物理约束输电网下电力市场的供给侧博弈

E. Guerci, M. Rastegar, S. Cincotti, F. Delfino, R. Procopio, M. Ruga
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引用次数: 6

摘要

本文提出了一种基于智能体的计算方法来研究物理约束下的电力市场。该计算模型由重复的日前市场时段和两区传输网络组成。考虑了不同的非弹性负荷服务实体配置,以研究生产商如何学习战略性地放弃其机组,以及他们如何通过从输电网约束中获利来行使市场力量。学习生产者由不同的多智能体学习算法建模,如Q-Learning、EWA学习和GIGA-WoLF。计算结果表明,所考虑的所有学习模型都能够学习适当地解除其单元并维持区域市场力量的发挥。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supply-side gaming on electricity markets with physical constrained transmission network
This paper proposes an agent-based computational approach to study physical constrained electricity markets. The computational model consists of repeated day-ahead market sessions and a two-zone transmission network. Different inelastic load serving entities configurations are considered for studying how producers learn to strategically decommit their units and how they exercise market power by profiting from transmission network constraints. Learning producers are modeled by different multi-agent learning algorithms, such as the Q-Learning, the EWA learning and the GIGA-WoLF. Computational results point out that all learning models considered are able to learn to appropriately decommit their units and to sustain the exertion of zonal market power.
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