eBIM-GNN Fast and Scalable energy analysis through BIMs and Graph Neural Networks

Rucha Bhalchandra Joshi, Annada Prasad Behera, Subhankar Mishra
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Abstract

Building Information Modeling has been used to analyze as well as increase the energy efficiency of the buildings. It has shown significant promise in existing buildings by deconstruction and retrofitting. Current cities which were built without the knowledge of energy savings are now demanding better Ways to become smart in energy utilization. However, the existing methods of generating BIMs work on building basis. Hence they are slow and expensive When we scale to a larger community or even entire towns or cities. In this paper, we propose a method to creation of prototype buildings that enable us to match and generate statistics very efficiently. Our method suggests better energy efficient prototypes for the existing buildings. The existing buildings are identified and located in the 3D point cloud. We perform experiments on synthetic dataset to demonstrate the working of our approach.
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基于bim和图神经网络的快速可扩展能量分析
建筑信息模型已被用于分析和提高建筑的能源效率。通过解构和改造,它在现有建筑中显示出巨大的希望。目前的城市在没有节能知识的情况下建造,现在需要更好的方法来实现能源的智能利用。然而,现有的生成bim的方法是建立在构建的基础上的。因此,当我们扩展到更大的社区甚至整个城镇或城市时,它们是缓慢而昂贵的。在本文中,我们提出了一种创建原型建筑的方法,使我们能够非常有效地匹配和生成统计数据。我们的方法为现有建筑提供了更好的节能原型。现有建筑在三维点云中被识别和定位。我们在合成数据集上进行了实验,以证明我们的方法的有效性。
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