Collecting Data for Urban Building Energy Modelling by Remote Sensing and Machine Learning

被引:1
|
作者
Gorzalka, Philip [1 ]
Garbasevschi, Oana M. [1 ]
Schmiedt, Jacob Estevam [1 ]
Droin, Ariane [1 ]
Linkiewicz, Magdalena [1 ]
Wurm, Michael [1 ]
Hoffschmidt, Bernhard [1 ]
机构
[1] German Aerosp Ctr DLR, Julich, Germany
关键词
FEATURES;
D O I
10.26868/25222708.2021.30184
中图分类号
学科分类号
摘要
High-quality data on the investigated area is crucial for modelling urban building energy demands, but its availability is often insufficient. We present an approach to acquire (i) building geometries, (ii) their ages, and (iii) their retrofit states. It consists of creating a 3D model from aerial imagery, determining building ages through machine learning, generating a simulation model based on open-source tools, and assessing retrofit states by comparing simulated temperatures with infrared thermography (IRT) measurements. The demonstration on a case study quarter in Berlin shows that heat demand results are comparable to other tools. Using machine learning is already well-suited to close knowledge gaps regarding building ages. However, retrofit state assessment using IRT was unsatisfactory due to insufficient measurement accuracy and is envisaged for improvement in future research, along with a validation of the approach.
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页码:1139 / 1146
页数:8
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