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Probabilistic wind power forecasting combining deep learning architectures

机译:结合深度学习架构的概率风电预测

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A series of probabilistic models were bench-marked during the European Energy Markets forecasting Competition 2020 to assess their relative accuracy in predicting aggregated Swedish wind power generation using as input historic weather forecasts from a numerical weather prediction model. In this paper, we report the results of one of these models which uses a deep learning approach integrating two architectures: (a) Convolutional Neural Network (CNN) LeNet-5 based architectrure; (b) Multi-Layer Perceptron (MLP) architecture –with two hidden layers–. These are concatenated into the Smooth Pinball Neural Network (SPNN) framework for quantile regression. Hyperparameters were optimised to produce the best model for every region. When tuned, the re-forecasts from the model performed favorably compared to other machine learning approaches and showed significant improvement on the original competition results, though failed to fully capture spatial patterns in certain cases when compared to other methods.
机译:在2020年欧洲能源市场预测大赛中设定了一系列概率模型,以评估其在使用数字天气预报模型输入的历史天气预报作为预测瑞典风力发电总量的相对准确性。在本文中,我们报告了其中一种模型的结果,该模型使用了一种将两种体系结构集成在一起的深度学习方法:(a)基于LeNet-5的卷积神经网络(CNN)架构; (b)具有两个隐藏层的多层感知器(MLP)体系结构。将它们串联到平滑弹球神经网络(SPNN)框架中,以进行分位数回归。优化了超参数,以针对每个区域生成最佳模型。进行调整后,与其他机器学习方法相比,从模型进行的重新预测表现良好,尽管与某些其他方法相比无法在某些情况下完全捕捉空间格局,但与原始比赛结果相比显示出了显着改善。

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