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Scenario based uncertainty modeling of electricity market prices

机译:基于场景的电力市场价格不确定性建模

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摘要

Energy trading in liberalized electricity markets is a decision-making problem that is modeled considering price uncertainty. Stochastic programming is a natural platform for modeling such decision-making problems, where uncertainties are characterized through scenarios. Scenarios are possible outcomes of random process with corresponding occurrence probabilities. A large number of scenarios are required for accurate modeling of any uncertainty. However, due to computational complexity and time limitations, generated scenarios are required to be reduced. This paper presents a efficacious algorithm for generation and reduction of electricity market price scenarios. Time series based Auto Regressive Moving Average (ARMA) model is used for scenario generation while Probability Distance Based Backward reduction method is utilized for scenario reduction. Proposed algorithm is illustrated through practical case study based on PJM day-ahead electricity market. Statistical analysis validates the proposed algorithm and comparison between ARMA and heuristic model for scenario generation reflect strength of proposed algorithm for modeling electricity market price uncertainty.
机译:自由化电力市场中的能源交易是一个决策问题,其建模考虑了价格不确定性。随机规划是建模此类决策问题的自然平台,其中不确定性通过场景来表征。场景是具有相应发生概率的随机过程的可能结果。要对任何不确定性进行精确建模,需要大量方案。但是,由于计算复杂性和时间限制,需要减少生成的方案。本文提出了一种有效的算法来产生和减少电力市场价格的情况。基于时间序列的自动回归移动平均(ARMA)模型用于场景生成,而基于概率距离的向后减少方法则用于场景减少。通过基于PJM日前电力市场的实际案例研究,说明了所提出的算法。统计分析验证了所提算法的有效性,ARMA与启发式模型之间场景生成的比较反映了所提算法对电力市场价格不确定性建模的优势。

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