Chair of Sustainability Economics, School of Planning, Building and Environment, Technische Universität Berlin, Berlin, Germany.
Working group Land Use, Infrastructure and Transport, Mercator Research Institute on Global Commons and Climate Change (MCC), Berlin, Germany.
PLoS One. 2020 Dec 9;15(12):e0242010. doi: 10.1371/journal.pone.0242010. eCollection 2020.
Understanding cities as complex systems, sustainable urban planning depends on reliable high-resolution data, for example of the building stock to upscale region-wide retrofit policies. For some cities and regions, these data exist in detailed 3D models based on real-world measurements. However, they are still expensive to build and maintain, a significant challenge, especially for small and medium-sized cities that are home to the majority of the European population. New methods are needed to estimate relevant building stock characteristics reliably and cost-effectively. Here, we present a machine learning based method for predicting building heights, which is based only on open-access geospatial data on urban form, such as building footprints and street networks. The method allows to predict building heights for regions where no dedicated 3D models exist currently. We train our model using building data from four European countries (France, Italy, the Netherlands, and Germany) and find that the morphology of the urban fabric surrounding a given building is highly predictive of the height of the building. A test on the German state of Brandenburg shows that our model predicts building heights with an average error well below the typical floor height (about 2.5 m), without having access to training data from Germany. Furthermore, we show that even a small amount of local height data obtained by citizens substantially improves the prediction accuracy. Our results illustrate the possibility of predicting missing data on urban infrastructure; they also underline the value of open government data and volunteered geographic information for scientific applications, such as contextual but scalable strategies to mitigate climate change.
将城市视为复杂系统,可持续城市规划依赖于可靠的高分辨率数据,例如建筑物存量数据,以便推广到整个区域的翻新政策。对于一些城市和地区,这些数据存在基于实际测量的详细 3D 模型中。但是,它们的构建和维护成本仍然很高,这是一个重大挑战,尤其是对于那些拥有欧洲大多数人口的中小城市而言。需要新的方法来可靠且经济高效地估算相关的建筑物存量特征。在这里,我们提出了一种基于机器学习的预测建筑物高度的方法,该方法仅基于城市形态的公开获取地理空间数据,例如建筑物轮廓和街道网络。该方法允许预测目前尚无专用 3D 模型的区域的建筑物高度。我们使用来自四个欧洲国家(法国、意大利、荷兰和德国)的建筑物数据来训练我们的模型,发现给定建筑物周围的城市结构形态高度预测了建筑物的高度。在对德国勃兰登堡州的测试中,我们的模型表明,它可以预测建筑物高度,平均误差远低于典型的楼层高度(约 2.5 米),而无需访问德国的训练数据。此外,我们还表明,即使是公民获取的少量本地高度数据也可以大大提高预测精度。我们的结果说明了预测城市基础设施缺失数据的可能性;它们还强调了开放政府数据和志愿者地理信息对于科学应用的价值,例如基于上下文但可扩展的策略来缓解气候变化。