Planning an Energy–Water–Environment Nexus System in Coal-Dependent Regions under Uncertainties
Abstract
:1. Introduction
2. Methodology
2.1. ARIMA Model
2.2. ARIMA–Monte Carlo–Chance-Constrained–Type-2 Fuzzy Programming Method
3. Case Study
3.1. Characteristics of the Study Region
3.2. Overview of This Study
3.3. Modeling Formulation (AM-CT2FPM-EWENS).
- (1)
- Electricity supply and demand balance. Constraints (20) can ensure the total local generated electricity should more than or equal to the sum of local electricity demands and exported electricity. The optimized electricity-generation schemes can be obtained from Equations (21) and (22). The optimized amounts of exported electricity can be obtained from constraints (23) and (24).
- (2)
- Constraints of electricity capacity. Constraints (25) and (26) can guarantee that the capacity of each electricity power technology is greater than the generation amounts of electricity. Constraints (27) and (28) ensure the capacity of each electricity power technology should be greater than its the lower bound and lower than its higher bound.
- (3)
- Constraints of electricity peak load balance. Constraint (30) can guarantee that the electricity load is greater than the electricity peak load of each period.
- (4)
- Constraints of primary energy production. Constraints (31)–(33) require the primary energy lower than their upper limitation.
- (5)
- Water resources availability. The following constraint ensures the water resource consumption for energy activities must be lower than the available water resource amounts for electric power sector and primary energy generation sector.
- (6)
- Water consumption for electricity generation and primary energy production. In detail, the water consumption amounts for each electricity-conversion technology for cooling, steam generation and desulfurization and renewable power can be calculated by the Equations (35)–(38). The water consumption for primary energy production (crude oil, coal, and natural gas) can be obtained by the Equations (39)–(41).
- (7)
- Electricity consumption for water supply. The electricity consumption amounts for surface water supply of electricity generation and primary energy production can be calculated by the Equations (42) and (48); the electricity consumption amounts for groundwater supply of electricity generation and primary energy production can be obtained by the Equations (43) and (49); the electricity consumption amounts for recycled water supply of electricity generation and primary energy production can be calculated by the Equations (44) and (50). For electricity generation and primary energy production, the electricity is required to treat water to meet the standards of energy production. In addition, the electricity consumption amounts for water treatment of electricity generation and primary energy production can be obtained by the Equations (45) and (51). The electricity consumption amounts for water distribution to electricity generation and primary energy production enterprises can be calculated by the Equations (46) and (52). The wastewater treatment is also energy intensive, and it can be calculated by the Equation (47).
- (8)
- Coal resources allocation to coal-fired power. The coal consumption amounts of coal-fired power can be calculated by Equation (53).
- (9)
- Coal resources availability. The constraint ensures the coal resource consumption amounts of coal-fired power must be lower than the total available amounts of coal resources.
- (10)
- Constraints of lifecycle carbon emissions. Equations (56) and (57) are employed for calculating the lifecycle CO2 emissions. Constraint (58) is used for guaranteeing the LCDE should be lower than the carbon emission permit.
- (11)
- Constraints of pollutants (i.e., NOX, SO2, and PM) emissions and wastewater. Equations (59)–(62) are employed for calculating the pollutants. Constraints (63)–(65) are used for meeting the pollutant emissions should be lower than the pollutant permits.
- (12)
- Non-negative constraints. This constraint guarantee decision variables of the proposed model should be always positive.
3.4. Data Collection
4. Result Analysis
4.1. Electricity Demand Prediction
4.2. Electricity Supply
4.3. Water Supply for Energy Production
4.4. Electricity Consumption for Water Supply
4.5. Lifecycle Carbon Dioxide Emissions of EWENS
4.6. Pollutants Emissions of EWENS
4.7. Coal Allocation Patterns for Electricity Generation and Primary Energy Production
4.8. System Cost
5. Discussion
5.1. Uncertainties Analysis
5.2. Comparison with CCP
6. Conclusions
- (1)
- The total water supply for electricity generation and primary energy production in Inner Mongolia will range from 1368.10 × 106 m3 to 1370.62 × 106 m3 at the end of the planning horizon under different μ levels, with a growth rate of 46.51–48.65% across the planning horizon. In detail, 79.26–85.86% and 14.14–20.74% of water consumption would be due to electricity generation and primary energy production, respectively.
