Strategic bidding in a day-ahead market by coevolutionary genetic algorithms

F. Careri, C. Genesi, P. Marannino, M. Montagna, S. Rossi, I. Siviero
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引用次数: 14

Abstract

In the present work, the problem of energy market price clearing and generation company (Genco) strategic bidding is considered in the framework of existing day-ahead markets with system marginal price auction. The situation of imperfect competition arising when one of the Gencos is large enough to exert market power is considered in detail, showing what bidding behaviors are to be expected when such a market arrangement occurs. The impact that inter-area transmission system congestions may have on the mechanism of system pricing is also addressed. The bidding problem faced by each Genco is formulated as a strategic multi-player game in which the choice between different bidding levels and energy amounts to be sold at the market has to be made. The large size of the problem due to the number of competitors and to the presence of transmission constraints makes the application of classical game theory troublesome. Therefore, an agent based method belonging to the category of coevolutionary genetic algorithm was selected for the solution of this problem. Test cases illustrate the different strategies that the Gencos may implement to optimize their performance at the day-ahead market. Beside some small didactical examples, the situation of the Italian day-ahead market is considered in detail.
基于协同进化遗传算法的日前市场策略竞价
本文在系统边际价格拍卖的现有日前市场框架下,研究了能源市场价格清算和发电公司战略竞价问题。详细考虑了其中一家发电公司规模大到足以发挥市场支配力时所产生的不完全竞争情况,说明了在这种市场安排下,预期会出现怎样的竞价行为。区域间传输系统拥塞可能对系统定价机制产生的影响也得到了解决。每个Genco所面临的投标问题都是一个策略性的多人游戏,在这个游戏中,必须在不同的投标水平和在市场上出售的能源数量之间做出选择。由于竞争对手的数量和传输约束的存在,问题的规模很大,使得经典博弈论的应用很麻烦。因此,选择一种属于协同进化遗传算法范畴的基于智能体的方法来求解这一问题。测试用例说明了发电公司可能实施的不同策略,以优化其在前一天市场上的性能。除了一些小的说明性例子外,还详细考虑了意大利日期货市场的情况。
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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