利用递归神经网络对负荷、光伏和风力进行日前预测的外生变量的必要性

Henning Wilms, M. Cupelli, A. Monti
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引用次数: 6

摘要

在本文中,我们使用来自全球能源预测竞赛的公开时间序列数据集来评估外生解释变量在预测风、负荷和光伏概况时的附加价值。建立了两个不同的自回归模型以及一个包含外生变量的模型。所有的模型都使用递归神经网络(RNN)作为其基础架构。通过跨数据集和跨模型比较不同的精度指标来评价外生变量的附加值。结果表明,负荷和光伏数据集的自相关性为使用rnn的自回归预测提供了相当好的准确性,而风力发电很难预测,rnn无法仅使用单变量时间序列推断出任何合适的预测。
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On the Necessity of Exogenous Variables for Load, PV and Wind Day-Ahead Forecasts using Recurrent Neural Networks
In this paper we use publicly available time series data sets from the Global Energy Forecasting Competitions to evaluate the added value of exogenous, explanatory variables when forecasting wind, load and PV profiles. Two different auto-regressive models are built as well as one model that includes exogenous variables. All of models use recurrent neural networks (RNN) as their base architecture. The added value of exogenous variables is evaluated by comparing different accuracy metrics cross data set and cross model. The results show, that the autocorrelation of load and PV data sets produce reasonably good accuracies for auto-regressive predictions using RNNs, whereas wind production is far harder to forecast and the RNNs are not able to infer any suitable predictions using only a univariate time series.
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