Market Trading Model of Urban Energy Internet Based on Tripartite Game Theory
Abstract
:1. Introduction
2. Materials and Methods
2.1. Tripartite Game Model for the Energy Internet Market
2.1.1. Market Trading Mechanism
2.1.2. Tripartite Game Model
- (1)
- Game entities : energy internet market entities include all of the energy suppliers ,, energy service providers of both power grid companies and heating companies , and the large users .
- (2)
- Game strategies : in the energy internet market, the game strategy of each participant is its quotation price.
- (3)
- Game utilities : every rational participant wants to make a deal and get a payoff under the Nash equilibrium.
2.2. Market Entities’ Cost–Income Model
2.2.1. Energy Suppliers
- (a)
- Transaction revenue function : For each energy supplier ,, its transaction revenue by trading electricity and heat can be represented as
- (b)
- Service fee function : Energy service providers charge service fees for transactions between energy suppliers and large user:
- (c)
- Other benefit function : other benefits of energy suppliers are expressed only at cost. In order to show the relationship between energy suppliers’ electricity and heat energy transactions and their respective costs, the electricity and heat energy costs are calculated separately in the cost model. Therefore, other benefit of energy suppliers can be expressed as
2.2.2. Large User
- (a)
- Transaction revenue function : can be formulated as
- (b)
- Service fee function : can be formulated as:
- (c)
- Other benefit function : large users have no other benefits, which is assumed to be , since the large user can use electric heating equipment to convert electrical energy bought from the grid company into heat so as to meet the heat demand.
2.2.3. Power Grid Company as an Energy Service Provider
- (a)
- Transaction revenue function :
- (b)
- Service fee :
- (c)
- Other benefit : Other benefits for the power grid company as an energy service provider are only related to its own costs:
2.2.4. Heating company as an energy service provider
- (a)
- Transaction revenue :
- (b)
- Service fee function :
- (c)
- Other benefit function . Other benefits for the heating company as an energy service provider are only related to its own costs:
2.3. A New Nash Equilibrium Solving Method for the Tripartite Game Model
3. Results
4. Discussion
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
Appendix A
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Parameters | Values (unit) | Parameters | Values (unit) |
---|---|---|---|
3 MW | 5 MW | ||
0.5 yuan/(kW·h) | 0.6 yuan/(kW·h) | ||
0.5 yuan/(kW·h) | 0.9 | ||
0.2 yuan /(kW·h) | 0.2 yuan/(kW·h) | ||
1.2 yuan/(kW·h) | 0.8 yuan/(kW·h) | ||
0.8 yuan/(kW·h) | yuan/(kW·h) | ||
yuan /(kW·h) | yuan/(kW·h) |
Variables | User Trading Mode | Strategy Combination | Large User (yuan) | Energy Supplier (yuan) | Power Grid Company (yuan) | Heating Company (yuan) |
---|---|---|---|---|---|---|
With the power grid company | Equilibrium strategy 0 | −5000 | 0 | 2000 | 900 | |
Energy supplier’s | With the heating company | Non-equilibrium strategy 1 | −4700 | -500 | 3000 | 600 |
With the power grid company | Equilibrium strategy 2 | −5000 | 0 | 2000 | 900 | |
Power grid company’s | With the heating company | Non-equilibrium strategy 3 | −4700 | 500 | 1000 | 600 |
With the power grid company | Equilibrium strategy 4 | −5000 | 0 | 2000 | 900 | |
Heating company’s | With the power grid company | Equilibrium strategy 5 | −5000 | 0 | 2000 | 900 |
With the power grid company | Equilibrium strategy 6 | −5000 | 0 | 2000 | 900 |
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Liu, J.; Chen, J.; Wang, C.; Chen, Z.; Liu, X. Market Trading Model of Urban Energy Internet Based on Tripartite Game Theory. Energies 2020, 13, 1834. https://doi.org/10.3390/en13071834
Liu J, Chen J, Wang C, Chen Z, Liu X. Market Trading Model of Urban Energy Internet Based on Tripartite Game Theory. Energies. 2020; 13(7):1834. https://doi.org/10.3390/en13071834
Chicago/Turabian StyleLiu, Jun, Jinchun Chen, Chao Wang, Zhang Chen, and Xinglei Liu. 2020. "Market Trading Model of Urban Energy Internet Based on Tripartite Game Theory" Energies 13, no. 7: 1834. https://doi.org/10.3390/en13071834
APA StyleLiu, J., Chen, J., Wang, C., Chen, Z., & Liu, X. (2020). Market Trading Model of Urban Energy Internet Based on Tripartite Game Theory. Energies, 13(7), 1834. https://doi.org/10.3390/en13071834