Water Resources Allocation in the Tingjiang River Basin: Construction of an Interval-Fuzzy Two-Stage Chance-Constraints Model and Its Assessment through Pearson Correlation
Abstract
:1. Introduction
2. Case Study
2.1. Natural Characteristics and Optimization Background of the Tingjiang River Basin
2.2. Research Object and Constraint Parameters
3. Model Formulation
3.1. Watershed IFTSC Model Construction
- (1)
- Economic scale constraints [13]:
- (2)
- The water resources utilization online:
- (3)
- Water quality requirements in the basin:
- (4)
- Minimum development requirements for each region in the basin:
3.2. Solution of IFTSC Model for Watershed
3.3. Correlation Analysis Model Based on Pearson’s Correlation Coefficient
4. Results and Discussion
4.1. Analysis of IFTSC Model Simulating Two-Stage Water Resource Allocation in Tingjiang River Basin
4.2. Economic Benefit Analysis of the Tingjiang River Basin Based on the IFTSC Model
4.3. Comparison of the IFTSC Model Optimized by Chance Constraint with the IFTS Model
4.4. Analysis of Factors Influencing Water Allocation Based on Pearson Correlation Coefficient
5. Conclusions
- (1)
- The second-stage penalty value of the IFTSC model in the Tingjiang River basin was less than the original IFTS model, as evidenced by the decrease in the second-stage penalty value of the industrial sector by 9.7% under the dry hydrological scenario. The first stage is characterized by a relatively reasonable water allocation with improved water resources utilization rate and greatly relieves the water pressure of various departments and industries while minimizing the water resources waste or economic development restriction caused by unreasonable water resources allocation.
- (2)
- The stochastic optimization method with chance-constraint was introduced based on the original IFTS model to effectively reduce the uncertainty of minimum development requirements in the Tingjiang River basin. At the same time, the IFTSC model was allowed to violate the constraint conditions within a specified confidence interval to make it more realistic with a wider range of applications, which can satisfy the more differential and complex realistic hydrological scenarios to a certain extent.
- (3)
- The total economic benefits of the Tingjiang River basin simulated by the IFTSC model show an increasing trend compared with the original IFTS model (an increase of 49.36 × 108 CNY under the abundant hydrology scenario), which further ensures the overall economic development of the Tingjiang River basin and balances the economic relationship between Fujian and Guangdong provinces upstream and downstream of the Tingjiang River basin while rationalizing water resources allocation.
- (4)
- Pearson correlation coefficient shows that water allocation in the Tingjiang River basin is positively correlated with seven parameters (CPC, DSL, AER_r2, rCWXS_r1, WR, IWUL and IS) and that economic efficiency in the Tingjiang River basin is positively correlated with two parameters (NB and PNB). In the water management process, the focus can be on these parameters and simpler and more efficient measures can be taken to address the environmental management objectives of the basin.
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
Economic benefit of water, 104 CNY. | |
Water consumption cost, 104 CNY. | |
Cost of environmental management of water, 104 CNY. | |
Eco-compensation quota, 104 CNY. | |
The second stage to optimize the penalty value. | |
The lowest economic benefit of the basin, 104 CNY. | |
The highest economic benefit of the basin, 104 CNY. | |
Administrative units (14 districts and counties). | |
Major water consumption sectors (= 1, 2, 3, 4 denote Industry, Municipal, Agriculture, Ecology). | |
Different industry categories within each sector | |
Watershed partition ( = 1 denotes the regional scope of upstream Fujian province, and = 2 denotes the regional scope of downstream Guangdong province). | |
