Evaluation of the Time of Concentration Models for Enhanced Peak Flood Estimation in Arid Regions
Abstract
:1. Introduction
2. Materials and Methods
3. Results and Discussion
3.1. Evaluation of Model Performance
3.2. Development of a New Model for the Saudi Arid Environment
3.3. Probability Distribution and Hypothesis Testing
4. Conclusions
- The Dooge model shows the highest correlation with observed Tc at an r equal to 0.60, while the Izzard and Hicks model shows the least correlation at an r equal to −0.15.
- With regard to the predictive capability, the Jung model shows the best predictive efficiency, with Nash–Sutcliffe efficiency and normalized Nash–Sutcliffe efficiency values of 0.33 and 0.60, respectively, while USGS shows the poorest predictive efficiency, with Nash–Sutcliffe efficiency and normalized Nash–Sutcliffe efficiency values of −550.12 and 0.00, respectively.
- Based on the mean error and root mean square error, the Jung model produced the least mean error of −0.10 h, while USGS resulted in the largest mean error of 120.77 h. Similarly, the Jung model produced the least root mean square error of 4.72 h, while USGS produced the largest root mean square error of 1643 h.
- According to the relative bias, the highest underestimation is observed with the Albishi et al. (2017) [19] model at −77%, the least underestimation with the Jung model at −1%, the highest overestimation with USGS at 1643%, and the least overestimation with Kirpich at 4%.
- It is observed that 80% of all the models evaluated overestimated observed Tc, while the remaining 20% underestimated observed Tc in arid regions.
- The new Tc model developed from data in arid environments performed better than the models evaluated, with a correlation coefficient of 0.62, mean error of 0.07 h, root mean square error of 4.53 h, relative bias of 0.9%, as well as Nash–Sutcliffe efficiency of 0.38 and normalized Nash–Sutcliffe efficiency of 0.62. This proposed model is recommended to be used in flood studies in the Saudi arid environment.
- Hypothesis testing revealed that log-normal, Gamma, and Beta distributions are a good fit for the Tc data in arid regions at a 5% significance level.
- The AIC test, which was applied to demonstrate the best probability distribution, shows that log-normal provides the best fit for the observed Tc data at a 5% significance level.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Parameter | Definition | Range |
---|---|---|
Basin Area, A (km2) | - | 107–4.944 |
Basin Slope, Sb (m/m) | The average slope of the entire basin | 0.09–0.33 |
Basin length, Lb (km) | Length in a straight line from the mouth of a stream to the farthest point on the drainage divide of its basin | 19–112 |
Basin elevation, Hm (m) | Difference between the elevation of the highest basin divide and the elevation at the basin outlet | 234.72–2143.95 |
Flow length, L (km) | Downslope distance from the hydraulically most distant point to the outlet point | 26–158 |
Flow length slope, S (m/m) | Mean steepness, i.e., the ratio between the mean fall and the L length of the basin’s hydraulically most distant points | 0.01–0.08 |
Average rainfall intensity, i (mm/h) | - | 0.19–41.13 |
Roughness coefficient, n | - | 0.04 |