- (2)
- The EWS will range from 2164.07 × 106 kWh to 2167.65 × 106 kWh at the end of the planning periods, with a growth rate of 46.06–48.72%. The water-sourcing phase, water treatment, water distribution, and wastewater treatment are expected to account for 41.54–41.57%, 26.17–26.19%, 31.29–31.31%, and 0.93–0.99% of total EWS amounts, respectively.
- (3)
- The lifecycle carbon dioxide emissions will range from 931.85 × 106 tons to 947.00 × 106 tons at the end of the planning horizon, which will increase by 67.20% over the planning horizon. Wastewater and SO2, NOx, and PM emissions are projected to be 42.72 × 103–43.45 × 103 tons, 183.07 × 103–186.23 × 103 tons, 712.38 × 103–724.73 × 103 tons, and 38.14 × 103–38.80 × 103 tons at the end of the planning periods under different μ levels, with a growth rate of 56.52–56.54%, 54.80–54.82%, 54.29–54.30%, and 39.77–39.75%, respectively.
- (4)
- Inner Mongolia has become the largest electricity-exporting city of China. Approximately 26.38% of Inner Mongolia’s electricity-generation amounts would be exported to other regions. That indicating electricity outflows will consume 299.48 × 106 tons of SCE of coal resource, export 1435.78 × 106 m3 of virtual water to other region, and contribute 1181.73 × 106 tons, 242.32 × 103 tons, 232.58 × 103 tons, 52.99 × 103 tons, and 56.25 × 106 tons of LCDE, SO2, NOx, PM, and wastewater across the planning horizon. The results imply that Inner Mongolia, as a water-scarce area, is pumping its precious water resource to support other region’s electricity demands.
- (5)
- High carbon mitigation levels can effectively optimize the electricity power mix, reduce consumption amounts of water and coal, and mitigate air pollutants, wastewater, and LCDE. However, a high system cost is incurred in the process. A 1% increase in carbon mitigation level is projected to reduce 9.95 × 106 tons of SCE, 46.82 × 106 m3, 37.11 × 103 tons, 1.87 × 106 tons, 8.05 × 103 tons emission, 7.73 × 103 tons, and 1.76 × 103 tons of coal resource, water resource, LCDE, wastewater, and SO2, NOx, and PM emissions, respectively, over the planning horizon. However, the system cost will significantly increase by RMB ¥155.32 × 109 over the study horizon.
Author Contributions
Funding
Conflicts of Interest
Abbreviations
System costs; | |
Cost of fossil energy allocation; | |
Benefit of electricity exportation; | |
Cost of water consumption for electricity generation; | |
Cost of water consumption for primary energy production; | |
Variable cost of electricity generation; | |
Fix cost of electricity generation; | |
Variable cost of electric expansion; | |
Fix cost of electric generation; | |
Cost of primary energy production; | |
Cost of air pollutants and wastewater treatment; | |
Type of electric power, = 1, 2, 3, 4; = 1 for coal-fired power, = 2 for wind power, = 3 for hydro power, and = 4 for solar power; | |
Study periods, = 1, 2, 3, 4, 5; t = 1 is 2019, t = 2 is 2020, t = 3 is 2021, t = 4 is 2022, and t = 5 is 2023. | |
pi | A give level of probability for constraint n, implying that the constraints n should be satisfied with at least a probability level of 1 − pi. |
α | The confidence levels; |
Model Parameters | |
The price of coal resources; | |
The price of electricity exported; | |
The loss rate of electricity transmission; | |
The cost of water for cooling; | |
The cost of water for steam generation; | |
The cost of water for desulfurization; | |
