We present a data-driven approach for probabilistic wind power forecasting based on conditional normalizing flow (CNF). In contrast with the existing, this approach is distribution-free (as for non-parametric and quantile-based approaches) and can directly yield continuous probability densities, hence avoiding quantile crossing. It relies on a base distribution and a set of bijective mappings. Both the shape parameters of the base distribution and the bijective mappings are approximated with neural networks. Spline-based conditional normalizing flow is considered owing to its non-affine characteristics. Over the training phase, the model sequentially maps input examples onto samples of base distribution, given the conditional contexts, where parameters are estimated through maximum likelihood. To issue probabilistic forecasts, one eventually maps samples of the base distribution into samples of a desired distribution. Case studies based on open datasets validate the effectiveness of the proposed model, and allows us to discuss its advantages and caveats with respect to the state of the art.
翻译:我们提出了一种基于有条件的正常流动(CNF)的概率风力预测数据驱动方法。与现有的方法相反,这种方法是无分布式的(如非参数和基于孔数的方法),可以直接产生连续的概率密度,从而避免孔径交叉。它依靠一个基分布和一套双向图象。基分布的形状参数和双向图象都与神经网络相近。基于双向图象的成形参数由于其非对称特征而被认为是正常流动。在培训阶段,模型根据条件环境,按顺序绘制基准分布样本中输入的示例,其中参数通过最大的可能性估算。为了发布概率预测,最终将基分布的样本绘制为理想分布的样本。基于开放数据集的案例研究证实了拟议模型的有效性,并使我们能够讨论其与艺术状况有关的优势和洞穴穴。