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Competition, risk and learning in electricity markets: An agent-based simulation study

机译:电力市场中的竞争,风险和学习:基于代理的模拟研究

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This paper studies the effects of learning and risk aversion on generation company (GenCo) bidding behavior in an oligopolistic electricity market. To this end, a flexible agent-based simulation model is developed in which GenCo agents bid prices in each period. Taking transmission grid constraints into account, the ISO solves a DC-OPF problem to determine locational prices and dispatch quantities. Our simulations show how, due to competition and learning, the change in the risk aversion level of even one GenCo can have a significant impact on all GenCo bids and profits. In particular, some level of risk aversion is observed to be beneficial to GenCos, whereas excessive risk aversion degrades profits by causing intense price competition. Our comprehensive study on the effects of Q-learning parameters finds the level of exploration to have a large impact on the outcome. The results of this paper can help GenCos develop bidding strategies that consider their rivals' as well as their own learning behavior and risk aversion levels. Likewise, the results can help regulators in designing market rules that take realistic GenCo behavior into account. (C) 2017 Elsevier Ltd. All rights reserved.
机译:本文研究了学习和风险规避对寡头电力市场中发电公司(GenCo)竞价行为的影响。为此,开发了一种基于代理的灵活模拟模型,其中GenCo代理在每个时期竞标价格。考虑到输电网的约束,ISO解决了DC-OPF问题,以确定位置价格和调度数量。我们的模拟表明,由于竞争和学习,即使是一个GenCo的风险规避水平的变化如何也会对所有GenCo投标和利润产生重大影响。特别是,人们观察到一定程度的风险规避对GenCos有利,而过度的风险规避则通过引起激烈的价格竞争而降低了利润。我们对Q学习参数的影响的综合研究发现,探索的水平对结果有很大的影响。本文的结果可以帮助GenCos制定考虑其竞争对手以及他们的学习行为和风险规避水平的投标策略。同样,结果可以帮助监管机构设计考虑现实的GenCo行为的市场规则。 (C)2017 Elsevier Ltd.保留所有权利。

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