引用本文: | 陈亦杰,刘故帅,张忠会.考虑电动汽车群和新增实体的电力市场多方交易策略研究[J].电力系统保护与控制,2018,46(13):33-40.[点击复制] |
CHEN Yijie,LIU Gushuai,ZHANG Zhonghui.A study on multi-party trading strategy of electricity market considering electric vehicle group and new entity[J].Power System Protection and Control,2018,46(13):33-40[点击复制] |
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摘要: |
目前,电力市场在新增实体和大规模电动汽车并网的影响下,交易主体呈现多元化的趋势。以博弈理论为基础,通过实验计算模拟的方式分析了电力市场的交易方式及策略选择的新形态。首先考虑了地理位置、收益及系统网损等因素,建立了电动汽车群、新增实体和电网公司多方动态非合作博弈模型。以6个新增实体和2个电动汽车群为例,采用协同进化遗传算法求解其纳什均衡解。通过算例模拟分析,验证了所提方法的合理有效性。该研究为分析电动汽车群和新增实体对电力市场多方交易决策的影响提供理论参考。 |
关键词: 电动汽车群 新增实体 多方交易 博弈论 协同进化 |
DOI:10.7667/PSPC170959 |
投稿时间:2017-06-27修订日期:2017-08-18 |
基金项目: |
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A study on multi-party trading strategy of electricity market considering electric vehicle group and new entity |
CHEN Yijie,LIU Gushuai,ZHANG Zhonghui |
(School of Information Engineering, Nanchang University, Nanchang 330031, China;State Grid Zibo Power Supply Company, Zibo 255000, China) |
Abstract: |
At present, the New Entities (NEs) and the large-scale Electric Vehicle (EV) access to the electricity market to participate in the electricity trading under the constantly active environment, the transaction participants present a diversification trend. Based on the game theory, this paper analyzes the transaction mode and the new form of strategy selection in the electric power market by means of experimental calculation and simulation. Firstly, considering the factors such as geographical location, revenue and system loss, the static non-cooperative game model of EV groups, NEs and grid company is established. Then six NEs and two EV groups are used as examples, the Cooperative Coevolutionary Genetic Algorithm (CCGA) is used to solve the Nash equilibrium solution. The reasonable validity of the proposed method is verified by the numerical example, which provides a theoretical reference for the analysis of the role of EV groups and NEs in multi-party decision-making in electric power market. |
Key words: electric vehicle new entity multi-party transactions game theory cooperative coevolution |