Probabilistic forecasts are essential for various downstream applications such as business development, traffic planning, and electrical grid balancing. Many of these probabilistic forecasts are performed on time series data that contain calendar-driven periodicities. However, existing probabilistic forecasting methods do not explicitly take these periodicities into account. Therefore, in the present paper, we introduce a deep learning-based method that considers these calendar-driven periodicities explicitly. The present paper, thus, has a twofold contribution: First, we apply statistical methods that use calendar-driven prior knowledge to create rolling statistics and combine them with neural networks to provide better probabilistic forecasts. Second, we benchmark ProbPNN with state-of-the-art benchmarks by comparing the achieved normalised continuous ranked probability score (nCRPS) and normalised Pinball Loss (nPL) on two data sets containing in total more than 1000 time series. The results of the benchmarks show that using statistical forecasting components improves the probabilistic forecast performance and that ProbPNN outperforms other deep learning forecasting methods whilst requiring less computation costs.
翻译:预测概率对于诸如商业开发、交通规划和电网平衡等各种下游应用至关重要。许多预测概率预测是根据包含日历驱动周期的时间序列数据进行的。然而,现有的预测概率预测方法没有明确考虑到这些周期性。因此,在本文件中,我们引入了一种深层次的学习方法,明确考虑到这些日历驱动周期性。因此,本文件具有双重贡献:首先,我们采用统计方法,使用日历驱动的先前知识来创建滚动统计数据,并将这些数据与神经网络结合起来,以提供更好的概率预测。第二,我们将实现的正常连续连续概率分数(nCRPS)和正常的弹丸损失(nPL)与最新基准进行比较,方法是在总共包含1000个时间序列的两组数据上进行比较。基准结果表明,使用统计预测组成部分可以改进概率预测性预测性业绩,而ProbPNN在计算成本较低的情况下,比其他深度学习预测方法要好。