论文标题
太阳辐射时间序列的基准预测
Benchmarks for Solar Radiation Time Series Forecasting
论文作者
论文摘要
随着世界能量组合中不断增加的间歇性可再生能源的份额,对高级太阳能预测模型的需求越来越多,以优化太阳能发电厂的运行和控制。为了证明需要进行更多详细的预测建模的必要性,必须将高级模型的性能与天真的参考方法进行比较。在这一点上,研究了使用统计工具的严格形式主义,研究了测量中噪声的变异计算和量化,并考虑了五种幼稚的参考预测方法,其中有一种新提出的称为ARTU的方法(二次订单的特定自动性模型)。这些方法不需要任何培训阶段,也不需要任何(几乎没有)历史数据。此外,由集合预测的众所周知的好处的动机,考虑了这些模型的组合,然后使用来自各种气候特征的多个站点的数据(基于各种误差指标)进行了验证,其中有些很少在太阳能领域中使用。最合适的基准测试方法取决于预测的变量的显着特征(例如,季节性,环状或条件性Heteoroscedasity)以及预测范围。因此,为了确保公平的基准测试,预报员应通过测试所有可用选项来努力发现最适合其设置的幼稚参考方法。在本文提出的方法中,该组合和ARTU在统计上为拟议的研究条件提供了最佳结果。
With an ever-increasing share of intermittent renewable energy in the world's energy mix,there is an increasing need for advanced solar power forecasting models to optimize the operation and control of solar power plants. In order to justify the need for more elaborate forecast modeling, one must compare the performance of advanced models with naive reference methods. On this point, a rigorous formalism using statistical tools, variational calculation and quantification of noise in the measurement is studied and five naive reference forecasting methods are considered, among which there is a newly proposed approach called ARTU (a particular autoregressive model of order two). These methods do not require any training phase nor demand any (or almost no) historical data. Additionally, motivated by the well-known benefits of ensemble forecasting, a combination of these models is considered, and then validated using data from multiple sites with diverse climatological characteristics, based on various error metrics, among which some are rarely used in the field of solar energy. The most appropriate benchmarking method depends on the salient features of the variable being forecast (e.g., seasonality, cyclicity, or conditional heteoroscedasity) as well as the forecast horizon. Hence, to ensure a fair benchmarking, forecasters should endeavor to discover the most appropriate naive reference method for their setup by testing all available options. Among the methods proposed in this paper, the combination and ARTU statistically offer the best results for the proposed study conditions.