Chance-Constrained Equilibrium in Electricity Markets With Asymmetric Forecasts

V. Dvorkin, J. Kazempour, P. Pinson
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引用次数: 2

Abstract

We develop a stochastic equilibrium model for an electricity market with asymmetric renewable energy forecasts. In our setting, market participants optimize their profits using public information about a conditional expectation of energy production but use private information about the forecast error distribution. This information is given in the form of samples and incorporated into profit-maximizing optimizations of market participants through chance constraints. We model information asymmetry by varying the sample size of participants’ private information. We show that with more information available, the equilibrium gradually converges to the ideal solution provided by the perfect information scenario. Under information scarcity, however, we show that the market converges to the ideal equilibrium if participants are to infer the forecast error distribution from the statistical properties of the data at hand or share their private forecasts.
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不对称预测下电力市场的机会约束均衡
本文建立了具有非对称可再生能源预测的电力市场随机均衡模型。在我们的设置中,市场参与者使用关于能源生产条件预期的公开信息来优化他们的利润,但使用关于预测误差分布的私人信息。这些信息以样本的形式给出,并通过机会约束纳入市场参与者的利润最大化优化。我们通过改变参与者私人信息的样本量来建立信息不对称模型。研究表明,随着可用信息的增加,均衡逐渐收敛于由完美信息场景提供的理想解。然而,在信息稀缺的情况下,如果参与者根据手头数据的统计特性来推断预测误差分布,或者分享他们的私人预测,那么市场收敛于理想均衡。
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