An electricity supplier bidding strategy through Q-Learning

Gaofeng Xiong, T. Hashiyama, S. Okuma
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引用次数: 52

Abstract

One of the most important issues for power suppliers in the deregulated electric industry is how to bid into the electricity auction market to satisfy their profit-maximizing goals. Based on the Q-Learning algorithm, this paper presents a novel supplier bidding strategy to maximize supplier's profit in a long term. A perfectly competitive day-ahead electricity auction market, where no supplier possess the market power and all suppliers winning the market are paid on their own bids, is assumed here. The dynamics and the incomplete information of the market are emphasized. The impact of suppliers' strategic biddings on the market price is analyzed. Agent-based simulations are presented in this paper. The simulation results show the feasibility of the proposed bidding strategy.
基于q -学习的电商竞价策略研究
在解除管制的电力行业中,电力供应商面临的最重要问题之一是如何参与电力拍卖市场以实现其利润最大化的目标。基于q -学习算法,提出了一种新的供应商竞标策略,以实现供应商长期利润最大化。假设一个完全竞争的日前电力拍卖市场,其中没有供应商拥有市场支配力,所有赢得市场的供应商都根据自己的出价获得报酬。强调了市场的动态性和不完全信息。分析了供应商战略投标对市场价格的影响。本文提出了一种基于智能体的仿真方法。仿真结果表明了所提出的竞价策略的可行性。
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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