论文标题
多分辨率,多型摩尼子分布式太阳能光伏电源预测与预测组合
Multi-Resolution, Multi-Horizon Distributed Solar PV Power Forecasting with Forecast Combinations
论文作者
论文摘要
分布式的小型太阳能光伏(PV)系统正在以快速增加的速度安装。这可能会对分销网络和能源市场产生重大影响。结果,在不同时间分辨率和视野中,非常需要改善对这些系统发电的预测。但是,预测模型的性能取决于分辨率和地平线。在这种情况下,将多个模型的预测结合到单个预测中的预测组合(合奏)可能是鲁棒的。因此,在本文中,我们对五个最先进的预测模型的性能以及在多个分辨率和视野下的现有预测组合提供了比较和见解。我们提出了一种基于粒子群优化(PSO)的预测组合方法,该方法将通过加权各个模型产生的预测来使预报掌握到手头任务的准确预测。此外,我们将提出的组合方法的性能与现有的预测组合方法进行了比较。使用现实世界中的PV电源数据集进行了全面的评估,该数据集在美国三个位置的25个房屋中测量。在四个不同的分辨率和四个不同视野中的结果表明,基于PSO的预测组合方法的表现优于使用任何单独的预测模型和其他预测组合对应物的使用,而与最佳性能单个模型相比,平均平均绝对级别误差降低了3.81%。我们的方法使太阳预报员能够为其应用产生准确的预测,而不管预测分辨率或视野如何。
Distributed, small-scale solar photovoltaic (PV) systems are being installed at a rapidly increasing rate. This can cause major impacts on distribution networks and energy markets. As a result, there is a significant need for improved forecasting of the power generation of these systems at different time resolutions and horizons. However, the performance of forecasting models depends on the resolution and horizon. Forecast combinations (ensembles), that combine the forecasts of multiple models into a single forecast may be robust in such cases. Therefore, in this paper, we provide comparisons and insights into the performance of five state-of-the-art forecast models and existing forecast combinations at multiple resolutions and horizons. We propose a forecast combination approach based on particle swarm optimization (PSO) that will enable a forecaster to produce accurate forecasts for the task at hand by weighting the forecasts produced by individual models. Furthermore, we compare the performance of the proposed combination approach with existing forecast combination approaches. A comprehensive evaluation is conducted using a real-world residential PV power data set measured at 25 houses located in three locations in the United States. The results across four different resolutions and four different horizons show that the PSO-based forecast combination approach outperforms the use of any individual forecast model and other forecast combination counterparts, with an average Mean Absolute Scaled Error reduction by 3.81% compared to the best performing individual model. Our approach enables a solar forecaster to produce accurate forecasts for their application regardless of the forecast resolution or horizon.