Curve number, CN | - | 44–98 |
Runoff coefficient, C | - | 0.0014–0.3724 |
S/N | Model | Equation for Tc | Definition of Parameters |
---|---|---|---|
1 | Kirpich (1940) [1] | Tc (h) = time of concentration; L (km) = main water line length; and S (m/m) = mean channel slope | |
2 | Soil Conservation Service Lag (1972) [20] | Tc (h) = time of concentration; CN: SCS curve number; L (km) = flow path length; S (m/m) = mean slope of channel | |
3 | Federal Aviation Administration (1970) [21] | Tc (h) = time of concentration; C: runoff coefficient; L (km) = length of flow path; S (m/m) = mean channel slope | |
4 | Carter (1961) [21] | Tc (h) = concentration time; L (km) = main water line length; S (m/m) = mean channel slope/mean steepness | |
5 | Kinematic Wave Formula (1964) [21] | Tc (h) = concentration time; L (km) = length of the main water line or flow path length; S (m/m) = mean slope of channel/mean steepness; n = Manning’s roughness coefficient; i (mm/h) = rainfall intensity | |
6 | Jung (2005) [12] | ) | Tc (h) = concentration time; L (km) = channel length; S = channel slope |
7 | Espey (1966) [22] | Tc (h) = concentration time; L (km) = channel length; S = slope of basin or channel slope | |
8 | Kraven I (1999) [12] | Tc (h) = concentration time; L (km) = channel length; S = slope of basin or channel slope | |
9 | United States Geological Survey (2000) [12] | ) | Tc (h) = concentration time; L (km) = channel length; S = slope of basin or channel slope |
10 | Ven Te Chow (1962) [23] | Tc (h) = time of concentration; L (km) = main water line length or flow path length; and S (m/m) = average channel steepness | |
11 | United States Army Corps of Engineers (1954) [4] | Tc (h) = time of concentration; L (km) = length of the main water line or flow path length; and S (m/m) = average channel steepness | |
12. | Albishi et al. (2017) [19] | Tc (h) = time of concentration; L (km) = basin length; and S (m/m) = average basin slope | |
13 | Morgali and Linsley (1965) [22] | Tc (h) = time of concentration; L (km) = main water line length; S (m/m) = mean channel slope/mean steepness; n = Manning’s roughness coefficient; i (mm/h) = rainfall intensity | |
14 | Izzard and Hicks (1946) [8] | Tc (h) = time of concentration; L (km) = channel length; S (m/m) = basin/channel slope; n = Manning’s roughness coefficient; i = in/h | |
15 | McCuen et al. (1984) [22] | Tc (h) = time of concentration; L (km) = main water line length; S (m/m) = mean channel slope/mean steepness; i (mm/h) = rainfall intensity | |
16 | Johnstone (1949) [5] | Tc (h) = time of concentration; L (km) = main water line length; S (m/m) = mean channel slope/mean channel steepness; i (mm/h) = rainfall intensity | |
17 | Dooge (1973) [24] | Tc (h) = time of concentration; S (m/m) = mean channel slope/mean channel steepness; A (km2) = area of the basin | |
18 | Giandotti (1934) [8] | Tc (h) = time of concentration; L (km) = main water line length; A (km2) = area of the basin; Hm (m) = mean altitude in the basin (i.e., mean elevation starting from the mouth) | |
19 | Haktanir and Sezen (1990) [4] | Tc (h) = time of concentration; L (km) = main water line length | |
