Optimization Strategy for Integrated Energy Microgrids Based on Shared Energy Storage and Stackelberg Game Theory.

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Název: Optimization Strategy for Integrated Energy Microgrids Based on Shared Energy Storage and Stackelberg Game Theory.
Autoři: Yin, Zhilong, Wang, Zhiguo, Yu, Feng, Wang, Dong, Li, Na
Zdroj: Electronics (2079-9292); Nov2024, Vol. 13 Issue 22, p4506, 21p
Témata: ELECTRIC power consumption, DATA privacy, HEURISTIC algorithms, GAME theory, MICROGRIDS
Abstrakt: The implementation of community power generation technology not only increases the flexibility of electricity use but also improves the power system's load distribution, increases the overall system efficiency, and optimizes energy allocation. This article first outlines the operational context of the system and analyzes the roles and missions of the various participants. Subsequently, optimization models are developed for microgrid operators, community power storage facility service providers and load aggregators. Next, the paper explores the game relationship between microgrid operators and load aggregators, proposing a model based on the Stackelberg game theory and proving the presence and singularity of the Stackelberg equilibrium solution. Finally, simulations are conducted using Yalmip tools and the CPLEX solution on the MATLAB R2023a software platform. A combination of heuristic algorithms and solver methods is employed to optimize the strategies of microgrid operators and load aggregators. The research findings show that the proposed framework is not only able to achieve an effective balance of interests between microgrid operators and load aggregators but also creates a win–win situation between load aggregators and shared energy storage operators. Additionally, the solution algorithms used ensure the protection of data privacy. [ABSTRACT FROM AUTHOR]
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Databáze: Complementary Index
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