Modeling of Suppliers' Learning Behaviors in an Electricity Market Environment

N. Yu, Chen-Ching Liu, L. Tesfatsion
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引用次数: 35

Abstract

The day-ahead electricity market is modeled as a multi-agent system with interacting agents including supplier agents, load serving entities, and a market operator. Simulation of the market clearing results under the scenario in which agents have learning capabilities is compared with the scenario where agents report true marginal costs. It is shown that, with Q-Learning, electricity suppliers are making more profits compared to the scenario without learning due to strategic gaming. As a result, the LMP at each bus is substantially higher.
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电力市场环境下供应商学习行为的建模
将日前电力市场建模为一个多智能体系统,其中包括供应商代理、负荷服务实体和市场运营商。比较了具有学习能力的agent和报告真实边际成本的agent的市场出清结果。结果表明,在Q-Learning的情况下,由于战略博弈,电商比没有学习的情况下获得了更多的利润。因此,每个总线上的LMP要高得多。
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