The cost of water resource to renewable power; | |
The cooling water consumption of unit of electricity power generation; | |
The boiler water consumption of unit of electricity power generation; | |
The desulfurization water consumption of unit of electricity power generation; | |
The water consumption amounts of unit of renewable power; | |
The water consumption intensity of coal production; | |
The water consumption intensity of crude oil production; | |
The water consumption intensity of natural gas production; | |
The cost of water resource for coal production; | |
The cost of water resource for crude oil production; | |
The cost of water resource for natural gas production; | |
The cost of operation cost of first-stage electricity power generation; | |
Fixed-charge cost of capacity expansion for electricity power conversion technology; | |
Residual capacity of each electricity power conversion technology; | |
The production cost for coal resource; | |
The production cost for coal resource; | |
The production cost for coal resource; | |
The cost for desulfurization; | |
The cost for denitration; | |
The cost for PM removal; | |
The cost for wastewater treatment; | |
The desulfurization efficiency; | |
The denitration efficiency; | |
The PM removal efficiency; | |
The electricity demands under various pi levels, which shown the characteristic of stochastic; | |
The lower bound of exported electricity; | |
The upper bound of exported electricity; | |
The operating hours of electricity-conversion technology; | |
The residual capacity for each electric power technology; | |
The upper bound for capacity expansion of each electric power technology; | |
The upper load demands of capacity of each electric power technology; | |
The electricity peak load demand; | |
The upper bounds for coal resource production; | |
The lower bounds for coal resource production; | |
The upper bounds for crude oil resource production; | |
The lower bounds for crude oil resource production; | |
The upper bounds for natural gas resource production; | |
The lower bounds for natural gas resource production; | |
The amounts of available water resource for electricity generation and primary energy production; | |
Electricity intensity factors for surface water supply; | |
Electricity intensity factors for ground water supply; | |
Electricity intensity factors for recycled water supply; | |
Electricity intensity factors for water treatment; | |
Electricity intensity factors for water distribution; | |
Electricity intensity factors for wastewater treatment; | |
The proportion of surface water in total water resources supply; | |
The proportion of ground water in total water resources supply; | |
The proportion of recycled water in total water resources supply; | |
Coal consumption intensity factor for coal-fired power; | |
The amounts of available coal resource for coal-fired power generation; | |
The life cycle CO2 emissions coefficient; | |
The SO2 emission coefficient; | |
The NOX emission coefficient; | |
The NOX emission coefficient; | |
The wastewater emissions coefficient; | |
The total allowance amounts of life cycle CO2 emissions; | |
The total allowance amounts of SO2 emissions; | |
The total allowance amounts of NOX emissions; | |
The total allowance amounts of PM emissions; | |
Decision Variables | |
The electricity-generation amounts of each electricity-conversion technology; | |