Hydrological situation (= 1, 2, 3, 4, 5 denote extreme abundance, abundance, normal flow, dryness, and extreme dryness, with respective probabilities of 0.1, 0.3, 0.15, 0.25, and 0.2). | |
Output value per unit scale, 104 CNY/104 t. | |
The optimal solution for water consumption in the first stage. | |
The unit price of water 104 CNY/104 t. | |
Comprehensive pollution production coefficient, 104 g/104 t. | |
Pollution control cost, 104 CNY/104 t. | |
Downstream water price, 104 CNY/104 t. | |
The proportion of downstream use of incoming water from the upstream. | |
Eco-compensation determination coefficient (the water quality is better than the III standard, = 1; the water quality is inferior to class V, = −1; in other cases, = 0). | |
Hydrological scenario probability. | |
The water supply that cannot meet the loss caused by the original water supply, 104 CNY/104 t. | |
Lack of water, 104 t. | |
The maximum water resources utilization stipulated by different regions and departments, 104 t. | |
The maximum utilization of water resources in different regions, 104 t. | |
The ecological area range of different regions in the watershed, 104 t. | |
The maximum utilization of water resources in the basin, 104 t. | |
Different pollutants. | |
Pollutants producing coefficient, 104 g/104 t. | |
Pollutant removal rate. | |
Maximum allowable discharge of pollutants, 104 t. | |
Minimum regional development requirements, 104 CNY. | |
The risk of default. | |
Expected value of (= 1, 2). | |
Expected value of (= 1, 2). | |
The variances of the (= 1, 2). | |
The variances of the (= 1, 2). |
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Value Range | Relevance |
---|---|
0–0.2 | Very strong correlation |
0.2–0.4 | Strong correlation |
0.4–0.6 | Moderate correlation |
0.6–0.8 | Weak correlation |
0.8–1.0 | Very weak correlation or no correlation |
Province | Section | Business | Liancheng | Shanghang | Wuping | Xinluo | Yongding | Pinghe | Changting |
---|---|---|---|---|---|---|---|---|---|
Fujian | Industry | Paper | 321.65 | 226.17 | 616.05 | 701.21 | 529.15 | 564.41 | 354.76 |
Steel | 15,074.67 | 14,569.46 | 14,778.34 | 0.00 | 13,062.22 | 0.00 | 0.00 | ||
Cement | 0.00 | 596.03 | 0.00 | 437.93 | 1802.58 | 13,320.01 | 12,737.94 | ||
Thermal power | 0.00 | 0.00 | 0.00 | 14,260.86 | 0.00 | 1508.07 | 2263.49 | ||
Municipal | Town | 4092.93 | 4027.14 | 290.85 | 5112.15 | 2217.80 | 4309.74 | 3131.46 | |
Resident | 2929.58 | 3108.98 | 6797.56 | 1229.55 | 4809.93 | 2690.86 | 2308.33 | ||
Agriculture | Breeding | 2.13 | 1.38 | 1.72 | 1.88 | 2.68 | 1.86 | 2.66 | |
Planting | 8.24 | 9.72 | 9.60 | 27.04 | 22.68 | 25.22 | 5.25 | ||
Ecology | Ecology | 25.32 | 4.37 | 13.55 | 32.88 | 53.77 | 33.02 | 22.69 | |
Guangdong | Zijin | Dapu | Fengshun | Meixian | Wuhua | Xingning | Chenghai | ||
Industry | Paper | 255.24 | 220.66 | 209.29 | 419.66 | 314.71 | 463.06 | 211.66 | |
Steel | 19,759.37 | 18,894.87 | 19,806.31 | 0.00 | 200.44 | 0.00 | 0.00 | ||
Cement | 0.00 | 897.31 | 0.00 | 19,323.88 | 19,489.32 | 19,319.52 | 214.85 | ||
Thermal power | 0.00 | 0.00 | 0.00 | 249.18 | 0.00 | 217.38 | 19,579.52 | ||
Municipal | Town | 4393.67 | 3979.43 | 3776.06 | 3403.44 | 3164.00 | 4155.35 | 3938.43 | |
Resident | 3717.65 | 4062.76 | 4337.99 | 4623.53 | 4871.07 | 3901.09 | 4115.70 | ||
Agriculture | Breeding | 2.88 | 1.86 | 2.33 | 2.65 | 4.01 | 2.52 | 3.63 | |
Planting | 12.19 | 12.30 | 14.24 | 11.43 | 87.82 | 34.32 | 7.88 | ||
Ecology | Ecology | 32.83 | 37.01 | 39.52 | 44.00 | 25.12 | 53.82 | 107.52 |
Number | Region | Lower Limit (×108 CNY) | Economic Benefits of Each District and County under Five Hydrological Scenarios of IFTSC Model (×108 CNY) | Change Interval (%) | ||||
---|---|---|---|---|---|---|---|---|
p (1) | p (2) | p (3) | p (4) | p (5) | ||||
1 | Liancheng | 165.47 | 201.26 | 215.37 | 204.79 | 211.84 | 208.32 | [21.63, 30.16] |
