Accurate forecasting of solar power generation with fine temporal and spatial resolution is vital for the operation of the power grid. However, state-of-the-art approaches that combine machine learning with numerical weather predictions (NWP) have coarse resolution. In this paper, we take a graph signal processing perspective and model multi-site photovoltaic (PV) production time series as signals on a graph to capture their spatio-temporal dependencies and achieve higher spatial and temporal resolution forecasts. We present two novel graph neural network models for deterministic multi-site PV forecasting dubbed the graph-convolutional long short term memory (GCLSTM) and the graph-convolutional transformer (GCTrafo) models. These methods rely solely on production data and exploit the intuition that PV systems provide a dense network of virtual weather stations. The proposed methods were evaluated in two data sets for an entire year: 1) production data from 304 real PV systems, and 2) simulated production of 1000 PV systems, both distributed over Switzerland. The proposed models outperform state-of-the-art multi-site forecasting methods for prediction horizons of six hours ahead. Furthermore, the proposed models outperform state-of-the-art single-site methods with NWP as inputs on horizons up to four hours ahead.
翻译:对太阳能发电的精确预测,以及细微的时间和空间分辨率,对于电网的运作至关重要,然而,将机器学习与数字天气预测(NWP)相结合的最先进方法分辨率粗糙。在本文中,我们采用图形信号处理视角和多点光伏发电模型(PV)生产时间序列作为图上信号,以捕捉其时空依赖性,实现更高的空间和时间分辨率预测。我们提出了两种确定性多地点多点PV预测的新型图形神经网络模型,这些模型将图形革命短期内存(GCLSTM)和图形革命变异器(GCTrafo)模型合起来。这些方法完全依赖生产数据并利用光电系统提供密集虚拟气象站网络的直觉。整个年在两个数据集中评估了拟议方法:(1) 304个实际光电系统的生产数据,(2) 模拟生产1,000个多点光电系统,这两个系统都分布在瑞士。拟议的模型超越了预测6小时前的预测状态、多点预测方法,并预设了4小时的预测方式。