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Design of input vector for day-ahead price forecasting of electricity markets

机译:电力市场日前价格预测的输入矢量设计

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In new deregulated electricity market, price forecasts have become a fundamental input to an energy company's decision making and strategy development process. However, the exclusive characteristics of electricity price such as non-stationarity, non-linearity and time-varying volatile structure present a number of challenges for this task. In spite of all performed research on this area in the recent years, there is still essential need for more accurate and robust price forecast methods. Besides, there is a lack of efficient feature selection technique for designing the input vector of electricity price forecast. In this paper, a new two-stage feature selection algorithm composed of modified relief and mutual information (Ml) techniques is proposed for this purpose. Moreover, cascaded neural network (CNN) is presented as forecast engine for electricity price prediction. The CNN is composed of cascaded forecasters where each forecaster is a neural network (NN). The proposed feature selection algorithm selects the best set of candidate inputs which is used by the CNN. The proposed method is examined on PJM, Spanish and Ontario electricity markets and compared with some of the most recent price forecast techniques.
机译:在新的放松管制的电力市场中,价格预测已成为能源公司决策和战略制定过程的基本输入。但是,电价的专有特征(例如非平稳性,非线性和时变的易失性结构)为该任务提出了许多挑战。尽管近年来在该领域进行了所有研究,但仍然需要更准确,更可靠的价格预测方法。此外,缺乏有效的特征选择技术来设计电价预测的输入向量。为此,本文提出了一种新的两阶段特征选择算法,该算法由改进的浮雕和互信息(Ml)技术组成。此外,提出了级联神经网络(CNN)作为电价预测的预测引擎。 CNN由级联的预测器组成,其中每个预测器都是一个神经网络(NN)。提出的特征选择算法选择CNN使用的最佳候选输入集。建议的方法已在PJM,西班牙和安大略省的电力市场上进行了检查,并与一些最新的价格预测技术进行了比较。

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