Energy Trading and Pricing in Microgrids with Uncertain Energy Supply: A Three-Stage Hierarchical Game Approach
Abstract
:1. Introduction
2. Problem Formulation
- Leader: the energy provider determines the energy purchase and the pricing strategy to maximize its profit.
- Followers: the consumers determine the energy demands to maximize their payoffs.
3. Wind Power Generation Model
4. Scenario A: The Three-Stage Game for Price-Taking Consumers
4.1. Consumer’s Energy Demands in Stage III
4.2. Optimal Pricing Strategy in Stage II
- (excessive supply): doesn’t intersect with , ;
- (excessive supply): has one intersection with , where has a non-negative slope, ;
- (conservative supply): has one intersection with , where has a negative slope, , where is the intersection point of and and is the optimal price announced by the energy provider.
4.3. Energy Supply Strategy in Stage I
- (1)
- Interval I: . In this interval, the energy provider’s profit function is:
- (2)
- Interval II: . The energy provider’s profit function is:
5. Scenario B: The Three-Stage Game for Price-Anticipating Consumers
5.1. Consumer’s Energy Demands in Stage III
5.2. Optimal Pricing Strategy in Stage II
- (excessive supply): , ,
- (conservative supply): , ,
- (excessive supply): has one intersection with , where has a non-negative slope, ,
- (conservative supply): has three intersections with , ,
- (conservative supply): has one intersection with , where has a negative slope, .
- (excessive supply): doesn’t intersect with , ,
- (excessive supply): has one or two intersections with , where both intersections are located in the increasing interval of , ,
- (conservative supply): has two intersections with , where both intersections are located in the both sides of , respectively, .
5.3. Energy Supply Strategy in Stage I
- (1)
- Interval I: . In this interval, the energy provider’s profit function is:
- (2)
- Interval II: . The energy provider’s profit function is:
6. Simulation Results
7. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Total Energy Obtained | Optimal Price | Optimal Profit |
---|---|---|
in Stages I and II | ||
Excessive Supply Regime: | in Equation (17) | |
Conservative Supply Regime: | in Equation (18) |
Total Energy Obtained | Optimal Parameter | Optimal Profit |
---|---|---|
in Stages I and II | ||
Excessive Supply Regime: | in Equation (43) | |
Conservative Supply Regime: | in Equation (44) |
Scenario A | Scenario B | |||
---|---|---|---|---|
Profit | Profit | |||
0.1 | 349 | 33.79 | 399.6 | 31.52 |
0.3 | 246 | 34.61 | 288.6 | 33.27 |
0.6 | 186 | 35.2 | 209 | 35.13 |
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Ma, K.; Hu, S.; Yang, J.; Dou, C.; Guerrero, J.M. Energy Trading and Pricing in Microgrids with Uncertain Energy Supply: A Three-Stage Hierarchical Game Approach. Energies 2017, 10, 670. https://doi.org/10.3390/en10050670
Ma K, Hu S, Yang J, Dou C, Guerrero JM. Energy Trading and Pricing in Microgrids with Uncertain Energy Supply: A Three-Stage Hierarchical Game Approach. Energies. 2017; 10(5):670. https://doi.org/10.3390/en10050670
Chicago/Turabian StyleMa, Kai, Shubing Hu, Jie Yang, Chunxia Dou, and Josep M. Guerrero. 2017. "Energy Trading and Pricing in Microgrids with Uncertain Energy Supply: A Three-Stage Hierarchical Game Approach" Energies 10, no. 5: 670. https://doi.org/10.3390/en10050670