论文标题
使用深度学习顺序预测光伏电源的产生
Forecasting Photovoltaic Power Production using a Deep Learning Sequence to Sequence Model with Attention
论文作者
论文摘要
(住宅)光伏(PV)功率的渗透水平上升,作为分布式能源对电力基础设施构成了许多挑战。迫切需要高质量的一般工具,以提供精确的电力生产预测。在本文中,我们提出了一个有监督的深度学习模型,以端到端预测光伏电力生产。提出的模型基于两个开创性概念,这些概念导致了其他与序列相关的领域中深度学习方法的显着改进,但在时间序列预测领域中却没有:序列体系结构和注意力机制作为上下文生成器的序列。提出的模型利用数值天气预测和高分辨率历史测量值来预测预后时间间隔的bined概率分布,而不是预后变量的预期值。与常见的基线方法相比,该设计提供了显着的性能改进,例如完全连接的神经网络和一块长期的短期记忆体系结构。将基于标准化的均方根误差作为性能指标,将提出的方法与其他模型进行比较。结果表明,新设计的性能低于或高于PV功率预测的当前状态。
Rising penetration levels of (residential) photovoltaic (PV) power as distributed energy resource pose a number of challenges to the electricity infrastructure. High quality, general tools to provide accurate forecasts of power production are urgently needed. In this article, we propose a supervised deep learning model for end-to-end forecasting of PV power production. The proposed model is based on two seminal concepts that led to significant performance improvements of deep learning approaches in other sequence-related fields, but not yet in the area of time series prediction: the sequence to sequence architecture and attention mechanism as a context generator. The proposed model leverages numerical weather predictions and high-resolution historical measurements to forecast a binned probability distribution over the prognostic time intervals, rather than the expected values of the prognostic variable. This design offers significant performance improvements compared to common baseline approaches, such as fully connected neural networks and one-block long short-term memory architectures. Using normalized root mean square error based forecast skill score as a performance indicator, the proposed approach is compared to other models. The results show that the new design performs at or above the current state of the art of PV power forecasting.