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Estimating residential building energy consumption using overhead imagery

机译:估计使用架空图像的住宅建筑能量消耗

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Residential buildings account for a large proportion of global energy consumption in both low- and high-income countries. Efficient planning to meet building energy needs while increasing operational, economic, and environmental efficiency requires accurate, high spatial resolution information on energy consumption. Such information is difficult to acquire and most models for estimating residential building energy consumption require detailed knowledge of individual homes and communities which are unlikely to be available at a large scale.To address this need, we introduce a methodology for automatically estimating individual building energy consumption from overhead imagery (e.g. satellite, aerial) and demonstrate the effect of spatial aggregation for further improving accuracy. We use a three-step estimation process by which we (1) automatically segment buildings in overhead imagery using a convolutional neural network and classify them by type (residential or commercial), (2) extract features (e.g. area, perimeter, building density) from those identified residential buildings, and (3) use random forests regression to estimate building energy consumption from those features.The predictive capability of this approach is evaluated in two locations: Gainesville, Florida, and San Diego, California. The building detector correctly identifies 84% and 88% of buildings in Gainesville and San Diego, respectively. The type of building is classified successfully 99% of the time for residential buildings and 74% of the time for commercial buildings. With residential buildings identified, this approach predicted individual building-level energy consumption with an R-2 of 0.28 and 0.38 for Gainesville and San Diego, respectively. Aggregating the energy consumption estimates across small neighborhoods of size 200 x 200 m and 1000 x 1000 m in Gainesville results in an R-2 of 0.91 and 0.97, respectively. We also explore the sensitivity of estimates in San Diego and Gainesville to the training data and its size. Our results suggest that using overhead imagery to estimate the size of buildings has a higher predictive power in estimating residential building energy consumption than common alternatives.
机译:住宅建筑占低收入和高收入国家的全球能源消耗量大部分。高效规划,以满足建筑能源需求,同时提高运营,经济和环境效率,需要准确,高空间分辨率信息有关能源消耗的信息。这些信息难以获得,大多数用于估计住宅建筑能量消耗的模型需要详细了解各个家庭和社区,这些社区不太可能以大规模提供的。要解决这种需求,我们介绍了一种自动估计个人建筑能量消耗的方法从顶上的图像(例如卫星,空中),并展示空间聚集以进一步提高准确性的影响。我们使用三步估计过程,我们(1)使用卷积神经网络自动分段架空图像中的建筑物,并按类型(住宅或商业),(2)提取特征(例如区域,周长,建筑密度)对它们进行分类从那些鉴定的住宅建筑物中,(3)使用随机森林回归来估计这些特征的建筑能源消耗。这种方法的预测能力在两个地点评估:GaInesville,佛罗里达州和加利福尼亚州圣地亚哥和圣地亚哥。建筑探测器可以分别正确识别盖斯维尔和圣地亚哥的84%和88%的建筑物。建筑物的类型成功分类为住宅建筑的99%,以及74%的商业建筑时间。通过确定住宅建筑物,这种方法分别预测了盖斯维尔和圣地亚哥的r-2的个人建筑级能耗。在奖金尺寸为200 x 200 m和1000 x 1000 m的小邻域中聚集能量消耗估计,分别为0.91和0.97的R-2。我们还探讨了San Diego和Gainesville估算的敏感性及其尺寸。我们的研究结果表明,使用架空图像来估计建筑物的大小,在估计住宅建筑能耗而不是常见的替代方案具有更高的预测力。

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