dune geomorphology, and sand as the geological structure.
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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References | Study Area | Utilized Factors | Utilized Technique |
---|---|---|---|
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Baban et al. [29] | Langkawi Island, Malaysia | Langkawi Island, Malaysia | weighted overlay analysis |
Thematic Layer | Thematic Layer Weight | Classes | Ranks |
---|---|---|---|
Precipitation | 20% | 74.21–77.56 | 1 |
77.56–79.65 | 2 | ||
79.65–81.89 | 3 | ||
81.89–83.9 | 4 | ||
83.9–85.61 | 5 | ||
85.61–87.25 | 6 | ||
87.25–89.19 | 7 | ||
89.19–92.77 | 8 | ||
Drainage Stream Density | 20% | 0–0.14 | 1 |
0.14–0.23 | 3 | ||
0.23–0.32 | 5 | ||
0.32–0.42 | 7 | ||
0.42–0.58 | 9 | ||
Geomorphology | 15% | Fan deposits | 9 |
High dunes | 7 | ||
Sand | 6 | ||
Low dunes | 5 | ||
Vegetation | 4 | ||
Mountains | 2 | ||
Urban | 1 | ||
Geology | 10% | Alluvium | 9 |
Sand | 7 | ||
Limestone | 4 | ||
Opholitie | 3 | ||
Gabbro | 2 | ||
Metamorphic | 1 | ||
Curve Number | 10% | Sand | 9 |
Faults | 7 | ||
Vegetation | 6 | ||
Gravel & Urban | 4 | ||
Sediment rocks | 3 | ||
Desert roads/Tracks | 2 | ||
Basements/Highways | 1 | ||
Total Dissolved Solids | 10% | 658.01–1090.58 | 9 |
1090.58–1479.19 | 7 | ||
1479.19–1846.67 | 5 | ||
1846.67–2203.11 | 3 | ||
2203.11–2530.26 | 1 | ||
Elevation | 5% | 0–55 | 9 |
55–109 | 7 | ||
109–157 | 5 | ||
157–203 | 3 | ||
203–413 | 1 | ||
Slope | 5% | 0–2.69 | 9 |
2.69–5.02 | 7 | ||
5.02–8.60 | 5 | ||
8.60–18.05 | 3 | ||
18.05–57.15 | 1 | ||
Major Fracture Euclidean Distance | 5% | 684–14,797.18 | 9 |
14,797.18–24,897.98 | 7 | ||
24,897.98–36,770.96 | 5 | ||
36,770.96–50,100.38 | 3 | ||
50,100.38–67,522.27 | 1 |
Precipitation | Drainage | Geomorphology | Geology | Curve Number | TDS | Elevation | Slope | MFED | |
---|---|---|---|---|---|---|---|---|---|
Precipitation | 1.000 | 1.000 | 1.333 | 2.000 | 2.000 | 2.000 | 4.000 | 4.000 | 4.000 |
Drainage | 1.000 | 1.000 | 1.333 | 2.000 | 2.000 | 2.000 | 4.000 | 4.000 | 4.000 |
Geomorphology | 0.750 | 0.750 | 1.000 | 1.500 | 1.500 | 1.500 | 3.000 | 3.000 | 3.000 |
Geology | 0.500 | 0.500 | 0.667 | 1.000 | 1.000 | 1.000 | 2.000 | 2.000 | 2.000 |
Curve Number | 0.500 | 0.500 | 0.667 | 1.000 | 1.000 | 1.000 | 2.000 | 2.000 | 2.000 |
TDS | 0.500 | 0.500 | 0.667 | 1.000 | 1.000 | 1.000 | 2.000 | 2.000 | 2.000 |
Elevation | 0.250 | 0.250 | 0.333 | 0.500 | 0.500 | 0.500 | 1.000 | 1.000 | 1.000 |
Slope | 0.250 | 0.250 | 0.333 | 0.500 | 0.500 | 0.500 | 1.000 | 1.000 | 1.000 |
Major Fracture ED * | 0.250 | 0.250 | 0.333 | 0.500 | 0.500 | 0.500 | 1.000 | 1.000 | 1.000 |
ML Model | Accuracy | Standard Deviation |
---|---|---|
