Efficient integration of solar energy into the electricity mix depends on a reliable anticipation of its intermittency. A promising approach to forecast the temporal variability of solar irradiance resulting from the cloud cover dynamics is based on the analysis of sequences of ground-taken sky images or satellite observations. Despite encouraging results, a recurrent limitation of existing deep learning approaches lies in the ubiquitous tendency of reacting to past observations rather than actively anticipating future events. This leads to a frequent temporal lag and limited ability to predict sudden events. To address this challenge, we introduce ECLIPSE, a spatio-temporal neural network architecture that models cloud motion from sky images to not only predict future irradiance levels and associated uncertainties, but also segmented images, which provide richer information on the local irradiance map. We show that ECLIPSE anticipates critical events and reduces temporal delay while generating visually realistic futures. The model characteristics and properties are investigated with an ablation study and a comparative study on the benefits and different ways to integrate auxiliary data into the modelling. The model predictions are also interpreted through an analysis of the principal spatio-temporal components learned during network training.
翻译:预测云层覆盖动态产生的太阳辐照时间变异的一个有希望的方法是基于对地面摄取的天空图像序列或卫星观测的分析。尽管取得了令人鼓舞的结果,但现有深层学习方法的经常性局限性在于对过去观测作出反应而不是积极预测未来事件的无处不在的趋势,这导致一个经常的时间滞后和预测突发事件的有限能力。为了应对这一挑战,我们引入了ECLIPSE,这是一个云层-时空网络结构,从云层图像中模拟云层运动,不仅预测未来辐照水平和相关不确定性,而且还有片段图像,为当地辐照图提供了更丰富的信息。我们表明ECLIPSE预测了重大事件并减少了时间延误,同时产生了现实的视觉未来。模型特征和特性通过一项通货膨胀研究以及对将辅助数据纳入模型的惠益和不同方法进行比较研究来加以研究。模型预测还通过在培训过程中对主要阵形网络组成部分进行分析来解释。