Wind power forecasting is essential to power system operation and electricity markets. As abundant data became available thanks to the deployment of measurement infrastructures and the democratization of meteorological modelling, extensive data-driven approaches have been developed within both point and probabilistic forecasting frameworks. These models usually assume that the dataset at hand is complete and overlook missing value issues that often occur in practice. In contrast to that common approach, we rigorously consider here the wind power forecasting problem in the presence of missing values, by jointly accommodating imputation and forecasting tasks. Our approach allows inferring the joint distribution of input features and target variables at the model estimation stage based on incomplete observations only. We place emphasis on a fully conditional specification method owing to its desirable properties, e.g., being assumption-free when it comes to these joint distributions. Then, at the operational forecasting stage, with available features at hand, one can issue forecasts by implicitly imputing all missing entries. The approach is applicable to both point and probabilistic forecasting, while yielding competitive forecast quality within both simulation and real-world case studies. It confirms that by using a powerful universal imputation method like fully conditional specification, the proposed approach is superior to the common approach, especially in the context of probabilistic forecasting.
翻译:风力预报对电力系统运行和电力市场至关重要。随着由于部署测量基础设施和气象建模民主化而获得大量数据,在点数和概率预测框架内都制定了广泛的数据驱动方法。这些模型通常假定手头的数据集是完整的,忽视了在实践中经常出现的缺失的价值问题。与这种共同方法相反,我们在此通过联合考虑估算和预测任务,认真考虑缺省值中的风力预报问题。我们的方法允许在模型估计阶段根据不完整的观测结果预测输入特征和目标变量的联合分布。我们强调完全有条件的规格方法,因为其特性是理想的,例如,在联合分布时是没有假设的。然后,在操作预测阶段,与现有特点相反,人们可以通过暗含估计所有缺失条目来发布预报。这种方法既适用于点预测,也适用于概率预测,同时在模拟和现实世界案例研究中都产生竞争性的预测质量。它证实,通过使用强大的通用的预测方法,例如完全有条件的规格,在完全有条件的规格情况下,拟议的预测方法优于共同的预测。