论文标题

一个更高的目的:使用高分辨率白天卫星图像测量电量

A Higher Purpose: Measuring Electricity Access Using High-Resolution Daytime Satellite Imagery

论文作者

Shah, Zeal, Fobi, Simone, Cadamuro, Gabriel, Taneja, Jay

论文摘要

世界各地的政府和国际组织正在投资于实现改善社会经济发展的普遍能源的目标。但是,在开发设置时,监视电气化工作通常是不准确的,不经常且昂贵的。在这项工作中,我们开发和介绍了用于高分辨率监测电气化进度的技术。具体而言,我们的3个独特贡献是:(i)识别具有(OUT)电能的区域,(ii)量化电动区域中电气化程度(电气化结构的百分比/数量),以及(iii)在电气化区域中区分客户类型(估计住宅/非住宅电气电气结构的百分比/数量)。我们将高分辨率50 cm白天卫星图像与卷积神经网络(CNN)相结合,以训练一系列分类和回归模型。我们使用独特的地面真相数据集在建筑位置,建筑类型(住宅/非住宅)和建筑电气化状态上评估我们的模型。我们的分类模型在识别电气化区域的精度为92%,估计该区域内(低/高)电气化建筑物百分比的精度为85%,在区分(低/高)电气化住宅建筑物百分比之间的精度为69%。我们的回归显示,分别在图像中分别估计电气化建筑物数量和住宅电气化建筑数量为78%和80%的$ R^2 $分数。我们还证明了模型在从未见过的地区中评估其在新兴经济体中电气化一致和高分辨率测量的潜力,并通过突出改进的机会来得出结论。

Governments and international organizations the world over are investing towards the goal of achieving universal energy access for improving socio-economic development. However, in developing settings, monitoring electrification efforts is typically inaccurate, infrequent, and expensive. In this work, we develop and present techniques for high-resolution monitoring of electrification progress at scale. Specifically, our 3 unique contributions are: (i) identifying areas with(out) electricity access, (ii) quantifying the extent of electrification in electrified areas (percentage/number of electrified structures), and (iii) differentiating between customer types in electrified regions (estimating the percentage/number of residential/non-residential electrified structures). We combine high-resolution 50 cm daytime satellite images with Convolutional Neural Networks (CNNs) to train a series of classification and regression models. We evaluate our models using unique ground truth datasets on building locations, building types (residential/non-residential), and building electrification status. Our classification models show a 92% accuracy in identifying electrified regions, 85% accuracy in estimating percent of (low/high) electrified buildings within the region, and 69% accuracy in differentiating between (low/high) percentage of electrified residential buildings. Our regressions show $R^2$ scores of 78% and 80% in estimating the number of electrified buildings and number of residential electrified building in images respectively. We also demonstrate the generalizability of our models in never-before-seen regions to assess their potential for consistent and high-resolution measurements of electrification in emerging economies, and conclude by highlighting opportunities for improvement.

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