Photovoltaic power prediction based on sky images and tokens-to-token vision transformer

Qiangsheng Dai, Xuesong Huo, Dawei Su, Zhiwei Cui
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Abstract

Photovoltaic (PV) power generation has high uncertainties due to the randomness and imbalance nature of solar energy and meteorological parameters. Hence, accurate PV power forecasts are essential in the operation of PV power plants (PVPP) for short-term dispatches and power generation schedules. In this paper, a new deep neural network structure based on vision transformer is proposed to combine sky images and Tokens-To-Token(T2T) for photovoltaic power prediction. The method uses an incremental tokenization module to aggregate neighboring image patches into tokens, which capture the local structural information of the clouds. Then, an efficient T2T-ViT backbone network is used to extract the global attentional relationships of the tokens for power prediction. In order to evaluate the performance of the proposed model, the method was compared with several deep learning architectures such as ResNet and GoogleNet on a dataset collected by the National Renewable Energy Laboratory in Colorado, USA. The results of power prediction were analysed using training loss, prediction error, and linear regression, and they show that the proposed method achieves higher prediction accuracy and lower error compared to the existing methods, especially in short- and ultra-short-term prediction. The paper demonstrates the potential of applying Transformer models to computer vision tasks for renewable energy forecasting. The results show that the proposed method achieves higher prediction accuracy and lower error than several deep learning architectures, such as ResNet and GoogleNet, especially in short- and ultra-short-term prediction.
基于天空图像和token -to-token视觉转换器的光伏功率预测
由于太阳能和气象参数的随机性和不平衡性,光伏发电具有较高的不确定性。因此,准确的光伏发电功率预测对于光伏电站的短期调度和发电计划至关重要。本文提出了一种新的基于视觉变压器的深度神经网络结构,将天空图像与token - to - token (T2T)相结合,用于光伏发电功率预测。该方法使用增量标记化模块将相邻图像块聚合为标记,以捕获云的局部结构信息。然后,利用高效的T2T-ViT骨干网提取token的全局关注关系进行功率预测;为了评估该模型的性能,在美国科罗拉多州国家可再生能源实验室收集的数据集上,将该方法与ResNet和GoogleNet等几种深度学习架构进行了比较。利用训练损失、预测误差和线性回归对功率预测结果进行分析,结果表明,与现有方法相比,该方法具有更高的预测精度和更小的误差,特别是在短期和超短期预测中。本文展示了将Transformer模型应用于可再生能源预测的计算机视觉任务的潜力。结果表明,与ResNet和GoogleNet等几种深度学习架构相比,该方法具有更高的预测精度和更低的误差,特别是在短期和超短期预测方面。
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