The electricity generated from the capacity expansion for each electric power; | |
The optimized electricity-generation schemes of each electricity-conversion technology; | |
The electricity consumption amounts for surface water supply of electricity generation; | |
The electricity consumption amounts for ground water supply of electricity generation; | |
The electricity consumption amounts for recycled water supply of electricity generation; | |
The electricity consumption amounts for water treatment of electricity generation; | |
The electricity consumption amounts for water distribution to electricity-generation enterprise; | |
The electricity consumption amounts for wastewater treatment of electricity generation; | |
The electricity consumption amounts for surface water supply of primary energy production (i.e., coal, crude oil, and natural gas); | |
The electricity consumption amounts for groundwater supply of primary energy production (i.e., coal, crude oil, and natural gas); | |
The electricity consumption amounts for recycled water supply of primary energy production (i.e., coal, crude oil, and natural gas); | |
The electricity consumption amounts for water treatment of primary energy production (i.e., coal, crude oil, and natural gas); | |
The electricity consumption amounts for water distribution to primary energy production enterprise (i.e., coal, crude oil, and natural gas); | |
The amounts of exported electricity; | |
Continuous variable of electric capacity expansion of each electricity power type; | |
The total water consumption amounts for coal production; | |
The total water consumption amounts for crude oil production; | |
The total water consumption amounts for natural gas production; | |
The total cooling water consumption amounts for each electricity power type; | |
The total boiler water consumption amounts for each electricity power type; | |
The total desulfurization water consumption amounts for each electricity power type; | |
The total water consumption amounts for each renewable power; | |
The coal consumption amounts of coal-fired power; | |
The life cycle CO2 emission amounts; | |
The SO2 emission amounts; | |
The NOx emission amounts; | |
The PM emission amounts; | |
The wastewater emission amounts; | |
The production amounts for coal resource; | |
The production amounts for crude oil resource; | |
The production amounts for natural gas resource; |
Appendix A. The Detailed Formulation of T2FP and CCP
Appendix A.1. Type-2 Fuzzy Programming
- (i)
- When the generalized credibility level , the model Formulations (A3)–(A6) are equivalent to:
- (ii)
- When the generalized credibility level , the model Formulations (A3)–(A6) are equivalent to:
- (iii)
- When the generalized credibility level , the model Formulations (A3)–(A6) are equivalent to:
- (iv)
- When the generalized credibility level , the model Formulations (A3)–(A6) are equivalent to:
Appendix A.2. Chance-Constrained Programming (CCP)
Appendix B. Main Input Data
Period 1 | Coal Price (Yuan/ton) | (699.98, 704.98, 709.98; 0.6, 0.7) |
Primary Energy Product Cost (Yuan/ton of SCE) | ||
Coal | (214.80, 215.00, 215.20; 0.6, 0.7) | |
Crude oil | (189.90, 190.00, 190.10; 0.6, 0.7) | |
Coal | (246.96, 247.06, 247.16; 0.6, 0.7) | |
Variable Costs for Each Electricity Power Conversion Technology (Yuan/MWh) | ||
Coal-fired | (455.52, 457.53, 459.53; 0.6, 0.7) | |
Wind | (330.12, 332.12, 334.12; 0.6, 0.7) | |
Hydro | (185.2, 187.21, 189.21; 0.6, 0.7) | |
