A Stochastic Optimization Model for Carbon Mitigation Path under Demand Uncertainty of the Power Sector in Shenzhen, China
Abstract
:1. Introduction
2. Materials and Methods
2.1. Model Structure and Assumptions
2.2. Mathematical Formulation
- (1)
- Carbon mitigation constraints. Equation (8) means that the total amount of carbon mitigation of each technology should be greater than the planned amount of carbon emission :
- (2)
- Power demand constraints. The amount of power generated by all types of power plants each year should meet the power demand :Power demand is uncertain in the future because it is affected by many factors, such as economic growth rate and economic structure. Set the stochastic volatility of power demand is , then the power demand constraints can be expressed as:As for stochastic volatility , decision-makers need to make decisions before observing the changing value. This is called chance constrained programming, which assumes that some values in the variable are acceptable if they exceed a certain probability:
- (3)
- Installed capacity constraints. Equation (10) means that the installed capacities of each type of power plant should be limited to the upper bound :
- (4)
- Fuel supply constraints. Equation (11) means that the supply of each type of fuel should be limited to the upper bound :
- (5)
- Non-negative constraints. The popularization rate of each type of technology should be set as a non-negative variable, as is shown in Equation (12). The retrofits of coal-fired and gas-fired power plants can be implemented at once, so the popularization rates of these technologies are 0 or 100% (Equation (13)):
2.3. Data Sources
3. Results and Discussion
4. Conclusions
- (1)
- The carbon mitigation technologies of existing coal-fired and gas-fired power plants will be 100% implemented in different years. Two-thirds and the remaining one-third capacity of the coal-fired power plants are going to be decommissioned in 2023 and 2028, respectively. Gas-fired power, distributed photovoltaic power, waste-to-energy power, and CCHP are going to expand their capacities gradually.
- (2)
- The installed capacity and power generation of each type of plant are changing according to their popularization rate. The installed capacity and power generation of the coal-fired power plant are decreasing, while those of other plants are increasing. The gas-fired power plants has the largest installed capacity, increasing from 69.55% to 73.78%.
- (3)
- The total costs spent in the local optimization of the Shenzhen power sector during the planning horizon are 29.29 billion yuan, and the total carbon emission is 36.20 Mt CO2. New gas-fired power has the highest costs as well as the carbon emission.
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Plant Types | Symbol | Carbon Mitigation Types |
---|---|---|
Coal-fired power | i1 | Boiler intelligent blowing optimization |
i2 | Gas ignition system | |
i3 | Retrofitting of boiler air preheater | |
i4 | Steam seal modification for steam turbine | |
i5 | Condenser energy saving system | |
i6 | Retrofit of steam turbine flow passage | |
i7 | Generation capacity enlargement | |
i8 | High voltage variable frequency speed | |
i9 | High-efficiency motor replacement | |
i10 | Coal-fired power decommissions early | |
Gas-fired power | i11 | Increasing the heating surface of the boiler |
i12 | Retrofitting of condensing steam turbine | |
i13 | Waste heat utilization of gas turbine rotor | |
i14 | inlet air cooling of gas turbine | |
i15 | New Gas-fired power | |
Solar power | i16 | Distributed photovoltaic power |
Waste-to-energy | i17 | Waste-to-energy power |
CCHP | i18 | CCHP |
Symbol | Physical Meaning |
---|---|
k | Power plant type () |
t | Year |
i | Carbon mitigation technology type () |
f | Fuel type |
The popularization of carbon mitigation technology i (%) | |
The popularization of carbon mitigation technology implemented in power plant k (%) | |
I | Discount rate (%) |
Stochastic volatility | |
Total capital costs of newly constructed power plants in year t | |
Total capital costs of newly constructed power plant k in year t | |
Total capital costs for implement carbon mitigation technologies in year t | |
Total capital costs of power plant k for implement carbon mitigation technology i in year t | |
Total operation and maintenance costs in year t | |
Total operation and maintenance coat of power plant k in year t | |
Costs of fuel f in year t | |
Costs of fuel f in year t | |
Price of fuel f in year t | |
Demand for fuel f of power plant k in year t | |
Total costs of export power in year t | |
Installed capacity that can implement technology i in year t | |
The annual saved amount of fuel j after implementing technology i | |
Carbon emission factor of fuel f | |
The planned amount of carbon mitigation in year t | |
The installed capacity of power plant k in year t | |
Annual operational hours of power plant k | |
The maximum installed capacities of newly constructed power plant k in year t | |
The maximum installed capacities of newly constructed power plant k | |
Power demand in power sector in year t | |
Export power supply | |
The upper limit of installed capacity of power plant k | |
The upper limit of fuel f supply in year t | |
The probability of event A |
Technology | Total Costs (Billion Yuan) | Proportion | Total Carbon Emission (Mt CO2) | Proportion |
---|---|---|---|---|
i1 | −0.0031 | −0.01% | −0.0277 | −0.08% |
i2 | 0.0272 | 0.09% | 0.0228 | 0.06% |
i3 | 0.0010 | 0.00% | −0.0177 | −0.05% |
i4 | −0.0005 | 0.00% | −0.0055 | −0.02% |
i5 | −0.0096 | −0.03% | −0.0998 | −0.28% |
i6 | −0.0128 | −0.04% | −0.1802 | −0.50% |
i7 | −0.0005 | 0.00% | −0.0166 | −0.05% |
i8 | −0.0001 | 0.00% | −0.0026 | −0.01% |
i9 | 0.0008 | 0.00% | −0.0063 | −0.02% |
i10 | 0.7902 | 2.70% | 10.1535 | 28.05% |
i11 | −0.0310 | −0.11% | −0.0529 | −0.15% |
i12 | −0.1851 | −0.63% | −0.2881 | −0.80% |
i13 | −0.0179 | −0.06% | −0.0309 | −0.09% |
i14 | −0.0027 | −0.01% | −0.0158 | −0.04% |
i15 | 18.6721 | 63.76% | 23.2824 | 64.31% |
i16 | 8.2442 | 28.15% | 1.2516 | 3.46% |
i17 | 1.6674 | 5.69% | 2.1611 | 5.97% |
i18 | 0.1468 | 0.50% | 0.0770 | 0.21% |
Total | 29.2866 | 100.00% | 36.2042 | 100.00% |
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Hu, G.; Ma, X.; Ji, J. A Stochastic Optimization Model for Carbon Mitigation Path under Demand Uncertainty of the Power Sector in Shenzhen, China. Sustainability 2017, 9, 1942. https://doi.org/10.3390/su9111942
Hu G, Ma X, Ji J. A Stochastic Optimization Model for Carbon Mitigation Path under Demand Uncertainty of the Power Sector in Shenzhen, China. Sustainability. 2017; 9(11):1942. https://doi.org/10.3390/su9111942
Chicago/Turabian StyleHu, Guangxiao, Xiaoming Ma, and Junping Ji. 2017. "A Stochastic Optimization Model for Carbon Mitigation Path under Demand Uncertainty of the Power Sector in Shenzhen, China" Sustainability 9, no. 11: 1942. https://doi.org/10.3390/su9111942
APA StyleHu, G., Ma, X., & Ji, J. (2017). A Stochastic Optimization Model for Carbon Mitigation Path under Demand Uncertainty of the Power Sector in Shenzhen, China. Sustainability, 9(11), 1942. https://doi.org/10.3390/su9111942