20 | Sheridan (1994) [17] | Tc (h) = time of concentration; L (km) = main water line length |
Distribution Type | PDF Formula | Parameters of PDF | |
---|---|---|---|
µ | σ2 | ||
Gaussian | α | β2 | |
Log-normal | α | β2 | |
Exponential | |||
Gamma | |||
Beta | αβ/(α + β)2 (α + β + 1) | ||
Gumbel | α + 0.5772β |
Tc Model | Mean Model Tc (h) | Mean Observed Tc (h) | r | ME (h) | PBIAS (%) | RMSE (h) | NSE | NNSE | Data Outbound ±95% Confidence Limits (%) |
---|---|---|---|---|---|---|---|---|---|
Kirpich (1940) [1] | 7.64 | 7.35 | 0.57 | 0.29 | 4 | 4.83 | 0.30 | 0.59 | 1.9 |
SCS Lag (1972) [20] | 22.94 | 7.35 | 0.36 | 15.59 | 212 | 21.54 | −12.92 | 0.07 | 2.5 |
FAA (1970) [21] | 11.35 | 7.35 | 0.57 | 4.00 | 54 | 6.40 | −0.23 | 0.45 | 0 |
Carter (1961) [21] | 2.62 | 7.35 | 0.58 | −4.73 | −64 | 7.06 | −0.50 | 0.40 | 46 |
Kinematic Wave (1964) [21] | 19.14 | 7.35 | 0.49 | 11.79 | 160 | 15.68 | −6.38 | 0.12 | 1.9 |
Jung (2005) [12] | 7.25 | 7.35 | 0.58 | −0.10 | −1 | 4.72 | 0.33 | 0.60 | 3.1 |
Espey (1966) [22] | 60.91 | 7.35 | 0.57 | 53.56 | 729 | 55.36 | −91.00 | 0.01 | 0.6 |
Kraven I (1999) [12] | 3.95 | 7.35 | 0.56 | −3.40 | −46 | 5.89 | −0.04 | 0.49 | 13 |
USGS (2000) [12] | 128.12 | 7.35 | 0.58 | 120.77 | 1643 | 135.5 | −550.12 | 0.00 | 1.9 |
Ven Te Chow (1962) [23] | 8.11 | 7.35 | 0.57 | 0.76 | 10 | 4.81 | 0.30 | 0.59 | 1.9 |
USACE (1954) [4] | 9.92 | 7.35 | 0.58 | 2.58 | 35 | 5.51 | 0.09 | 0.52 | 0 |
Albishi et al. (2017) [19] | 1.66 | 7.35 | 0.52 | −5.69 | −77 | 8.07 | −0.96 | 0.34 | 67.7 |
Morgali and Linsley (1965) [22] | 28.25 | 7.35 | 0.50 | 20.90 | 284 | 26.59 | −20.22 | 0.04 | 2.5 |
Izzard and Hicks (1946) [8] | 9.48 | 7.35 | −0.15 | 2.13 | 29 | 17.15 | −7.83 | 0.10 | 3.1 |
McCuen et al. (1984) [22] | 31.17 | 7.35 | 0.39 | 23.82 | 324 | 34.10 | −33.90 | 0.03 | 2.5 |
Johnstone (1949) [5] | 9.73 | 7.35 | 0.57 | 2.38 | 32 | 5.30 | 0.16 | 0.54 | 0 |
Dooge (1973) [24] | 11.84 | 7.35 | 0.60 | 4.49 | 61 | 6.55 | −0.29 | 0.44 | 0 |
Giandotti (1934) [8] | 9.01 | 7.35 | 0.58 | 1.66 | 23 | 5.07 | 0.23 | 0.56 | 0.6 |
Haktanir and Sezen (1990) [4] | 26.83 | 7.35 | 0.57 | 19.48 | 265 | 21.56 | −12.96 | 0.07 | 0 |
Sheridan (1994) [17] | 111.60 | 7.35 | 0.57 | 104.25 | 1419 | 114.61 | −393.31 | 0.00 | 1.2 |
Proposed Tc Model | 7.42 | 7.35 | 0.62 | 0.07 | 0.9 | 4.53 | 0.38 | 0.62 | 3.1 |
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Alamri, N.; Afolabi, K.; Ewea, H.; Elfeki, A. Evaluation of the Time of Concentration Models for Enhanced Peak Flood Estimation in Arid Regions. Sustainability 2023, 15, 1987. https://doi.org/10.3390/su15031987
Alamri N, Afolabi K, Ewea H, Elfeki A. Evaluation of the Time of Concentration Models for Enhanced Peak Flood Estimation in Arid Regions. Sustainability. 2023; 15(3):1987. https://doi.org/10.3390/su15031987
Chicago/Turabian StyleAlamri, Nassir, Kazir Afolabi, Hatem Ewea, and Amro Elfeki. 2023. "Evaluation of the Time of Concentration Models for Enhanced Peak Flood Estimation in Arid Regions" Sustainability 15, no. 3: 1987. https://doi.org/10.3390/su15031987
APA StyleAlamri, N., Afolabi, K., Ewea, H., & Elfeki, A. (2023). Evaluation of the Time of Concentration Models for Enhanced Peak Flood Estimation in Arid Regions. Sustainability, 15(3), 1987. https://doi.org/10.3390/su15031987