Solar | (529.38, 531.38, 533.38; 0.6, 0.7) | |
Fix Costs for Each Electricity Power Conversion Technology (Yuan/kWh) | ||
Coal-fired | (2552.93, 2553.13, 2553.33; 0.6, 0.7) | |
Wind | (504.61, 504.81, 505.01; 0.6, 0.7) | |
Hydro | (10,627.48, 10,627.68, 10,627.88; 0.6, 0.7) | |
Solar | (7638.45, 7638.65, 7638.85; 0.6, 0.7) | |
Period 2 | Coal Price (Yuan/ton) | (710.91, 715.91, 720.91; 0.6, 0.7) |
Primary Energy Product Cost (Yuan/ton of SCE) | ||
Coal | (218.13, 218.33, 218.53; 0.6, 0.7) | |
Crude oil | (192.85, 192.95, 193.05; 0.6, 0.7) | |
Coal | (250.79, 250.89, 250.99; 0.6, 0.7) | |
Variable Costs for Each Electricity Power Conversion Technology (Yuan/MWh) | ||
Coal-fired | (462.62, 464.62, 466.62; 0.6, 0.7) | |
Wind | (335.26, 337.26, 339.26; 0.6, 0.7) | |
Hydro | (188.11, 190.11, 192.11; 0.6, 0.7) | |
Solar | (537.62, 539.62, 541.62; 0.6, 0.7) | |
Fix Costs for Each Electricity Power Conversion Technology (Yuan/kWh) | ||
Coal-fired | (2592.50, 2592.70, 2592.90; 0.6, 0.7) | |
Wind | (512.44, 512.64, 512.84; 0.6, 0.7) | |
Hydro | (10,792.21, 10,792.41, 10,792.61; 0.6, 0.7) | |
Solar | (7756.84, 7757.04, 7757.24; 0.6, 0.7) | |
Period 3 | Coal Price (Yuan/ton) | (722.00, 727.00, 732.00; 0.6, 0.7) |
Primary energy product cost(Yuan/ton of SCE) | ||
Coal | (221.52, 221.72, 221.92; 0.6, 0.7) | |
Crude oil | (195.83, 195.94, 196.03; 0.6, 0.7) | |
Coal | (254.67, 254.77, 254.87; 0.6, 0.7) | |
Variable Costs for Each Electricity Power Conversion Technology (Yuan/MWh) | ||
Coal-fired | (469.82, 471.82, 473.82; 0.6, 0.7) | |
Wind | (340.49, 342.49, 344.49; 0.6, 0.7) | |
Hydro | (191.06, 193.06, 195.06; 0.6, 0.7) | |
Solar | (545.99, 547.99, 549.99; 0.6, 0.7) | |
Fix Costs for Each Electricity Power Conversion Technology (Yuan/kWh) | ||
Coal-fired | (2632.69, 2632.89, 2633.09; 0.6, 0.7) | |
Wind | (520.39, 520.59, 520.79; 0.6, 0.7) | |
Hydro | (10,959.49, 10,959.69, 10,959.89; 0.6, 0.7) | |
Solar | (7877.08, 7877.28, 7877.48; 0.6, 0.7) | |
Period 4 | Coal Price (Yuan/ton) | (733.27, 738.27, 743.27; 0.6, 0.7) |
Primary Energy Product Cost (Yuan/ton of SCE) | ||
Coal | (224.95, 225.15, 225.35; 0.6, 0.7) | |
Crude oil | (198.87, 198.97, 199.07; 0.6, 0.7) | |
Coal | (258.62, 258.72, 258.23; 0.6, 0.7) | |
Variable Costs for Each Electricity Power Conversion Technology (Yuan/MWh) | ||
Coal-fired | (477.14, 479.14, 481.14; 0.6, 0.7) | |
Wind | (345.80, 347.80, 349.80; 0.6, 0.7) | |
Hydro | (194.05, 196.05, 198.05; 0.6, 0.7) | |
Solar | (554.48, 556.48, 558.48; 0.6, 0.7) | |
Fix Costs for Each Electricity Power Conversion Technology (Yuan/kWh) | ||
Coal-fired | (2673.50, 2673.70, 2673.90; 0.6, 0.7) | |
Wind | (528.45, 528.65, 528.85; 0.6, 0.7) | |
Hydro | (11,129.37, 11,129.57, 11,129.77; 0.6, 0.7) | |
Solar | (7999.18, 7999.38, 7999.58; 0.6, 0.7) | |
Period 5 | Coal Price (Yuan/ton) | (744.72, 749.72, 754.72; 0.6, 0.7) |
Primary Energy Product Cost (Yuan/ton of SCE) | ||
Coal | (228.44, 228.64, 228.84; 0.6, 0.7) | |
Crude oil | (201.96, 202.06, 202.16; 0.6, 0.7) | |
Coal | (262.63, 262.73, 262.83; 0.6, 0.7) | |
Variable Costs for Each Electricity Power Conversion Technology (Yuan/MWh) | ||
Coal-fired | (484.56, 486.56, 488.56; 0.6, 0.7) | |
Wind | (351.19, 353.19, 355.19; 0.6, 0.7) | |
Hydro | (197.09, 199.09, 201.09; 0.6, 0.7) | |
Solar | (563.10, 565.10, 567.10; 0.6, 0.7) | |
Fix Costs for Each Electricity Power Conversion Technology (Yuan/kWh) | ||
Coal-fired | (2714.94, 2715.14, 2715.34; 0.6, 0.7) | |
