The supply and demand of energy is influenced by meteorological conditions. The relevance of accurate weather forecasts increases as the demand for renewable energy sources increases. The energy providers and policy makers require weather information to make informed choices and establish optimal plans according to the operational objectives. Due to the recent development of deep learning techniques applied to satellite imagery, weather forecasting that uses remote sensing data has also been the subject of major progress. The present paper investigates multiple steps ahead frame prediction for coastal sea elements in the Netherlands using U-Net based architectures. Hourly data from the Copernicus observation programme spanned over a period of 2 years has been used to train the models and make the forecasting, including seasonal predictions. We propose a variation of the U-Net architecture and further extend this novel model using residual connections, parallel convolutions and asymmetric convolutions in order to introduce three additional architectures. In particular, we show that the architecture equipped with parallel and asymmetric convolutions as well as skip connections outperforms the other three discussed models.
翻译:能源的供求受到气象条件的影响。准确天气预报的相关性随着可再生能源需求的增加而增加。能源提供者和决策者需要天气信息,以便作出知情的选择,并根据业务目标制定最佳计划。由于最近开发了适用于卫星图像的深层学习技术,使用遥感数据的天气预报也取得了重大的进展。本文件调查了荷兰使用U-Net结构对沿海海洋元素进行提前数框架预测的多个步骤。Copernicus观测方案为期两年的每小时数据被用来培训模型和进行预测,包括季节性预测。我们提议对U-Net结构进行修改,并利用剩余连接、平行演进和不对称演进进一步扩大这一新的模型,以引入另外三个结构。我们特别表明,配有平行和不对称演进的建筑以及跳过其他三个讨论过的模型的连接。