Bayesian Game-Theoretic Bidding Optimization for Aggregators Considering the Breach of Demand Response Resource
Abstract
:1. Introduction
- A DR framework is proposed to optimize the bidding strategy of DR resource for community operators considering the risk of DR resource’s breach.
- A Bayesian game based approach is formulated for the proposed scenario with incomplete information to promote the participants’ profit, and then an iterative algorithm is designed to obtain the bidding equilibrium among community operators.
- A case study is carried out to verify the performance and effectiveness of the proposed Bayesian game approach by simulating the bidding strategy optimization of 3 community operators.
2. Proposed DR Framework
3. System Model
3.1. Gas Boiler Model
3.2. Energy Storage Model
3.3. Bidding Price Model
3.4. DR Resource’s Breach Model
4. Bayesian Game among Community Operators
4.1. Community Operator’s Profit Model
- Profit from DR purchaserFrom DR purchaser, community operator’s income is the earning for selling DR resource, and cost is the punishment for DR resource’s breach. According to the bidding price, when DR resource of community operator n is the ith grade, then the profit from DR purchaser can be expressed as
- Profit from gas boilerFrom gas boiler, community operator’s income is the earning for providing heat to users, and cost is the energy cost for natural gas, investment and maintenance cost. Accordingly, profit from gas boiler can be expressed as
- Profit from energy storageFrom energy storage, community operator’s income is the earning for providing electricity to users, and cost is the electricity cost for charging storage, investment and maintenance cost. Accordingly, profit from energy storage can be expressed as
4.2. Game Formulation with Complete Information
- Players: All community operators who willing to participating in the bidding market.
- Strategies: each community changes its bidding strategy to maximize its payoff.
- Payoffs: the payoff of each community operator is defined as
4.3. Bayesian Game Formulation
- DR resource’s grade constraintCommunity operators employ gas boiler and energy storage to promote the grade of DR resource. In which, gas boiler can reduce breach amount by substituting electrical heating appliance; while energy storage can compensate breach amount via providing electricity for users. When community operator equips gas boiler or energy storage, its expected breach amount can be expressed as
- Device output constraintEnergy output of gas boiler and energy storage have to be less than the maximal energy output of device
- Bidding amount constraintEach community operator makes bidding strategy according to the DR resource level in its native users. Since flexible loads only take a certain percentage of all users’ loads, the bidding amount must satisfy
4.4. Distribution Algorithm
- Community operator n with type initializes its bidding strategy;
- Community operator n will optimize the bidding strategy of its opponents;
- On basis of the optimal strategy of opponents, community operator n will optimize its own bidding strategy;
- Repeat step 2 and 3 until all operators’ strategies is unchanged.
Algorithm 1: Executed by each community operator |
5. Case Study
5.1. Simulation Parameters
5.2. Equilibrium Solution
5.3. Impact of Energy Storage Capacity
5.4. Benefit of Auxiliary Equipment
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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DR Resource | 18:00–19:00 (t = 1–4) | 19:00–20:00 (t = 5–8) | 20:00–21:00 (t = 9–12) |
---|---|---|---|
Grade 1 | |||
Grade 2 | |||
Grade 3 | |||
Community Operator | Operator 1 | Operator 2 | Operator 3 |
---|---|---|---|
Profit from DR purchaser | 31.54 | 36.41 | 9.97 |
Profit from gas boiler | 1.23 | 0 | 0 |
Profit from energy storage | 0 | −0.63 | 0 |
Total profit | 32.77 | 35.78 | 9.97 |
Community Operator | Operator 1 | Operator 2 | Operator 3 |
---|---|---|---|
Scenario 1 | 3.55 | 3.55 | 3.55 |
Scenario 2 | 29.68 | 31.27 | 28.93 |
Scenario 3 | 31.67 | 33.10 | 30.78 |
Proposed scenario | 38.34 | 43.69 | 8.28 |
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Liu, X.; Gao, B.; Li, Y. Bayesian Game-Theoretic Bidding Optimization for Aggregators Considering the Breach of Demand Response Resource. Appl. Sci. 2019, 9, 576. https://doi.org/10.3390/app9030576
Liu X, Gao B, Li Y. Bayesian Game-Theoretic Bidding Optimization for Aggregators Considering the Breach of Demand Response Resource. Applied Sciences. 2019; 9(3):576. https://doi.org/10.3390/app9030576
Chicago/Turabian StyleLiu, Xiaofeng, Bingtuan Gao, and Yuanmei Li. 2019. "Bayesian Game-Theoretic Bidding Optimization for Aggregators Considering the Breach of Demand Response Resource" Applied Sciences 9, no. 3: 576. https://doi.org/10.3390/app9030576
APA StyleLiu, X., Gao, B., & Li, Y. (2019). Bayesian Game-Theoretic Bidding Optimization for Aggregators Considering the Breach of Demand Response Resource. Applied Sciences, 9(3), 576. https://doi.org/10.3390/app9030576