Inferring roof semantics for more accurate solar potential assessment

Journal Article (2021)
Author(s)

I. Apra (Student TU Delft)

C. Bachert (Student TU Delft)

C. Cáceres Tocora (Student TU Delft)

Tufan (Student TU Delft)

O. Veselý (Student TU Delft)

Edward Verbree (TU Delft - GIS Technologie)

Research Group
GIS Technologie
Copyright
© 2021 I. Apra, C. Bachert, C. Cáceres Tocora, Tufan, O. Veselý, E. Verbree
DOI related publication
https://doi.org/10.5194/isprs-archives-XLVI-4-W4-2021-33-2021
More Info
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Publication Year
2021
Language
English
Copyright
© 2021 I. Apra, C. Bachert, C. Cáceres Tocora, Tufan, O. Veselý, E. Verbree
Research Group
GIS Technologie
Issue number
4/W4-2021
Volume number
46
Pages (from-to)
33-37
Reuse Rights

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Abstract

In guiding the energy transition efforts towards renewable energy sources, 3D city models were shown to be useful tools when assessing the annual solar energy generation potential of urban landscapes. However, the simplified roof geometry included in these 3D city models and the lack of additional semantic information about the buildings' roof often yield less accurate solar potential evaluations than desirable. In this paper we propose three different methods to infer and store additional information into 3D city models, namely on physical obstacles present on the roof and existing solar panels. Both can be used to increase the accuracy of roof solar panel retrofit potential. These methods are developed and tested on the open datasets available in the Netherlands, specifically AHN3 lidar point-cloud and PDOK aerial photography. However, we believe they can be adapted to different environments as well, based on the available datasets and their precision locally available.