Greater direct electrification of end-use sectors with a higher share of renewables is one of the pillars to power a carbon-neutral society by 2050. This study uses a recent deep learning technique, the normalizing flows, to produce accurate probabilistic forecasts that are crucial for decision-makers to face the new challenges in power systems applications. Through comprehensive empirical evaluations using the open data of the Global Energy Forecasting Competition 2014, we demonstrate that our methodology is competitive with other state-of-the-art deep learning generative models: generative adversarial networks and variational autoencoders. The models producing weather-based wind, solar power, and load scenarios are properly compared both in terms of forecast value, by considering the case study of an energy retailer, and quality using several complementary metrics.
翻译:通过利用2014年全球能源预测竞赛的开放数据进行的全面经验评估,我们证明我们的方法与其他最先进的深层次学习基因化模型(基因对抗网络和变异自动转换器)相比具有竞争力。 生成基于天气的风能、太阳能和载荷情景模型的模型在预测值方面进行了适当比较,通过考虑能源零售商的案例研究以及使用若干补充指标的质量,对基于天气的风能、太阳能和载荷情景模型进行了适当比较。