论文标题
在完全条件规范框架内,风能预测和缺少值的丢失值
Wind energy forecasting with missing values within a fully conditional specification framework
论文作者
论文摘要
风力预测对于电力系统运营和电力市场至关重要。由于测量基础设施的部署和气象建模的民主化,大量数据获得了,因此在点和概率预测框架内都开发了广泛的数据驱动方法。这些模型通常假定手头的数据集已完成,并且忽略了实际上经常发生的缺失价值问题。与这种共同的方法相反,我们在这里严格考虑在存在缺失价值的情况下,通过共同容纳归纳和预测任务的风力预测问题。我们的方法允许仅基于不完整的观测值来推断模型估计阶段的输入特征和目标变量的联合分布。由于其所需的特性,例如,在这些关节分布时,我们强调了一种完全条件的规范方法,例如,无假设。然后,在操作预测阶段,具有可用的功能,可以通过隐式屈服所有缺失的条目来发行预测。该方法适用于点和概率预测,同时在模拟和现实案例研究中产生竞争性预测质量。它证实,通过使用强大的通用插补方法,例如完全条件规范,该方法优于常见方法,尤其是在概率预测的背景下。
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.