Optimal Allocation of Water Resources in Canal Systems Based on the Improved Grey Wolf Algorithm
Abstract
:1. Introduction
2. Materials and Methods
2.1. Overview of the Study Area
2.2. Optimized Water Distribution Models and Research Methods for Canal Systems
2.2.1. Optimized Water Distribution Model for Drainage Systems
- (1)
- Objective function
- (2)
- Constraints
2.2.2. Model Solving Based on Multiple Algorithms
- (1)
- Grey Wolf Optimization (GWO) Algorithm and Improvements
- Basic Grey Wolf Optimization Algorithm (GWO)
- Searching for prey: The grey wolves are classified according to their adaptation values, and the grey wolf positions corresponding to the adaptation values from largest to smallest are recorded as , , and . Location updates are performed after determining the location of the prey.
- Rounding up prey: During the iteration of grey wolves tracking their prey, the positions of the top three grey wolves obtained in the previous iteration are retained. In the next iteration, the grey wolf population estimates the position of its prey based on this positional information and adjusts its position accordingly, thus gradually approaching the prey. A schematic representation of the hunting process is shown in Figure 2. The positional update of individual grey wolves follows the following formulas:Figure 2. Schematic diagram of updating the position of each grey wolf via the grey wolf algorithm.
- Searching for prey to attack: By adjusting the value of || so that it is greater than 1 or less than −1, the grey wolf is kept at a certain distance from its prey, and thus searches for a more suitable prey. A schematic of the search method is shown in Figure 3.Figure 3. Schematic diagram of the grey wolf attack search method in the grey wolf algorithm.
- Improved Grey Wolf Optimization Algorithm (IGWO)
- ①
- Improvement through improved parameters
- ②
- Improvement by introducing the particle swarm algorithm
- (2)
- Improved particle swarm algorithm (GA-PSO) and northern goshawk algorithm (NGO) optimization strategies
2.2.3. Algorithm Testing
2.3. Determination of Parameters of Water Distribution Model Based on the Optimization of the Canal System in Jinghe Irrigation District
- (1)
- Calculation of the number of rotational irrigation groups
- (2)
- Calculation parameters of the water distribution model
3. Results
3.1. Algorithm Performance Analysis Based on Model Solution Results
3.2. Adaptability Analysis Based on Water Volume Changes
3.3. Rationality Analysis of the Algorithm Based on Management Efficiency
4. Discussion
5. Conclusions
- (1)
- In this paper, water distribution is modeled using rotational irrigation between groups and renewed irrigation within groups. With the objective of minimizing the total amount of seepage loss in canal system transmission, the improved grey wolf algorithm is applied to the optimal water distribution model of the irrigation canal system. The water distribution time is shortened from the planned 11 d to 8.91 d, and leakage is reduced from 16.15 × 104 m3 to 11.75 × 104 m3. Under the premise of ensuring that the actual distribution flow in the channel is within the range of the maximum and minimum flow, the scheme meets the objectives of a short distribution time, centralized water resource allocation, and low leakage.
