预处理对电力负荷预测的影响:时间序列分割成子序列的实证评价

S. Crone, N. Kourentzes
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引用次数: 4

摘要

预测未来的电力负荷是电气工程中最重要的领域之一,人工神经网络(NN)在实践中得到了广泛的应用。克服为高频负载数据构建神经网络的复杂性的常见方法是将时间序列分割为更简单和更均匀的子序列,例如,仅星期一,星期二等的每小时负载的七个子序列。这些都是独立预测的,使用单独的神经网络模型,然后重新组合以提供未来几天的完整跟踪预测。尽管负荷预测的经验重要性,以及与预测误差相关的高运行成本,但将时间序列分割成子序列的潜在好处尚未在经验比较中得到评估。本文评估了将连续时间序列分割成每日子序列的准确性,而不是用神经网络预测原始的连续时间序列。在有效的实验设计中提供了每小时英国负荷数据的准确性,使用多个滚动时间原点和与统计基准算法相比的鲁棒误差度量。结果表明,与研究、实践和软件实现中的最佳实践相比,神经网络在连续、非分段时间序列上具有优越的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The impact of preprocessing on forecasting electrical load: An empirical evaluation of segmenting time series into subseries
Forecasting future electricity load represents one of the most prominent areas of electrical engineering, in which artificial neural networks (NN) are routinely applied in practice. The common approach to overcome the complexity of building NNs for high-frequency load data is to segment the time series into simpler and more homogeneous subseries, e.g. seven subseries of hourly loads of only Mondays, Tuesdays etc. These are forecasted independently, using a separate NN model, and then recombined to provide a complete trace forecast for the next days ahead. Despite the empirical importance of load forecasting, and the high operational cost associated with forecast errors, the potential benefits of segmenting time series into subseries have not been evaluated in an empirical comparison. This paper assesses the accuracy of segmenting continuous time series into daily subseries, versus forecasting the original, continuous time series with NNs. Accuracy on hourly UK load data is provided in a valid experimental design, using multiple rolling time origins and robust error metrics in comparison to statistical benchmark algorithms. Results indicate the superior performance of NN on continuous, non-segmented time series, in contrast to best practices in research, practice and software implementations.
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