This paper develops probabilistic PV forecasters by taking advantage of recent breakthroughs in deep learning. It tailored forecasting tool, named encoder-decoder, is implemented to compute intraday multi-output PV quantiles forecasts to efficiently capture the time correlation. The models are trained using quantile regression, a non-parametric approach that assumes no prior knowledge of the probabilistic forecasting distribution. The case study is composed of PV production monitored on-site at the University of Li\`ege (ULi\`ege), Belgium. The weather forecasts from the regional climate model provided by the Laboratory of Climatology are used as inputs of the deep learning models. The forecast quality is quantitatively assessed by the continuous ranked probability and interval scores. The results indicate this architecture improves the forecast quality and is computationally efficient to be incorporated in an intraday decision-making tool for robust optimization.
翻译:本文利用最近在深层学习方面的突破,开发了概率光电池预报器。它专门设计了预测工具,名为编码器-解码器,用于计算日常多输出光电池量子预测,以有效捕捉时间相关性。模型是使用量化回归法培训的,这是一种假定事先对概率预测分布不甚了解的非参数方法。案例研究由比利时利凯格大学(ULi ⁇ ege)现场监测的光电池生产组成。由气候学实验室提供的区域气候模型的天气预报作为深层学习模型的投入。预测质量由连续排序概率和间距分数进行定量评估。结果显示,这一结构提高了预测质量,并具有计算效率,可纳入一个内部决策工具,以进行稳健的优化。