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Triple seasonal methods for short-term electricity demand forecasting

机译:短期用电量预测的三重季节性方法

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Online short-term load forecasting is needed for the real-time scheduling of electricity generation. Univariate methods have been developed that model the intraweek and intraday seasonal cycles in intraday load data. Three such methods, shown to be competitive in recent empirical studies, are double seasonal ARMA, an adaptation of Holt–Winters exponential smoothing for double seasonality, and another, recently proposed, exponential smoothing method. In multiple years of load data, in addition to intraday and intraweek cycles, an intrayear seasonal cycle is also apparent. We extend the three double seasonal methods in order to accommodate the intrayear seasonal cycle. Using six years of British and French data, we show that for prediction up to a day-ahead the triple seasonal methods outperform the double seasonal methods, and also a univariate neural network approach. Further improvement in accuracy is produced by using a combination of the forecasts from two of the triple seasonal methods.
机译:在线实时负荷预测是实时发电调度所必需的。已经开发出单变量方法,该方法可以模拟日内负荷数据中的周内和日内季节周期。三种这样的方法(在最近的经验研究中显示出竞争力)是双季节ARMA,将Holt-Winters指数平滑方法用于双季节方法,以及最近提出的另一种指数平滑方法。在多年的负荷数据中,除了日内和周内周期外,年内季节周期也很明显。为了适应年内季节周期,我们扩展了三个双重季节方法。使用六年的英国和法国数据,我们显示对于三天前的预测,一天三天的方法要优于双季节的方法和单变量神经网络方法。通过结合使用两个三个季节性方法的预测,可以进一步提高准确性。

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