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首页> 外文期刊>IEEE Transactions on Power Systems >A Reinforcement Learning Model to Assess Market Power Under Auction-Based Energy Pricing
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A Reinforcement Learning Model to Assess Market Power Under Auction-Based Energy Pricing

机译:基于拍卖的能源定价下的市场力评估强化学习模型

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摘要

Auctions serve as a primary pricing mechanism in various market segments of a deregulated power industry. In day-ahead (DA) energy markets, strategies such as uniform price, discriminatory, and second-price uniform auctions result in different price settlements and thus offer different levels of market power. In this paper, we present a nonzero sum stochastic game theoretic model and a reinforcement learning (RL)-based solution framework that allow assessment of market power in DA markets. Since there are no available methods to obtain exact analytical solutions of stochastic games, an RL-based approach is utilized, which offers a computationally viable tool to obtain approximate solutions. These solutions provide effective bidding strategies for the DA market participants. The market powers associated with the bidding strategies are calculated using well-known indexes like Herfindahl-Hirschmann index and Lerner index and two new indices, quantity modulated price index (QMPI) and revenue-based market power index (RMPI), which are developed in this paper. The proposed RL-based methodology is tested on a sample network
机译:在放松管制的电力行业中,拍卖是主要的定价机制。在日前(DA)能源市场中,统一价格,歧视性和二次价格统一拍卖等策略会导致不同的价格结算,从而提供不同级别的市场力量。在本文中,我们提出了一个非零和随机博弈理论模型和一个基于强化学习(RL)的解决方案框架,该框架可以评估DA市场中的市场力量。由于没有可用的方法来获得随机游戏的精确解析解,因此采用了一种基于RL的方法,该方法提供了计算上可行的工具来获得近似解。这些解决方案为DA市场参与者提供了有效的投标策略。与竞价策略相关的市场力量是使用Herfindahl-Hirschmann指数和Lerner指数以及两个新指数(数量调整价格指数(QMPI)和基于收益的市场力量指数(RMPI))等知名指数计算得出的这篇报告。建议的基于RL的方法已在示例网络上进行了测试

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