This study focuses on multi-step spatio-temporal wind speed forecasting for the Norwegian continental shelf. The study aims to leverage spatial dependencies through the relative physical location of different measurement stations to improve local wind forecasts. Our multi-step forecasting models produce either 10-minute, 1- or 4-hour forecasts, with 10-minute resolution, meaning that the models produce more informative time series for predicted future trends. A graph neural network (GNN) architecture was used to extract spatial dependencies, with different update functions to learn temporal correlations. These update functions were implemented using different neural network architectures. One such architecture, the Transformer, has become increasingly popular for sequence modelling in recent years. Various alterations have been proposed to better facilitate time series forecasting, of which this study focused on the Informer, LogSparse Transformer and Autoformer. This is the first time the LogSparse Transformer and Autoformer have been applied to wind forecasting and the first time any of these or the Informer have been formulated in a spatio-temporal setting for wind forecasting. By comparing against spatio-temporal Long Short-Term Memory (LSTM) and Multi-Layer Perceptron (MLP) models, the study showed that the models using the altered Transformer architectures as update functions in GNNs were able to outperform these. Furthermore, we propose the Fast Fourier Transformer (FFTransformer), which is a novel Transformer architecture based on signal decomposition and consists of two separate streams that analyse the trend and periodic components separately. The FFTransformer and Autoformer were found to achieve superior results for the 10-minute and 1-hour ahead forecasts, with the FFTransformer significantly outperforming all other models for the 4-hour ahead forecasts.
翻译:本研究的重点是对挪威大陆架进行多步骤时空风速预测。 本研究旨在通过不同测量站相对物理位置的相对物理位置来利用空间依赖性,改进当地风预报。 我们的多步预测模型产生10分钟、1小时或4小时的预报, 分辨率为10分钟, 意思是模型为预测未来趋势产生更多信息的时间序列。 一个图形神经网络( GNN) 架构被用于提取空间依赖性, 不同的更新功能可以学习时间相关性。 这些更新功能是使用不同的神经网络结构来实施的。 近年来,一个这样的结构,即变换器, 越来越受序列分析的相对物理位置的欢迎。 为了更好地促进时间序列预测, 我们的多步式预测, 这个研究的重点是Inforest, LogSparse变换机和自动变换机。 这是第一次将LogSGSGFRFAFA值应用于风预报, 这些变换机的任意时间-时间-时间框架是用来进行风预报的。 通过对阵变变变机的周期模型进行对比, 和MLFA的变变变变式模型是前的, 和变式的变式变式变变式的变式模型是前的。