Agent-Based Analysis of Monopoly Power in Electricity Markets

A. C. Tellidou, A. Bakirtzis
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引用次数: 11

Abstract

In this paper agent-based simulation is employed to study the energy market performance and, particularly, the exercise of monopoly power. The energy market is formulated as a stochastic game, where each stage game corresponds to an hourly energy auction. Each hourly energy auction is cleared using Locational Marginal Pricing. Generators are modeled as adaptive agents capable of learning through the interaction with their environment, following a Reinforcement Learning algorithm. The SA-Q-learning algorithm, a modified version of the popular Q-Learning, is used. Test results on a two-node power system with two competing generator-agents, demonstrate the exercise of monopoly power.
基于agent的电力市场垄断力分析
本文采用基于智能体的模拟方法来研究能源市场的表现,特别是垄断权力的行使。能源市场是一个随机博弈,其中每个阶段的博弈对应于每小时的能源拍卖。每小时的能源拍卖都是通过区域边际定价来结算的。生成器被建模为自适应代理,能够通过与环境的交互学习,遵循强化学习算法。使用了流行的Q-Learning算法的改进版SA-Q-learning算法。在具有两个相互竞争的发电代理的双节点电力系统上,测试结果显示了垄断权力的行使。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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