Scenario-based probabilistic forecasts have become a vital tool to equip decision-makers to address the uncertain nature of renewable energies. To that end, this paper presents a recent promising deep learning generative approach called denoising diffusion probabilistic models. It is a class of latent variable models which have recently demonstrated impressive results in the computer vision community. However, to the best of our knowledge, there has yet to be a demonstration that they can generate high-quality samples of load, PV, or wind power time series, crucial elements to face the new challenges in power systems applications. Thus, we propose the first implementation of this model for energy forecasting using the open data of the Global Energy Forecasting Competition 2014. The results demonstrate this approach is competitive with other state-of-the-art deep learning generative models, including generative adversarial networks, variational autoencoders, and normalizing flows.
翻译:基于情景的概率预测已成为使决策者有能力应对可再生能源不确定性的关键工具。为此,本文件介绍了最近令人充满希望的深层次学习基因化方法,名为“去除传播可能性概率模型 ” 。这是一种潜在的可变模型,最近在计算机视觉界展示了令人印象深刻的成果。然而,据我们所知,还有待证明它们能够生成高质量的载荷样本、光伏或风力时间序列、应对电力系统应用新挑战的关键要素。 因此,我们提议首次使用2014年全球能源预测竞赛的公开数据实施这一能源预测模型。 结果表明,这一方法与其他最先进的深层次学习基因化模型具有竞争力,包括基因对抗网络、变式自动调节器和正常流动。