论文标题

基于天空图像的太阳能预测使用深度学习与多点数据数据:在本地,全球或通过转移学习的培训模型?

Sky-image-based solar forecasting using deep learning with multi-location data: training models locally, globally or via transfer learning?

论文作者

Nie, Yuhao, Paletta, Quentin, Scott, Andea, Pomares, Luis Martin, Arbod, Guillaume, Sgouridis, Sgouris, Lasenby, Joan, Brandt, Adam

论文摘要

地面天空图像的太阳预测在减少太阳能发电的不确定性方面表现出了巨大的希望。近年来,随着越来越多的Sky Image数据集开源,准确和可靠的基于深度学习的太阳预测方法的开发已经实现了巨大的潜力增长。在这项研究中,我们通过利用三种具有不同气候模式的全球收集的异质数据集来探索太阳预测模型的三种不同培训策略。具体而言,我们根据单个数据集和基于多个数据集融合的单个数据集和全球模型进行了分别训练的本地模型的性能,并进一步研究了从预训练的太阳预测模型到新的感兴趣数据集的知识传递。结果表明,当地部署在本地部署时,本地模型运行良好,但是在异地应用时会观察到重大错误。全球模型可以很好地适应各个位置,而培训工作的潜在增加。在大型且多样化的源数据集上并转移到目标数据集中的预训练模型通常比其他两种策略实现了卓越的性能。随着培训数据减少80%,它可以与使用整个数据集进行的本地基线获得可比的性能。

Solar forecasting from ground-based sky images has shown great promise in reducing the uncertainty in solar power generation. With more and more sky image datasets open sourced in recent years, the development of accurate and reliable deep learning-based solar forecasting methods has seen a huge growth in potential. In this study, we explore three different training strategies for solar forecasting models by leveraging three heterogeneous datasets collected globally with different climate patterns. Specifically, we compare the performance of local models trained individually based on single datasets and global models trained jointly based on the fusion of multiple datasets, and further examine the knowledge transfer from pre-trained solar forecasting models to a new dataset of interest. The results suggest that the local models work well when deployed locally, but significant errors are observed when applied offsite. The global model can adapt well to individual locations at the cost of a potential increase in training efforts. Pre-training models on a large and diversified source dataset and transferring to a target dataset generally achieves superior performance over the other two strategies. With 80% less training data, it can achieve comparable performance as the local baseline trained using the entire dataset.

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