Wind | (536.65, 536.85, 537.05; 0.6, 0.7) | |
Hydro | (11,301.88, 11,302.08, 11,302.28; 0.6, 0.7) | |
Solar | (8123.17, 8123.37, 8123.57; 0.6, 0.7) |
Appendix C. The Detailed Results of ARIMA Model
Variable | ADF Test Statistic | ADF Statistic at 5% | Results |
---|---|---|---|
LogE | −0.702331 | −3.012363 | Fail to reject the null |
∆LogE | −3.127237 | −3.004861 | Reject the null |
Model | AIC | SC | R2 |
---|---|---|---|
ARIMA (2, 1, 4) | −1.825746 | −1.430791 | 0.657497 |
ARIMA (2, 1, 5) | −1.743897 | −1.299573 | 0.659136 |
ARIMA (3, 1, 4) | −1.745178 | −1.300854 | 0.661824 |
ARIMA (2, 1, 2) | −1.769762 | −1.473546 | 0.530302 |
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μ = 0.0% | μ = 0.5% | μ = 1.0% | μ = 1.6% | |||
---|---|---|---|---|---|---|
Period 1 | Electricity-generation process | TQCW | 541.03 | 538.14 | 535.25 | 531.78 |
TQBW | 122.26 | 121.61 | 120.96 | 120.18 | ||
TQDW | 38.64 | 38.44 | 38.23 | 37.98 | ||
TQRWH | 40.11 | 40.11 | 40.11 | 40.11 | ||
TQRWS | 0.50 | 0.57 | 0.64 | 0.73 | ||
Primary energy production process | PECW | 174.83 | 174.83 | 174.83 | 174.83 | |
PEOW | 1.23 | 1.23 | 1.23 | 1.23 | ||
PENW | 15.20 | 15.20 | 15.20 | 15.20 | ||
Period 2 | Electricity-generation process | TQCW | 575.97 | 572.90 | 569.83 | 566.14 |
TQBW | 125.67 | 125.00 | 124.33 | 123.52 | ||
TQDW | 37.18 | 36.98 | 36.79 | 36.55 | ||
TQRWH | 40.11 | 40.11 | 40.11 | 40.11 | ||
TQRWS | 0.51 | 0.58 | 0.66 | 0.74 | ||
Primary energy production process | PECW | 175.75 | 175.75 | 175.75 | 175.75 | |
PEOW | 0.99 | 0.99 | 0.99 | 0.99 | ||
PENW | 15.20 | 15.20 | 15.20 | 15.20 | ||
Period 3 | Electricity-generation process | TQCW | 686.33 | 682.67 | 679.01 | 674.62 |
TQBW | 144.04 | 143.27 | 142.50 | 141.58 | ||
TQDW | 39.44 | 39.23 | 39.02 | 38.77 | ||
TQRWH | 40.11 | 40.11 | 40.11 | 40.11 | ||
TQRWS | 0.53 | 0.62 | 0.71 | 0.81 | ||
Primary energy production process | PECW | 176.67 | 176.67 | 176.67 | 176.67 | |
PEOW | 0.72 | 0.72 | 0.72 | 0.72 | ||
PENW | 15.21 | 15.21 | 15.21 | 15.21 | ||
Period 4 | Electricity-generation process | TQCW | 814.37 | 810.03 | 805.69 | 800.50 |
TQBW | 170.91 | 170.00 | 169.09 | 168.00 | ||
TQDW | 46.80 | 46.55 | 46.30 | 46.00 | ||
TQRWH | 40.11 | 40.11 | 40.11 | 46.02 | ||
TQRWS | 0.55 | 0.66 | 0.76 | 0.87 | ||
Primary energy production process | PECW | 177.58 | 177.58 | 177.58 | 177.58 | |
PEOW | 0.43 | 0.43 | 0.43 | 0.43 | ||
PENW | 15.21 | 15.21 | 15.21 | 15.21 | ||
Period 5 | Electricity-generation process | TQCW | 894.48 | 889.71 | 884.95 | 879.29 |
TQBW | 187.72 | 186.72 | 185.72 | 184.54 | ||
TQDW | 51.40 | 51.13 | 50.85 | 50.53 | ||
TQRWH | 40.11 | 40.11 | 40.11 | 61.56 | ||
TQRWS | 0.57 | 0.69 | 0.80 | 0.89 | ||
Primary energy production process | PECW | 178.50 | 178.50 | 178.50 | 178.50 | |
PEOW | 0.10 | 0.10 | 0.10 | 0.10 | ||
PENW | 15.21 | 15.21 | 15.21 | 15.21 |
μ = 0.0% | μ = 0.5% | μ = 1.0% | μ = 1.6% | |||
---|---|---|---|---|---|---|
Period 1 | Electricity-generation process | ECWES | 372.39 | 370.55 | 368.70 | 366.49 |
ECWEG | 104.51 | 103.99 | 103.47 | 102.85 | ||
ECWER | 11.02 | 10.97 | 10.91 | 10.85 | ||
ECWT | 307.41 | 305.89 | 304.37 | 302.54 | ||
ECWD | 367.56 | 365.74 | 363.92 | 361.74 | ||
ECWW | 13.74 | 13.67 | 13.60 | 13.51 | ||
Primary energy production process | PCWES | 95.92 | 95.92 | 95.92 | 95.92 | |
PCWEG | 26.92 | 26.92 | 26.92 | 26.92 | ||
PCWER | 2.84 | 2.84 | 2.84 | 2.84 | ||
PCWT | 79.18 | 79.18 | 79.18 | 79.18 | ||
