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Daily pattern prediction based classification modeling approach for day-ahead electricity price forecasting

机译:基于日模式预测的日电价分类模型

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Day-ahead electricity price forecasting (DAEPF) plays a very important role in the decision-making optimization of electricity market participants, the dispatch control of independent system operators (ISOs) and the strategy formulation of energy trading. Unified modeling that only fits a single mapping relation between the historical data and future data usually produces larger errors because the different fluctuation patterns in electricity price data show different mapping relations. A daily pattern prediction (DPP) based classification modeling approach for DAEPF is proposed to solve this problem. The basic idea is that first recognize the price pattern of the next day from the "rough" day-ahead forecasting results provided by conventional forecasting methods and then perform classification modeling to further improve the forecasting accuracy through building a specific forecasting model for each pattern. The proposed approach consists of four steps. First, K-means is utilized to group all the historical daily electricity price curves into several clusters in order to assign each daily curve a pattern label for the training of the following daily pattern recognition (DPR) model and classification modeling. Second, a DPP model is proposed to recognize the price pattern of the next day from the forecasting results provided by multiple conventional forecasting methods. A weighted voting mechanism (WVM) method is proposed in this step to combine multiple day-ahead pattern predictions to obtain a more accurate DPP result. Third, the classification forecasting model of each different daily pattern can be established according to the clustering results in step 1. Fourth, the credibility of DPP result is checked to eventually determine whether the proposed classification DAEPF modeling approach can be adopted or not. A case study using the real electricity price data from the PJM market indicates that the proposed approach presents a better performance than unified modeling for a certain daily pattern whose DPP results show high reliability and accuracy.
机译:日前电价预测(DAEPF)在电力市场参与者的决策优化,独立系统运营商(ISO)的调度控制以及能源交易的战略制定中起着非常重要的作用。仅适合历史数据和未来数据之间单个映射关系的统一建模通常会产生较大的误差,因为电价数据中不同的波动模式显示出不同的映射关系。为解决这一问题,提出了一种基于每日模式预测(DPP)的DAEPF分类建模方法。基本思想是,首先从常规预测方法提供的“粗略”日间预测结果中识别出第二天的价格模式,然后执行分类建模,以通过为每种预测模型建立特定的预测模型来进一步提高预测准确性。图案。提议的方法包括四个步骤。首先,利用K均值将所有历史每日电价曲线分组为几个簇,以便为每个每日曲线分配一个模式标签,用于训练以下每日模式识别(DPR)模型和分类建模。其次,提出了一种DPP模型来从多种常规预测方法提供的预测结果中识别第二天的价格模式。此步骤中提出了一种加权投票机制(WVM)方法,以结合多个日前模式预测,以获得更准确的DPP结果。第三,可以根据步骤1中的聚类结果建立每个不同日模式的分类预测模型。第四,检查DPP结果的可信度,最终确定是否可以采用建议的分类DAEPF建模方法。使用来自PJM市场的实际电价数据进行的案例研究表明,对于DPP结果显示出高可靠性和准确性的某些日常模式,所提出的方法比统一建模具有更好的性能。

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