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Identification of representative buildings and building groups in urban datasets using a novel pre-processing, classification, clustering and predictive modelling approach

机译:使用新颖的预处理,分类,聚类和预测建模方法识别城市数据集中的代表性建筑物和建筑物组

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The formulation of energy policies for urban building stock frequently requires the evaluation of the energy use of large numbers of buildings. When urban energy modelling is utilised as part of this process, the identification of building groups and associated representative buildings can play a critical role. This paper outlines a novel methodology for identifying building groups and associated representative buildings in urban datasets. The methodology utilizes a combination of building classification, building clustering and predictive modelling. First, multiple urban-scale datasets are collected, and then, classification techniques and clustering algorithms are applied to identify building clusters. Next, representative buildings (medoids) in each cluster are identified. Predictive modelling is used to expand cluster membership in the case where some buildings were excluded from the previous analysis. A number of different clustering algorithms are assessed, including K-means and hierarchical (agglomerative and divisive) and partitioning around medoids. The methodology is applied to a large dataset of mixed-use buildings in the city of Geneva, Switzerland. The results, assessed by nine validation indices, indicate the capacity of the decision support framework to identify clusters and associated representative buildings. Furthermore, post-application of predictive modelling, using a random forest approach, facilitates the incorporation of a larger portion of the building stock within the established clusters with an overall average classification accuracy of 89%. A total of 67 representative buildings were identified in the urban dataset, which consisted of 13614 mixed-use buildings in the city of Geneva.
机译:为城市建筑存量制定能源政策经常需要评估大量建筑物的能源使用。当将城市能源建模用作此过程的一部分时,识别建筑物组和相关的代表性建筑物将发挥关键作用。本文概述了一种用于识别城市数据集中的建筑群和相关代表建筑的新颖方法。该方法结合了建筑物分类,建筑物聚类和预测模型的组合。首先,收集多个城市规模的数据集,然后将分类技术和聚类算法应用于识别建筑群。接下来,确定每个群集中的代表性建筑物(类固醇)。如果先前的分析中排除了某些建筑物,则使用预测建模来扩展群集成员。评估了许多不同的聚类算法,包括K均值和分层(凝聚和分裂)以及围绕类固醇的划分。该方法已应用于瑞士日内瓦市的大型混合用途建筑数据集。由九个验证指标评估的结果表明,决策支持框架确定集群和相关代表建筑物的能力。此外,使用随机森林方法对预测模型进行后期应用,有助于将大部分建筑材料合并到已建立的集群中,总体平均分类精度为89%。在城市数据集中总共确定了67座具有代表性的建筑物,其中包括日内瓦市的13614处混合用途建筑物。

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