- (2)
- When compared to the GA-PSO, NGO, and traditional GWO algorithms, the IGWO algorithm shows its good optimization performance. The IGWO algorithm has few application constraints, fewer iterations, faster computation, stable solution, and a high degree of global optimization. At the same time, the model-solving algorithm can also adjust the basic data parameters according to the specific conditions of different irrigation canal systems in order to adapt to a variety of complex irrigation canal networks.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Channel Number | Channel Name | Design Flow (m3/s) | Length (km) | Irrigated Area (hm2) | Water Demand (104 m3) |
---|---|---|---|---|---|
1 | Northland teams 6, 7, and 8 | 0.4 | 1.6 | 480.24 | 9.50 |
2 | Northland teams 10 and 11 | 0.2 | 1.1 | 25.68 | 4.64 |
3 | Dongzhuang 2356 | 0.5 | 4.8 | 578.96 | 19.07 |
4 | Mangxiang forestry | 0.3 | 1.3 | 146.74 | 5.76 |
5 | Dongzhuang 4 | 0.3 | 1.4 | 20.01 | 9.72 |
6 | Huangbei 1928 | 0.5 | 1.5 | 115.39 | 6.20 |
Channel Number | Channel Name | Design Flow (m3/s) | Lengths (km) | Irrigated Area (hm2) | Water Demand (104 m3) |
---|---|---|---|---|---|
0 | Xidonggang canal | 2.5 | 10.23 | 1259 | 151.08 |
1 | Directly under Yidou canal | 0.6 | 1.8 | 46 | 5.52 |
2 | Directly under Erdou canal | 1 | 4.2 | 146 | 17.52 |
3 | Directly under Sandou canal | 1 | 5.8 | 248 | 29.76 |
4 | Directly under Sidou canal | 0.6 | 1.25 | 65 | 7.8 |
5 | Directly under Wudou canal | 0.6 | 1.2 | 76 | 9.12 |
6 | Directly under Liudou canal | 0.5 | 0.88 | 55 | 6.6 |
7 | Directly under Qidou canal | 0.5 | 1.03 | 41 | 4.92 |
8 | Directly under Badou canal | 0.6 | 1.4 | 117 | 14.04 |
9 | Directly under Jiudou canal | 0.8 | 1.9 | 230 | 27.6 |
10 | Xidong branch canal | 1.5 | 6.17 | 233 | 27.96 |
11 | Maojiawan branch canal | 0.8 | 1.8 | 53 | 6.36 |
Algorithm Type | Loss through Seepage (104 m3) | Total Duration of Water Diversion (h) |
---|---|---|
IGWO | 30.88 | 256.99 |
GA-PSO | 32.63 | 277.3 |
Algorithm Type | GA-PSO | NGO | GWO | IGWO |
---|---|---|---|---|
Iterations | 33 | 50 | 33 | 9 |
Total leakage (m3) | 117,532.00 | 117,510.46 | 117,532.00 | 117,507.11 |
Total diversion time (d) | 8.96 | 8.92 | 8.96 | 8.92 |
No. of Rotation Irrigation Group | Rotation Irrigation Combination | Irrigation Duration (h) | Water Demand (×104 m3) | Distribution Flow (m3/s) |
---|---|---|---|---|
1 | Dongzhuang 2356 | 112.98 | 19.07 | 0.47 |
Dongzhuang 4 | 9.72 | 0.24 | ||
2 | Mangxiang Forestry | 45.86 | 5.76 | 0.35 |
Huangbei 1928 | 6.20 | 0.38 | ||
3 | Northland teams 6, 7, and 8 | 55.15 | 9.50 | 0.48 |
Northland teams 10 and 11 | 4.64 | 0.23 |
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Zheng, Q.; Yue, C.; Zhang, S.; Yao, C.; Zhang, Q. Optimal Allocation of Water Resources in Canal Systems Based on the Improved Grey Wolf Algorithm. Sustainability 2024, 16, 3635. https://doi.org/10.3390/su16093635
Zheng Q, Yue C, Zhang S, Yao C, Zhang Q. Optimal Allocation of Water Resources in Canal Systems Based on the Improved Grey Wolf Algorithm. Sustainability. 2024; 16(9):3635. https://doi.org/10.3390/su16093635
Chicago/Turabian StyleZheng, Qiuli, Chunfang Yue, Shengjiang Zhang, Chengbao Yao, and Qin Zhang. 2024. "Optimal Allocation of Water Resources in Canal Systems Based on the Improved Grey Wolf Algorithm" Sustainability 16, no. 9: 3635. https://doi.org/10.3390/su16093635
APA StyleZheng, Q., Yue, C., Zhang, S., Yao, C., & Zhang, Q. (2024). Optimal Allocation of Water Resources in Canal Systems Based on the Improved Grey Wolf Algorithm. Sustainability, 16(9), 3635. https://doi.org/10.3390/su16093635