In order to enable the transition towards renewable energy sources, probabilistic energy forecasting is of critical importance for incorporating volatile power sources such as solar energy into the electrical grid. Solar energy forecasting methods often aim to provide probabilistic predictions of solar irradiance. In particular, many hybrid approaches combine physical information from numerical weather prediction models with statistical methods. Even though the physical models can provide useful information at intra-day and day-ahead forecast horizons, ensemble weather forecasts from multiple model runs are often not calibrated and show systematic biases. We propose a post-processing model for ensemble weather predictions of solar irradiance at temporal resolutions between 30 minutes and 6 hours. The proposed models provide probabilistic forecasts in the form of a censored logistic probability distribution for lead times up to 5 days and are evaluated in two case studies covering distinct physical models, geographical regions, temporal resolutions, and types of solar irradiance. We find that post-processing consistently and significantly improves the forecast performance of the ensemble predictions for lead times up to at least 48 hours and is well able to correct the systematic lack of calibration.
翻译:为了能够向可再生能源过渡,概率能源预测对于将太阳能等挥发性电源纳入电网至关重要。太阳能预测方法往往旨在提供对太阳辐照性的概率预测。特别是,许多混合方法将数字天气预测模型的物理信息与统计方法结合起来。即使物理模型可以在日内和日间预报地平线上提供有用的信息,但多模型运行的共通天气预报往往没有校准,并显示出系统性的偏差。我们提出了一个后处理模型,用于在30分钟至6小时的时空分辨率上对太阳辐照性作出共合天气预测。拟议的模型以检查后后勤概率分布的形式提供概率预测,每次周期为5天,并在两个案例研究中进行评估,分别涉及不同的物理模型、地理区域、时间分辨率和太阳辐照类型。我们发现,后处理持续且显著地改进了至少48小时的导时共通性预测的预测的预测性,并完全能够纠正系统缺乏校准的情况。