DeepSolar for Germany: A deep learning framework for PV system mapping from aerial imagery

Kevin Mayer, Zhecheng Wang, M. Arlt, D. Neumann, R. Rajagopal
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引用次数: 18

Abstract

The increasing availability of high-resolution aerial imagery and the recent deep learning-based advances in computer vision have made it possible to automatically map energy systems remotely at a large scale. In this paper, we focus on optimizing the existing DeepSolar framework for photovoltaics (PV) system classification. Specifically, we propose an efficient dataset creation methodology for aerial imagery which allows us to achieve state-of-the-art results, improving the previous model’s recall score by more than eight percentage points to 98% while keeping its precision almost constant at 92%. Furthermore, we show that our optimized model extends its superior classification performance to lower image resolutions. After re-training our optimized model on lower resolution imagery, we apply it to Germany’s most-populous state, North-Rhine Westphalia, and deliver a proof of concept for automatically validating, updating, and creating databases of renewable energy systems at a large scale. We conclude with a brief analysis of socio-economic factors correlating with PV system adoption.
DeepSolar for Germany:从航空图像中绘制光伏系统的深度学习框架
高分辨率航空图像的日益普及,以及最近基于深度学习的计算机视觉技术的进步,使得大规模远程自动绘制能源系统地图成为可能。在本文中,我们专注于优化现有的DeepSolar框架,用于光伏系统分类。具体来说,我们提出了一种高效的航空图像数据集创建方法,使我们能够获得最先进的结果,将先前模型的召回分数提高了8个百分点以上,达到98%,同时保持其精度几乎恒定在92%。此外,我们证明了优化后的模型将其优越的分类性能扩展到更低的图像分辨率。在低分辨率图像上重新训练我们的优化模型后,我们将其应用于德国人口最多的州北莱茵威斯特伐利亚州,并提供了大规模自动验证,更新和创建可再生能源系统数据库的概念证明。最后,我们简要分析了与光伏系统采用相关的社会经济因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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