Multi-layer game theory based operation optimisation of ICES considering improved independent market participant models and dedicated distributed algorithms
With the increase in distributed subjects such as renewable energy, the global energy industry is undergoing a market-based transformation, where energy subjects participate in the market in a competitive manner with evident conflicts of interest. However, current market participation methods are de...
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| Published in: | Applied energy Vol. 373; p. 123691 |
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| Main Authors: | , , , , |
| Format: | Journal Article |
| Language: | English |
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Elsevier Ltd
01.11.2024
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| Subjects: | |
| ISSN: | 0306-2619 |
| Online Access: | Get full text |
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| Abstract | With the increase in distributed subjects such as renewable energy, the global energy industry is undergoing a market-based transformation, where energy subjects participate in the market in a competitive manner with evident conflicts of interest. However, current market participation methods are deficient in maintaining the balance of interests among the participants, safeguarding the interests of disadvantaged participants, and sounding the mechanism of independent market participation of the participants, which has resulted in long-term damage to the interests as well as low willingness to dispatch of certain participants under the market-based mode of operation; and there is a void in the solution tools for balancing the interests of multiple participants under the multi-constituent market participation scenario. Based on this, this paper constructs a market participation method for a multi-layer integrated community energy system that considers multiple types of independent energy participants, such as source-load-storage-station. Firstly, an independent energy storage market participation model is designed, and the integrated demand response mechanism is improved. Based on this, a hierarchical market participation framework considering multiple types of independent participants from source-load-storage-station is proposed. Secondly, a multi‑leader multi-follower four-dimensional collaborative multi-layer game model is constructed, which has a multi-layer Stackelberg game between the vertical layers and a two-level non-cooperative game between the horizontal layers. Meanwhile, an independent energy storage dedicated distributed algorithm is developed. Finally, a method for solving multi-layer optimization models is established based on the developed dedicated distributed algorithm coupled with theories such as KKT transformation. The equilibrium of the multi-layer game is shown to proof and is found by this method. Cases have shown that this method not only provided a reliable tool for solving the complex model of multiple participants, it also improved the status of market and enthusiasm of dispatching for energy storage, users etc., and broke the monopoly structure of energy saling side market participation. The effective utilization rate of energy storage increased by 21.61% on average. The time-to-time energy response of users increased by more than 10.13%. Where gains for users have increased by an average of 1.91%. And the total revenue of the energy purchasing side increased by 4%.
•A model is developed for the independent participation of energy storage stations in the operation of energy markets.•Distributed algorithms specific to independent energy storage adapted to its particular clearing mechanism are designed.•A multi‑leader multi-follower multi-layer game model with four-dimensional subject synergy of source-load-storage-station is constructed.•A solution method exclusively for this system is established by coupling the KKT condition with a dedicated distributed algorithm.•The existence of equilibrium solutions for the multilayer game model is proved and the IDR for vulnerable subject DLs is improved. |
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| AbstractList | With the increase in distributed subjects such as renewable energy, the global energy industry is undergoing a market-based transformation, where energy subjects participate in the market in a competitive manner with evident conflicts of interest. However, current market participation methods are deficient in maintaining the balance of interests among the participants, safeguarding the interests of disadvantaged participants, and sounding the mechanism of independent market participation of the participants, which has resulted in long-term damage to the interests as well as low willingness to dispatch of certain participants under the market-based mode of operation; and there is a void in the solution tools for balancing the interests of multiple participants under the multi-constituent market participation scenario. Based on this, this paper constructs a market participation method for a multi-layer integrated community energy system that considers multiple types of independent energy participants, such as source-load-storage-station. Firstly, an independent energy storage market participation model is designed, and the integrated demand response mechanism is improved. Based on this, a hierarchical market participation framework considering multiple types of independent participants from source-load-storage-station is proposed. Secondly, a multi‑leader multi-follower four-dimensional collaborative multi-layer game model is constructed, which has a multi-layer Stackelberg game between the vertical