Demand Response of Integrated Zero-Carbon Power Plant: Model and Method
Abstract
:1. Introduction
- (1)
- A mathematical model that considers the variable green value of renewable energy output is introduced for IZP operations.
- (2)
- A demand response mechanism is explored for IZPs through a Stackelberg game. IZPs make a great contribution to reducing the peak load in the power grid by interacting with the ISO.
- (3)
- An iterative algorithm is put forward based on the idea of dichotomy aiming at identifying the optimal demand response strategy in the incomplete information environment of the gaming process efficiently and precisely.
2. Model of Integrated Smart Zero-Carbon Power Plants and the ISO
2.1. Integrated Zero-Carbon Power Plant Model
- (1)
- Energy storage device model
- (2)
- Green energy producer model
- (3)
- Energy user model
- (4)
- Dispatching model of the IZP
2.2. Load Reduction Target of the ISO
3. Demand Response Mechanism and the Algorithm to Calculate the Optimal Strategy
3.1. Stackelberg Game between ISO and the IZP in the Demand Response Programs
- (1)
- Follower problem of IZP
- (2)
- Leader problem of ISO
3.2. Algorithm Based on the Principle of Dichotomy to Calculate the Optimal Demand Response Strategy
4. Case Study
4.1. Parameter Settings
4.2. Simulation Results
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Nomenclature
Labels | |
i | label of green energy generator |
I | total number of green energy generators |
j | label of power user |
J | total number of power users |
k | label of the energy storage |
m | label of the IZP |
M | total number of IZPs |
n | iteration time |
N | total iteration time limit |
t | label of time period |
Variables and Sets | |
production cost per unit of green energy | |
green energy production cost | |
cost of purchasing electricity from the power grid | |
overall social cost | |
cost of the IZP before demand response program | |
cost of the IZP after demand response program | |
increase in the cost of the IZP | |
coefficients in the energy consumption utility function | |
green value of renewable energy | |
energy value of renewable energy generated sold to the grid | |
fee to buy energy from the power grid | |
upper limit of green value | |
profit of renewable energy power generator | |
total load reduction amount | |
load reduction amount of IZP m | |
lower load reduction amount of IZP m | |
upper load reduction amount of IZP m | |
discharging power of energy storage | |
charging power of energy storage | |
amount of power generated | |
amount of power sold to the power grid | |
power consumed by the power consumers themselves | |
energy bought from the power grid | |
lower limit of power consumption | |
upper limit of power consumption | |
maximum charging and discharging power of energy storage | |
forecasting peak load before demand response | |
forecasting peak load after demand response | |
power purchased from power grid before demand response in peak load period | |
power purchased from power grid after demand response in peak load period | |
power sold to power grid before demand response in peak load period | |
power sold to power grid after demand response in peak load period | |
energy level in energy storage device | |
upper energy limit of the energy storage | |
energy consumption utility function | |
binary variables indicating the charging and discharging state | |
total utility of ISO | |
utility of the ISO to reduce peak load | |
coefficients of the utility function to reduce load | |
weighing factor of the ISO to balance the load reduction utility and the loss of the IZP’s profit | |
length of the period | |
elastic coefficient of green value. | |
set of I renewable power generators in the IZP | |
set of J renewable energy users in the IZP | |
set of K energy storage devices in the IZP |
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Time (h) | Sold Amount (kW) | Bought Amount (kW) |
---|---|---|
1 | 63.1 | 132.7 |
2 | 78.9 | 141.6 |
3 | 154.7 | 258.6 |
4 | 82.1 | 155.8 |
5 | 151.9 | 262.1 |
6 | 140.9 | 250.8 |
7 | 100.8 | 0 |
8 | 102.7 | 0 |
9 | 150.8 | 88.5 |
10 | 100.8 | 0 |
11 | 100.8 | 0 |
12 | 131.9 | 90.7 |
13 | 95.2 | 604.6 |
14 | 55.3 | 535.7 |
15 | 93.1 | 583.0 |
16 | 77.7 | 454.9 |
17 | 100.8 | 647.3 |
18 | 70.5 | 544.5 |
19 | 107.9 | 445.6 |
20 | 93.3 | 328.0 |
21 | 119.7 | 374.4 |
22 | 119.7 | 404.2 |
23 | 106.9 | 348.1 |
24 | 66.3 | 308.5 |
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Xia, R.; Dai, J.; Cheng, X.; Fan, J.; Ye, J.; Jia, Q.; Chen, S.; Zhang, Q. Demand Response of Integrated Zero-Carbon Power Plant: Model and Method. Energies 2024, 17, 3431. https://doi.org/10.3390/en17143431
Xia R, Dai J, Cheng X, Fan J, Ye J, Jia Q, Chen S, Zhang Q. Demand Response of Integrated Zero-Carbon Power Plant: Model and Method. Energies. 2024; 17(14):3431. https://doi.org/10.3390/en17143431
Chicago/Turabian StyleXia, Rong, Jun Dai, Xiangjie Cheng, Jiaqing Fan, Jing Ye, Qiangang Jia, Sijie Chen, and Qiang Zhang. 2024. "Demand Response of Integrated Zero-Carbon Power Plant: Model and Method" Energies 17, no. 14: 3431. https://doi.org/10.3390/en17143431
APA StyleXia, R., Dai, J., Cheng, X., Fan, J., Ye, J., Jia, Q., Chen, S., & Zhang, Q. (2024). Demand Response of Integrated Zero-Carbon Power Plant: Model and Method. Energies, 17(14), 3431. https://doi.org/10.3390/en17143431