Predicting building characteristics at urban scale using graph neural networks and street-level context

IF 7.1 1区 地球科学 Q1 ENVIRONMENTAL STUDIES
Binyu Lei , Pengyuan Liu , Nikola Milojevic-Dupont , Filip Biljecki
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引用次数: 0

Abstract

Building characteristics, such as number of storeys and type, play a key role across many domains: interpreting urban form, simulating urban microclimate or modelling building energy. However, geospatial data on the building stock is often fragmented and incomplete. Here, we propose a novel and easily adaptable method to predict building characteristics in diverse cities, which attempts to mitigate such data gaps. Our method exploits the geospatial connectivity between street-level urban objects and building characteristics by employing graph neural networks, as they can model spatial relationships and leverage them for predictions. We apply this approach in three representative cities (Boston, Melbourne, and Helsinki) that offer a variety of building features as prediction targets (storeys, types, construction period and materials) and diverse urban environments as predictors. Overall, the magnitude of errors is acceptable for a series of use cases. In the prediction of building storeys, an average of 81.83% buildings in three cities have less than one-storey prediction error. We also find that the prediction of building type achieves an average of 88.33% accuracy across three cities. Meanwhile, an average of 70.5% of buildings are correctly classified by construction period in Melbourne and Helsinki, and the building material prediction accuracy is 68% in Helsinki. The results confirm that our approach is adaptable across different urban environments because comparable performance is achieved in the other two cities. Further, we assess the impact of varying local data availability on model performance. Our findings underscore the feasibility of the method in scenarios with sparse building data (10%, 30% and 50% availability). Our graph-based approach advances research on filling in incomplete building semantics from existing datasets, and showcases the potential to enable 3D city modelling. Given the broad applicability of the approach to predicting many building characteristics, diverse downstream applications exist, such as enhancing contemporary urban studies (e.g. exploring streetscapes) and facilitating the development of 3D GIS (e.g. maintaining and updating 3D building settings).

利用图神经网络和街道背景预测城市规模的建筑特征
建筑特征,如层数和类型,在许多领域都发挥着关键作用:解释城市形态、模拟城市微气候或建立建筑能源模型。然而,有关建筑存量的地理空间数据往往是零散和不完整的。在此,我们提出了一种新颖且易于调整的方法来预测不同城市的建筑特征,试图缩小这些数据差距。我们的方法采用图神经网络,利用街道级城市对象和建筑特征之间的地理空间连接,因为图神经网络可以建立空间关系模型,并利用它们进行预测。我们在三个具有代表性的城市(波士顿、墨尔本和赫尔辛基)应用了这一方法,这三个城市提供了多种建筑特征作为预测目标(层数、类型、建筑时期和材料),以及多种城市环境作为预测因子。总体而言,误差的大小在一系列使用案例中都是可以接受的。在预测建筑物层数方面,三个城市平均 81.83% 的建筑物的预测误差小于一层。我们还发现,在建筑类型预测方面,三个城市平均达到了 88.33% 的准确率。同时,在墨尔本和赫尔辛基,平均 70.5% 的建筑按建筑时期正确分类,而在赫尔辛基,建筑材料的预测准确率为 68%。这些结果证实了我们的方法可以适应不同的城市环境,因为在其他两个城市也取得了类似的性能。此外,我们还评估了不同的本地数据可用性对模型性能的影响。我们的研究结果表明,在建筑数据稀少的情况下(可用性分别为 10%、30% 和 50%),我们的方法是可行的。我们基于图的方法推进了从现有数据集中填充不完整建筑语义的研究,并展示了实现三维城市建模的潜力。鉴于该方法在预测许多建筑特征方面的广泛适用性,其下游应用领域多种多样,如加强当代城市研究(如探索街道景观)和促进三维地理信息系统的发展(如维护和更新三维建筑设置)。
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来源期刊
CiteScore
13.30
自引率
7.40%
发文量
111
审稿时长
32 days
期刊介绍: Computers, Environment and Urban Systemsis an interdisciplinary journal publishing cutting-edge and innovative computer-based research on environmental and urban systems, that privileges the geospatial perspective. The journal welcomes original high quality scholarship of a theoretical, applied or technological nature, and provides a stimulating presentation of perspectives, research developments, overviews of important new technologies and uses of major computational, information-based, and visualization innovations. Applied and theoretical contributions demonstrate the scope of computer-based analysis fostering a better understanding of environmental and urban systems, their spatial scope and their dynamics.
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