layers and a two-level non-cooperative game between the horizontal layers. Meanwhile, an independent energy storage dedicated distributed algorithm is developed. Finally, a method for solving multi-layer optimization models is established based on the developed dedicated distributed algorithm coupled with theories such as KKT transformation. The equilibrium of the multi-layer game is shown to proof and is found by this method. Cases have shown that this method not only provided a reliable tool for solving the complex model of multiple participants, it also improved the status of market and enthusiasm of dispatching for energy storage, users etc., and broke the monopoly structure of energy saling side market participation. The effective utilization rate of energy storage increased by 21.61% on average. The time-to-time energy response of users increased by more than 10.13%. Where gains for users have increased by an average of 1.91%. And the total revenue of the energy purchasing side increased by 4%. With the increase in distributed subjects such as renewable energy, the global energy industry is undergoing a market-based transformation, where energy subjects participate in the market in a competitive manner with evident conflicts of interest. However, current market participation methods are deficient in maintaining the balance of interests among the participants, safeguarding the interests of disadvantaged participants, and sounding the mechanism of independent market participation of the participants, which has resulted in long-term damage to the interests as well as low willingness to dispatch of certain participants under the market-based mode of operation; and there is a void in the solution tools for balancing the interests of multiple participants under the multi-constituent market participation scenario. Based on this, this paper constructs a market participation method for a multi-layer integrated community energy system that considers multiple types of independent energy participants, such as source-load-storage-station. Firstly, an independent energy storage market participation model is designed, and the integrated demand response mechanism is improved. Based on this, a hierarchical market participation framework considering multiple types of independent participants from source-load-storage-station is proposed. Secondly, a multi‑leader multi-follower four-dimensional collaborative multi-layer game model is constructed, which has a multi-layer Stackelberg game between the vertical layers and a two-level non-cooperative game between the horizontal layers. Meanwhile, an independent energy storage dedicated distributed algorithm is developed. Finally, a method for solving multi-layer optimization models is established based on the developed dedicated distributed algorithm coupled with theories such as KKT transformation. The equilibrium of the multi-layer game is shown to proof and is found by this method. Cases have shown that this method not only provided a reliable tool for solving the complex model of multiple participants, it also improved the status of market and enthusiasm of dispatching for energy storage, users etc., and broke the monopoly structure of energy saling side market participation. The effective utilization rate of energy storage increased by 21.61% on average. The time-to-time energy response of users increased by more than 10.13%. Where gains for users have increased by an average of 1.91%. And the total revenue of the energy purchasing side increased by 4%. •A model is developed for the independent participation of energy storage stations in the operation of energy markets.•Distributed algorithms specific to independent energy storage adapted to its particular clearing mechanism are designed.•A multi‑leader multi-follower multi-layer game model with four-dimensional subject synergy of source-load-storage-station is constructed.•A solution method exclusively for this system is established by coupling the KKT condition with a dedicated distributed algorithm.•The existence of equilibrium solutions for the multilayer game model is proved and the IDR for vulnerable subject DLs is improved. |
| ArticleNumber | 123691 |
| Author | Yan, Yi Li, Ji Tian, Chongyi Li, Ke Liu, Mingqi |
| Author_xml | – sequence: 1 givenname: Yi surname: Yan fullname: Yan, Yi email: yanyi19@sdjzu.edu.cn organization: Shandong Key Laboratory of Intelligent Buildings Technology, School of Information and Electrical Engineering, Shandong Jianzhu University, Jinan 250101, China – sequence: 2 givenname: Mingqi surname: Liu fullname: Liu, Mingqi email: 2022080120@stu.sdjzu.edu.cn organization: Shandong Key Laboratory of Intelligent Buildings Technology, School of Information and Electrical Engineering, Shandong Jianzhu University, Jinan 250101, China – sequence: 3 givenname: Chongyi surname: Tian fullname: Tian, Chongyi email: tianchongyi@sdjzu.edu.cn organization: Shandong Key Laboratory of Intelligent Buildings Technology, School of Information and Electrical Engineering, Shandong Jianzhu University, Jinan 250101, China – sequence: 4 givenname: Ji surname: Li fullname: Li, Ji email: 278135804@qq.com organization: Institute of Building Environment and Energy, China Academy of Building Research, Beijing 100013, China – sequence: 5 givenname: Ke surname: Li fullname: Li, Ke email: like@sdu.edu.cn organization: School of Control Science and Engineering, Shandong University, Jinan 250061, China |
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| Keywords | Integrated community energy system Integrated demand response Distributed optimization Market participation Game theory Energy storage |
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