We focus on day-ahead electricity load forecasting of substations of the distribution network in France; therefore, our problem lies between the instability of a single consumption and the stability of a countrywide total demand. Moreover, we are interested in forecasting the loads of over one thousand substations; consequently, we are in the context of forecasting multiple time series. To that end, we rely on an adaptive methodology that provided excellent results at a national scale; the idea is to combine generalized additive models with state-space representations. However, the extension of this methodology to the prediction of over a thousand time series raises a computational issue. We solve it by developing a frugal variant, reducing the number of parameters estimated; we estimate the forecasting models only for a few time series and achieve transfer learning by relying on aggregation of experts. It yields a reduction of computational needs and their associated emissions. We build several variants, corresponding to different levels of parameter transfer, and we look for the best trade-off between accuracy and frugality. The selected method achieves competitive results compared to state-of-the-art individual models. Finally, we highlight the interpretability of the models, which is important for operational applications.
翻译:因此,我们的问题在于单一消费的不稳定性和全国总需求的稳定性。此外,我们有兴趣预测一千多个分站的负荷;因此,我们是在预测多个时间序列的背景下进行的。为此,我们依赖一种适应性方法,该方法在全国范围提供极好的结果;设想是将通用添加模型与州-空间表示法结合起来;然而,将这种方法扩大到预测一千多个时间序列,则引起一个计算问题。我们通过开发一个节制变量,减少估计参数的数量来解决该问题;我们只估计几个时间序列的预测模型,并通过依赖专家的集合实现转移学习。这可以减少计算需求及其相关的排放。我们根据不同的参数转移水平建立若干变量,我们寻找准确性和节制之间的最佳取舍。我们选择的方法与最先进的个人模型相比,取得了竞争性的结果。最后,我们强调模型的解释性,这对于实际应用非常重要。