2 | Shanghang | 313.07 | 375.71 | 381.68 | 377.20 | 380.18 | 378.69 | [20.01, 21.92] |
3 | Wuping | 111.80 | 186.78 | 222.86 | 195.80 | 213.84 | 204.82 | [67.07, 99.34] |
4 | Xinluo | 767.60 | 907.11 | 946.29 | 916.91 | 936.50 | 926.70 | [18.17, 23.28] |
5 | Yongding | 184.43 | 244.79 | 274.75 | 252.28 | 267.26 | 259.77 | [32.73, 48.97] |
6 | Pinghe | 219.29 | 243.19 | 258.39 | 247.33 | 254.79 | 251.15 | [10.90, 17.83] |
7 | Changting | 207.96 | 244.52 | 257.76 | 248.02 | 254.61 | 251.38 | [17.58, 23.95] |
8 | Zijin | 89.85 | 92.48 | 128.54 | 101.50 | 119.52 | 110.51 | [2.93, 43.06] |
9 | Dapu | 61.37 | 59.69 | 89.01 | 67.03 | 81.63 | 74.35 | [−2.74, 45.04] |
10 | Fengshun | 67.29 | 68.45 | 98.33 | 75.92 | 90.86 | 83.39 | [1.72, 46.13] |
11 | Meixian | 164.19 | 169.49 | 230.89 | 184.84 | 215.54 | 200.19 | [3.23, 40.62] |
12 | Wuhua | 127.47 | 133.45 | 178.54 | 144.73 | 167.27 | 156.00 | [4.69, 40.06] |
13 | Xingning | 149.59 | 147.86 | 215.74 | 164.81 | 198.87 | 181.76 | [−1.16, 44.22] |
14 | Chenghai | 439.93 | 517.53 | 539.64 | 523.06 | 534.12 | 528.59 | [17.64, 22.66] |
Total | 3069.32 | 3592.31 | 4037.79 | 3704.22 | 3926.83 | 3815.62 | [17.04, 31.55] |
Number | Region | Upper Limit (×108 CNY) | Economic Benefits of Each District and County under Five Hydrological Scenarios of IFTSC Model (×108 CNY) | Change Interval (%) | ||||
---|---|---|---|---|---|---|---|---|
p (1) | p (2) | p (3) | p (4) | p (5) | ||||
1 | Liancheng | 315.99 | 314.42 | 313.61 | 314.21 | 313.81 | 313.99 | [−0.75, −0.50] |
2 | Shanghang | 504.58 | 503.16 | 501.92 | 502.85 | 502.23 | 502.55 | [−0.53, −0.28] |
3 | Wuping | 337.78 | 336.69 | 335.48 | 336.38 | 335.77 | 336.10 | [−0.68, −0.32] |
4 | Xinluo | 1160.54 | 1159.93 | 1159.43 | 1159.81 | 1159.55 | 1159.67 | [−0.10, −0.05] |
5 | Yongding | 390.41 | 389.22 | 388.26 | 388.98 | 388.52 | 388.91 | [−0.55, −0.30] |
6 | Pinghe | 376.92 | 375.54 | 374.87 | 375.30 | 375.01 | 375.15 | [−0.54, −0.37] |
7 | Changting | 333.62 | 344.81 | 349.26 | 345.94 | 348.14 | 347.04 | [3.35, 4.69] |
8 | Zijin | 278.99 | 282.85 | 283.44 | 283.00 | 283.34 | 283.18 | [1.38, 1.60] |
9 | Dapu | 198.00 | 201.40 | 201.95 | 201.52 | 201.85 | 201.68 | [1.72, 1.99] |
10 | Fengshun | 236.99 | 240.47 | 240.97 | 240.58 | 240.88 | 240.73 | [1.47, 1.68] |
11 | Meixian | 341.22 | 345.53 | 345.92 | 345.68 | 345.91 | 345.83 | [1.26, 1.38] |
12 | Wuhua | 268.50 | 272.58 | 273.32 | 272.79 | 273.18 | 272.99 | [1.52, 1.79] |
13 | Xingning | 329.36 | 333.89 | 334.38 | 334.05 | 334.34 | 334.24 | [1.37, 1.53] |
14 | Chenghai | 683.90 | 686.66 | 686.21 | 686.54 | 686.34 | 686.39 | [0.34, 0.40] |
Total | 5756.79 | 5787.15 | 5789.02 | 5787.64 | 5788.88 | 5788.45 | [0.53, 0.56] |
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Hao, N.; Sun, P.; He, W.; Yang, L.; Qiu, Y.; Chen, Y.; Zhao, W. Water Resources Allocation in the Tingjiang River Basin: Construction of an Interval-Fuzzy Two-Stage Chance-Constraints Model and Its Assessment through Pearson Correlation. Water 2022, 14, 2928. https://doi.org/10.3390/w14182928
Hao N, Sun P, He W, Yang L, Qiu Y, Chen Y, Zhao W. Water Resources Allocation in the Tingjiang River Basin: Construction of an Interval-Fuzzy Two-Stage Chance-Constraints Model and Its Assessment through Pearson Correlation. Water. 2022; 14(18):2928. https://doi.org/10.3390/w14182928
Chicago/Turabian StyleHao, Ning, Peixuan Sun, Wei He, Luze Yang, Yu Qiu, Yingzi Chen, and Wenjin Zhao. 2022. "Water Resources Allocation in the Tingjiang River Basin: Construction of an Interval-Fuzzy Two-Stage Chance-Constraints Model and Its Assessment through Pearson Correlation" Water 14, no. 18: 2928. https://doi.org/10.3390/w14182928
APA StyleHao, N., Sun, P., He, W., Yang, L., Qiu, Y., Chen, Y., & Zhao, W. (2022). Water Resources Allocation in the Tingjiang River Basin: Construction of an Interval-Fuzzy Two-Stage Chance-Constraints Model and Its Assessment through Pearson Correlation. Water, 14(18), 2928. https://doi.org/10.3390/w14182928