基于残差视觉变换的天空图像序列超短期太阳能预测

IF 10 1区 工程技术 Q1 ENERGY & FUELS
Razieh Rastgoo;Nima Amjady;Shunfu Lin;S. M. Muyeen
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引用次数: 0

摘要

太阳能发电的不可预测性很大程度上受波动的云层影响,对可再生能源系统的稳定性提出了挑战。考虑到这一点,对太阳能发电的准确预测可以改善电网的管理和运行。随着深度学习模型的出现,人们提出了各种模型来提高超短期太阳能发电的预测性能。与数值天气预报数据相比,云图提供了更直接和全面的云模式信息,分析云图可以更精确和有效地预测云的变化,从而更准确地预测超短期太阳能发电。这样,为了提高预测性能,本文引入了一个基于深度学习的模型,该模型包括三个主要模块。在第一部分中,提出了一种多流视频视觉转换器(MS-ViViT)模型,用于从输入图像序列中提取不同类型的时空特征。第一个模块的输出特征输入到第二个模块,即Fused Improved Reformer (Fused I-Reformer),包括三个改进的Reformer (I-Reformer)模型,配备了一个Fused编码器和一个用于序列学习的新损失函数。最后,提出了一种用于太阳能发电价值预测的细心剩余完全连接(ARFC)模型。利用7个评价指标与36个模型在6个真实数据集上的对比结果证实了所提出的超短期太阳能发电预测模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ultra-Short-Term Solar Power Prediction Using Sky Image Sequences by a Residual Vision Reformer
The unpredictable nature of solar power generation, largely influenced by fluctuating cloud cover, poses a challenge to the stability of renewable energy systems. Considering this, accurate forecasting of solar power can lead to better grid management and operation. With the advent of deep learning models, various models have been suggested to enhance the ultra-short-term solar power forecasting performance. Given that cloud images offer more direct and comprehensive information about cloud patterns compared to the numerical weather prediction data, analyzing cloud images allows for more precise and efficient cloud change predictions, leading to a more accurate ultra-short-term solar power forecasting. In this way, aiming to enhance the forecasting performance, in this paper, we introduce a deep learning-based model, including three main blocks. In the first block, a Multi-Stream Video Vision Transformer (MS-ViViT) model is proposed for extracting different types of spatio-temporal features from the input image sequences. The output features from the first block are input to the second block, Fused Improved Reformer (Fused I-Reformer), including three Improved Reformer (I-Reformer) models equipped with a Fused Encoder as well as a new loss function for sequence learning. Finally, an Attentive Residual Fully Connected (ARFC) model is proposed for solar power value prediction. The comparison results with 36 comparative models on six real-world datasets using seven evaluation metrics confirm the effectiveness of the proposed ultra-short-term solar power forecasting model.
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来源期刊
IEEE Transactions on Sustainable Energy
IEEE Transactions on Sustainable Energy ENERGY & FUELS-ENGINEERING, ELECTRICAL & ELECTRONIC
CiteScore
21.40
自引率
5.70%
发文量
215
审稿时长
5 months
期刊介绍: The IEEE Transactions on Sustainable Energy serves as a pivotal platform for sharing groundbreaking research findings on sustainable energy systems, with a focus on their seamless integration into power transmission and/or distribution grids. The journal showcases original research spanning the design, implementation, grid-integration, and control of sustainable energy technologies and systems. Additionally, the Transactions warmly welcomes manuscripts addressing the design, implementation, and evaluation of power systems influenced by sustainable energy systems and devices.
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