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A deep convolutional neural network and a random forest classifier for solar photovoltaic array detection in aerial imagery

机译:用于航空影像中太阳能光伏阵列检测的深度卷积神经网络和随机森林分类器

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Power generation from distributed solar photovoltaic PV arrays has grown rapidly in recent years. As a result, there is interest in collecting information about the quantity, power capacity, and energy generated by such arrays; and to do so over small geo-spatial regions (e.g., counties, cities, or even smaller regions). Unfortunately, existing sources of such information are dispersed, limited in geospatial resolution, and otherwise incomplete or publically unavailable. As result, we recently proposed a new approach for collecting such distributed PV information that relies on computer algorithms to automatically detect PV arrays in high resolution aerial imagery [1], Here we build on this work by investigating two machine learning algorithms for PV array detection: a Random Forest classifier (RF) [2] and a deep convolutional neural network (CNN) [3]. We use the RF algorithm as a benchmark, or baseline, for comparison with a CNN model. The two models are developed and tested using a large collection of publicly available [4] aerial imagery, covering 135 km2, and including over 2,700 manually annotated distributed PV array locations. The results indicate that the CNN substantially improves over the RF. The CNN is capable of excellent performance, detecting nearly 80% of true panels with a precision measure of 72%.
机译:近年来,分布式太阳能光伏PV阵列的发电量迅速增长。结果,人们有兴趣收集有关此类阵列产生的数量,功率容量和能量的信息。并在较小的地理空间区域(例如,县,城市,甚至更小的区域)中执行此操作。不幸的是,此类信息的现有来源分散,地理空间分辨率有限,否则不完整或无法公开获得。结果,我们最近提出了一种新的方法来收集这样的分布式PV信息,该方法依赖于计算机算法来自动检测高分辨率航空影像中的PV阵列[1]。在此,我们通过研究两种用于PV阵列检测的机器学习算法来构建此工作:随机森林分类器(RF)[2]和深度卷积神经网络(CNN)[3]。我们将RF算法用作与CNN模型进行比较的基准或基准。这两种模型是使用大量公开可用的[4]航空影像进行开发和测试的,覆盖面积135 km2,包括2700多个手动注释的分布式PV阵列位置。结果表明,CNN比RF有了实质性的改善。 CNN具有出色的性能,能够以72%的精确度检测近80%的真实面板。

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