单侧电力市场有限状态自动机下发电公司自适应竞价策略研究

G. Sheblé, G. Gutiérrez-Alcaraz
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引用次数: 3

摘要

本文探讨了在两种不同的市场清算机制——统一定价和按出价付费——下,发电公司使用遗传算法(GAs)制定竞标策略。投标策略通过对经典数据处理结构有限状态自动机的两种修改来表示。在遗传算法中引入了半固定适应度函数和协同进化适应度函数。还包含了第三个简单表示,用于获得其他两个表示的比较基线,显示它们的行为与“标准”解决方案的比较情况。我们的方法开发的策略是自适应的,所有的遗传类型都是基于竞争投标情况下的利润最大化。版权所有©2011 John Wiley & Sons, Ltd
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Generation companies' adaptive bidding strategies using finite-state automata in a single-sided electricity market
SUMMARY This paper explores the use of genetic algorithms (GAs) in the development of the bidding strategies used by generation companies under two different market clearing mechanisms, uniform pricing and pay-as-bid pricing. The bidding strategies are represented by two modifications of a classical data processing structure known as finite-state automata. Semi-fixed fitness function and co-evolutionary fitness function were incorporated in our GA. A third simple representation to obtain a comparison baseline for the other two representations, showing how their behaviors compare with a “standard” solution, was also incorporated. The strategies developed by our method were adaptive, and all GA types were based on maximizing profit in a competitive bidding situation. Copyright © 2011 John Wiley & Sons, Ltd.
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来源期刊
European Transactions on Electrical Power
European Transactions on Electrical Power 工程技术-工程:电子与电气
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审稿时长
5.4 months
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