PCWD | 94.67 | 94.67 | 94.67 | 94.67 | ||
Period 2 | Electricity-generation process | ECWES | 390.90 | 388.96 | 387.01 | 384.68 |
ECWEG | 109.70 | 109.15 | 108.61 | 107.96 | ||
ECWER | 11.57 | 11.51 | 11.45 | 11.38 | ||
ECWT | 322.69 | 321.09 | 319.49 | 317.56 | ||
ECWD | 385.83 | 383.91 | 381.99 | 379.69 | ||
ECWW | 14.50 | 14.42 | 14.35 | 14.25 | ||
Primary energy production process | PCWES | 96.26 | 96.26 | 96.26 | 96.26 | |
PCWEG | 27.01 | 27.01 | 27.01 | 27.01 | ||
PCWER | 2.85 | 2.85 | 2.85 | 2.85 | ||
PCWT | 79.46 | 79.46 | 79.46 | 79.46 | ||
PCWD | 95.01 | 95.01 | 95.01 | 95.01 | ||
Period 3 | Electricity-generation process | ECWES | 456.60 | 454.31 | 452.03 | 449.29 |
ECWEG | 128.14 | 127.50 | 126.86 | 126.09 | ||
ECWER | 13.51 | 13.45 | 13.38 | 13.30 | ||
ECWT | 376.93 | 375.04 | 373.16 | 370.90 | ||
ECWD | 450.67 | 448.42 | 446.17 | 443.47 | ||
ECWW | 17.09 | 17.00 | 16.91 | 16.80 | ||
Primary energy production process | PCWES | 96.59 | 96.59 | 96.59 | 96.59 | |
PCWEG | 27.11 | 27.11 | 27.11 | 27.11 | ||
PCWER | 2.86 | 2.86 | 2.86 | 2.86 | ||
PCWT | 79.73 | 79.73 | 79.73 | 79.73 | ||
PCWD | 95.33 | 95.33 | 95.33 | 95.33 | ||
Period 4 | Electricity-generation process | ECWES | 537.98 | 535.28 | 532.57 | 532.29 |
ECWEG | 150.98 | 150.22 | 149.46 | 149.38 | ||
ECWER | 15.92 | 15.84 | 15.76 | 15.75 | ||
ECWT | 444.11 | 441.88 | 439.65 | 439.42 | ||
ECWD | 531.01 | 528.34 | 525.67 | 525.39 | ||
ECWW | 19.93 | 19.83 | 19.72 | 19.59 | ||
Primary energy production process | PCWES | 96.90 | 96.90 | 96.90 | 96.90 | |
PCWEG | 27.19 | 27.19 | 27.19 | 27.19 | ||
PCWER | 2.87 | 2.87 | 2.87 | 2.87 | ||
PCWT | 79.99 | 79.99 | 79.99 | 79.99 | ||
PCWD | 95.64 | 95.64 | 95.64 | 95.64 | ||
Period 5 | Electricity-generation process | ECWES | 588.91 | 585.94 | 582.97 | 590.17 |
ECWEG | 165.27 | 164.44 | 163.60 | 165.62 | ||
ECWER | 17.43 | 17.34 | 17.25 | 17.47 | ||
ECWT | 486.15 | 483.70 | 481.25 | 487.20 | ||
ECWD | 581.27 | 578.34 | 575.41 | 582.52 | ||
ECWW | 21.51 | 21.40 | 21.28 | 21.14 | ||
Primary energy production process | PCWES | 97.20 | 97.20 | 97.20 | 97.20 | |
PCWEG | 27.28 | 27.28 | 27.28 | 27.28 | ||
PCWER | 2.88 | 2.88 | 2.88 | 2.88 | ||
PCWT | 80.24 | 80.24 | 80.24 | 80.24 | ||
PCWD | 95.94 | 95.94 | 95.94 | 95.94 |
Wastewater (m3) | SO2 (ton) | NOx (ton) | PM (ton) | |
---|---|---|---|---|
t = 1 | 9305.13 | 40.32 | 38.77 | 9.31 |
t = 2 | 9731.42 | 42.06 | 40.41 | 9.48 |
t = 3 | 11,122.42 | 47.94 | 46.02 | 10.55 |
t = 4 | 12,631.84 | 54.29 | 52.08 | 11.63 |
t = 5 | 13,463.27 | 57.70 | 55.30 | 12.02 |
Optimized Solutions Under Different p Levels | p = 0.01 | p = 0.05 | p = 0.10 | p = 0.15 | p = 0.20 | p = 0.30 |
---|---|---|---|---|---|---|
Electricity Supply (109 kWh) | 4440.93 | 4427.64 | 4420.39 | 4415.59 | 4411.73 | 4405.53 |
Water for Electricity Generation, WEG (106 m3) | ||||||
Cooling water consumption of coal-fired power | 3512.17 | 3499.38 | 3492.40 | 3487.78 | 3484.07 | 3478.10 |
Boiler water consumption of coal-fired power | 750.61 | 611.92 | 610.62 | 609.77 | 609.09 | 607.99 |
Desulfurization water consumption of coal-fired power | 213.46 | 201.53 | 201.17 | 200.94 | 200.76 | 200.46 |
Water demand for hydro power | 200.55 | 161.02 | 161.02 | 161.02 | 161.02 | 161.02 |
Water demand for solar power | 2.68 | 2.10 | 2.10 | 2.10 | 2.10 | 2.10 |
Electricity for Water Supply, EWS (103 kWh) | ||||||
Surface water extraction related electricity consumption | 234.68 | 233.86 | 233.41 | 233.12 | 232.88 | 232.50 |
