The output of solar power generation is significantly dependent on the available solar radiation. Thus, with the proliferation of PV generation in the modern power grid, forecasting of solar irradiance is vital for proper operation of the grid. To achieve an improved accuracy in prediction performance, this paper discusses a Bayesian treatment of probabilistic forecasting. The approach is demonstrated using publicly available data obtained from the Florida Automated Weather Network (FAWN). The algorithm is developed in Python and the results are compared with point forecasts, other probabilistic methods and actual field results obtained for the period.
翻译:太阳能发电的产出在很大程度上取决于现有的太阳辐射,因此,随着光伏发电在现代电网中扩散,预测太阳辐照度对于电网的适当运行至关重要,为了提高预测性能的准确性,本文件讨论了贝叶斯对概率预测的处理方法,采用从佛罗里达自动天气网(FAWN)获得的公开数据来证明这一方法。算法是在Python开发的,其结果与当时取得的点预报、其他概率方法和实际实地结果进行比较。