论文标题

利用地理空间数据评估能源安全:使用无人机和深度学习绘制小型太阳能家庭系统

Utilizing geospatial data for assessing energy security: Mapping small solar home systems using unmanned aerial vehicles and deep learning

论文作者

Ren, Simiao, Malof, Jordan, Fetter, T. Robert, Beach, Robert, Rineer, Jay, Bradbury, Kyle

论文摘要

太阳能家庭系统(SHS)是针对发展中国家远离网格的农村社区的一种成本效益的解决方案,是小型太阳能电池板和相关设备,可为一个家庭提供电力。针对公共和私人资源进一步投资的关键资源,以及跟踪通用电气化目标的进度,是共同访问有关单个SHS安装的高质量数据,包括位置和功率容量等信息。尽管最近利用卫星图像和机器学习来检测太阳能电池板的研究已经出现,但由于图像分辨率有限,它们很难准确地定位许多SHS(一些小型太阳能电池板仅占据了卫星图像中的几个像素)。在这项工作中,我们探讨了在无人机(UAV)图像上使用自动SHS检测作为卫星图像的替代方案的可行性和绩效折衷。更具体地说,我们探讨了三个问题:(i)使用无人机图像的SHS检测性能是什么; (ii)与卫星图像相比,无人机数据收集的昂贵; (iii)基于无人机的SHS检测在现实情况下的表现如何。我们收集并公开释放一个高分辨率无人机图像的数据集,其中包含在现实世界条件下成像的SH,并使用此数据集和卢旺达的数据集评估深度学习模型的能力来识别SHS,包括那些在卫星图像中以无法在卫星图像中可靠地认识的SHS。结果表明,无人机图像可能是可行的替代方法,可以从检测准确性和数据收集的财务成本的角度识别出很小的SHS。基于无人机的数据收集可能是支持电力访问计划策略,以实现可持续发展目标并监视对这些目标的进度。

Solar home systems (SHS), a cost-effective solution for rural communities far from the grid in developing countries, are small solar panels and associated equipment that provides power to a single household. A crucial resource for targeting further investment of public and private resources, as well as tracking the progress of universal electrification goals, is shared access to high-quality data on individual SHS installations including information such as location and power capacity. Though recent studies utilizing satellite imagery and machine learning to detect solar panels have emerged, they struggle to accurately locate many SHS due to limited image resolution (some small solar panels only occupy several pixels in satellite imagery). In this work, we explore the viability and cost-performance tradeoff of using automatic SHS detection on unmanned aerial vehicle (UAV) imagery as an alternative to satellite imagery. More specifically, we explore three questions: (i) what is the detection performance of SHS using drone imagery; (ii) how expensive is the drone data collection, compared to satellite imagery; and (iii) how well does drone-based SHS detection perform in real-world scenarios. We collect and publicly-release a dataset of high-resolution drone imagery encompassing SHS imaged under real-world conditions and use this dataset and a dataset from Rwanda to evaluate the capabilities of deep learning models to recognize SHS, including those that are too small to be reliably recognized in satellite imagery. The results suggest that UAV imagery may be a viable alternative to identify very small SHS from perspectives of both detection accuracy and financial costs of data collection. UAV-based data collection may be a practical option for supporting electricity access planning strategies for achieving sustainable development goals and for monitoring the progress towards those goals.

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