The high penetration of volatile renewable energy sources such as solar make methods for coping with the uncertainty associated with them of paramount importance. Probabilistic forecasts are an example of these methods, as they assist energy planners in their decision-making process by providing them with information about the uncertainty of future power generation. Currently, there is a trend towards the use of deep learning probabilistic forecasting methods. However, the point at which the more complex deep learning methods should be preferred over more simple approaches is not yet clear. Therefore, the current article presents a simple comparison between a long short-term memory neural network and other more simple approaches. The comparison consists of training and comparing models able to provide one-day-ahead probabilistic forecasts for a solar power system. Moreover, the current paper makes use of an open-source dataset provided during the Global Energy Forecasting Competition of 2014 (GEFCom14).
翻译:太阳能等挥发性可再生能源的高渗透性使应对与其相关的不确定性的方法变得极为重要。概率预测是这些方法的一个实例,因为它们通过向能源规划者提供关于未来发电不确定性的信息,协助其决策过程。目前,有一种趋势是使用深层学习概率预测方法;然而,更复杂的深层学习方法比更简单的方法更受青睐,这一点尚不明确。因此,本文章对长期短期记忆神经网络和其他更简单的方法进行了简单比较。比较包括培训和比较能够为太阳能发电系统提供一天期概率预测的模型。此外,本文还利用了2014年全球能源预测竞赛期间提供的开放源数据集(GEFCom14)。