Random Forest | 76.5 | ±2.4% |
Gradient Boosted Trees | 76 | ±0.8% |
Support Vector Machine | 72.7 | ±1.3% |
True “High” | True “Medium” | True “Low” | Class Prediction | |
---|---|---|---|---|
Predicted “High” | 103 | 30 | 2 | 76.30% |
Predicted “Medium” | 23 | 205 | 38 | 77.07% |
Predicted “Low” | 3 | 33 | 113 | 75.84% |
Class Prediction | 79.84% | 76.49% | 73.86% |
Factor | Final Weight |
---|---|
Precipitation | 18 |
Drainage | 18 |
Geomorphology | 13 |
Geology | 10 |
Curve Number | 12 |
TDS | 11 |
Elevation | 9 |
Slope | 0 |
Major Fracture Euclidean Distance | 9 |
ID | Dam Name | Emirate | Type | Height (m) | Length (m) | Volume (mcm) | Construction Year |
---|---|---|---|---|---|---|---|
0 | Shwaib Dam | Abu Dhabi | Concrete | 11 | 3000 | 31 | NA |
1 | Fili 2 Dam | Sharjah | Earth Rockfill | 2.5 | 1261 | 0.125 | 2002 |
2 | Fili 1 Dam | Sharjah | Earth Rockfill | 2.5 | 1536 | 0.25 | 2002 |
3 | Buraq Dam | Ras Al-Khaimah | Earth Rockfill | 9 | 326 | 0.5 | 2001 |
4 | Nasas Dam | Sharjah | Earth Rockfill | 10 | 284 | 0.43 | 2002 |
5 | Modenah Dam | Ras Al-Khaimah | Earth Rockfill | 9.6 | 300 | 0.438 | 2002 |
6 | Al Layat Dam | Ras Al-Khaimah | Earth Rockfill | 5 | 50 | 0.058 | 2001 |
7 | Shokah Dam | Ras Al-Khaimah | Concrete | 13 | 107 | 0.275 | 2001 |
8 | Qoshesh Dam | Ras Al-Khaimah | Earth Rockfill | 12 | 200 | 0.4 | 2002 |
9 | Qasaa Dam | Ras Al-Khaimah | Earth Rockfill | 10.5 | 490 | 1 | 2002 |
10 | Khoderah | Sharjah | Earth Rockfill | 6 | 1064 | 0.276 | 2013 |
11 | Falajalm’ala Dam | Umm Al-Quwain | Earth Rockfill | 6 | 675 | 0.068 | 2013 |
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Al-Ruzouq, R.; Shanableh, A.; Yilmaz, A.G.; Idris, A.; Mukherjee, S.; Khalil, M.A.; Gibril, M.B.A. Dam Site Suitability Mapping and Analysis Using an Integrated GIS and Machine Learning Approach. Water 2019, 11, 1880. https://doi.org/10.3390/w11091880
Al-Ruzouq R, Shanableh A, Yilmaz AG, Idris A, Mukherjee S, Khalil MA, Gibril MBA. Dam Site Suitability Mapping and Analysis Using an Integrated GIS and Machine Learning Approach. Water. 2019; 11(9):1880. https://doi.org/10.3390/w11091880
Chicago/Turabian StyleAl-Ruzouq, Rami, Abdallah Shanableh, Abdullah Gokhan Yilmaz, AlaEldin Idris, Sunanda Mukherjee, Mohamad Ali Khalil, and Mohamed Barakat A. Gibril. 2019. "Dam Site Suitability Mapping and Analysis Using an Integrated GIS and Machine Learning Approach" Water 11, no. 9: 1880. https://doi.org/10.3390/w11091880
APA StyleAl-Ruzouq, R., Shanableh, A., Yilmaz, A. G., Idris, A., Mukherjee, S., Khalil, M. A., & Gibril, M. B. A. (2019). Dam Site Suitability Mapping and Analysis Using an Integrated GIS and Machine Learning Approach. Water, 11(9), 1880. https://doi.org/10.3390/w11091880