Ground water extraction related electricity consumption | 65.86 | 65.63 | 65.50 | 65.42 | 65.35 | 65.25 |
Recycled water extraction related electricity consumption | 6.95 | 6.92 | 6.91 | 6.90 | 6.89 | 6.88 |
Water treatment related electricity consumption | 193.73 | 193.05 | 192.69 | 192.44 | 192.24 | 191.93 |
Water distribution related electricity consumption | 231.63 | 230.83 | 230.38 | 230.09 | 229.86 | 229.48 |
Wastewater treatment related electricity consumption | 8.68 | 8.65 | 8.63 | 8.62 | 8.61 | 8.59 |
Pollutants Emission | ||||||
Lifecycle carbon emission (106 ton) | 3711.29 | 3697.88 | 3690.57 | 3685.73 | 3681.83 | 3675.57 |
Wastewater (103 ton) | 175.32 | 174.68 | 174.33 | 174.09 | 173.91 | 173.61 |
SO2 emission (103 ton) | 755.10 | 752.34 | 750.83 | 749.83 | 749.03 | 747.74 |
NOx emission (103 ton) | 724.73 | 722.08 | 720.63 | 719.67 | 718.90 | 717.66 |
PM emission (103 ton) | 154.90 | 154.33 | 154.02 | 153.81 | 153.64 | 153.38 |
System cost (RMB 109) | 4891.39 | 4881.66 | 4876.38 | 4872.88 | 4870.05 | 4865.51 |
Optimized Solutions Under Different Credibility Levels | α = 0.8 | α = 0.9 | α = 1.0 |
---|---|---|---|
Electricity Generation (106 kWh) | |||
Coal-fired | 2,841,973.96 | 2,841,653.93 | 2,841,441.74 |
Wind | 509,858.49 | 509,777.01 | 509,719.96 |
Hydro | 14,374.44 | 14,486.89 | 14,562.29 |
Solar | 90,527.27 | 90,819.75 | 91,015.88 |
Water for Electricity Generation, WEG (106 m3) | 4662.08 | 4663.14 | 4663.86 |
Electricity for Water Supply, EWS (103 kWh) | 738.77 | 738.93 | 739.05 |
Pollutant Emission | |||
Lifecycle carbon emission (106 ton) | 3698.27 | 3697.88 | 3697.62 |
Wastewater (103 ton) | 174,696.07 | 174,676.17 | 174,662.97 |
SO2 emission (103 ton) | 752.42 | 752.34 | 752.28 |
NOx emission (103 ton) | 722.16 | 722.08 | 722.02 |
PM emission (103 ton) | 154.35 | 154.33 | 154.32 |
System cost (RMB 109) | 4876.25 | 4881.66 | 4885.28 |
Optimized Solutions Under AM-CTFPM and CCP | AM-CTFPM | CCP |
---|---|---|
Electricity Generation (109 kWh) | ||
Coal-fired | 2841.65 | 2842.97 |
Wind | 509.78 | 510.11 |
Hydro | 14.49 | 14.03 |
Solar | 90.82 | 89.62 |
Water Demand for Electricity Generation (106 m3) | 4663.14 | 4658.81 |
Water-Related Electricity Consumption (103 kWh) | 738.93 | 738.26 |
Lifecycle carbon emission (106 ton) | 3697.88 | 3699.49 |
Wastewater (106 ton) | 174.68 | 174.76 |
SO2 emission (103 ton) | 752.34 | 752.69 |
NOx emission (103 ton) | 722.08 | 722.41 |
PM emission (103 ton) | 164.34 | 164.42 |
System cost (RMB 109) | 4881.66 | 4855.06 |
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Chen, C.; Yu, L.; Zeng, X.; Huang, G.; Li, Y. Planning an Energy–Water–Environment Nexus System in Coal-Dependent Regions under Uncertainties. Energies 2020, 13, 208. https://doi.org/10.3390/en13010208
Chen C, Yu L, Zeng X, Huang G, Li Y. Planning an Energy–Water–Environment Nexus System in Coal-Dependent Regions under Uncertainties. Energies. 2020; 13(1):208. https://doi.org/10.3390/en13010208
Chicago/Turabian StyleChen, Cong, Lei Yu, Xueting Zeng, Guohe Huang, and Yongping Li. 2020. "Planning an Energy–Water–Environment Nexus System in Coal-Dependent Regions under Uncertainties" Energies 13, no. 1: 208. https://doi.org/10.3390/en13010208
APA StyleChen, C., Yu, L., Zeng, X., Huang, G., & Li, Y. (2020). Planning an Energy–Water–Environment Nexus System in Coal-Dependent Regions under Uncertainties. Energies, 13(1), 208. https://doi.org/10.3390/en13010208