Multimodal Learning 相关度: 8/10

Meteorological data and Sky Images meets Neural Models for Photovoltaic Power Forecasting

Ines Montoya-Espinagosa, Antonio Agudo
arXiv: 2602.15782v1 发布: 2026-02-17 更新: 2026-02-17

AI 摘要

论文提出了一种结合气象数据、天空图像和光伏历史数据的混合深度学习光伏功率预测方法。

主要贡献

  • 提出了一种结合天空图像、气象数据和光伏历史数据的多模态光伏功率预测方法
  • 验证了气象数据(尤其是长波辐射)对光伏功率预测的有效性
  • 使用深度学习模型进行短期和长期光伏功率预测

方法论

使用深度学习模型,结合天空图像、光伏能量历史数据和气象数据,进行短期和长期光伏功率预测。

原文摘要

Due to the rise in the use of renewable energies as an alternative to traditional ones, and especially solar energy, there is increasing interest in studying how to address photovoltaic forecasting in the face of the challenge of variability in photovoltaic energy production, using different methodologies. This work develops a hybrid approach for short and long-term forecasting based on two studies with the same purpose. A multimodal approach that combines images of the sky and photovoltaic energy history with meteorological data is proposed. The main goal is to improve the accuracy of ramp event prediction, increase the robustness of forecasts in cloudy conditions, and extend capabilities beyond nowcasting, to support more efficient operation of the power grid and better management of solar variability. Deep neural models are used for both nowcasting and forecasting solutions, incorporating individual and multiple meteorological variables, as well as an analytical solar position. The results demonstrate that the inclusion of meteorological data, particularly the surface long-wave, radiation downwards, and the combination of wind and solar position, significantly improves current predictions in both nowcasting and forecasting tasks, especially on cloudy days. This study highlights the importance of integrating diverse data sources to improve the reliability and interpretability of solar energy prediction models.

标签

光伏功率预测 多模态学习 深度学习 气象数据 天空图像

arXiv 分类

cs.CV