Modelling Residential Supply Tasks Based on Digital Orthophotography
Using Machine Learning
- URL: http://arxiv.org/abs/2210.14013v1
- Date: Tue, 25 Oct 2022 13:34:49 GMT
- Title: Modelling Residential Supply Tasks Based on Digital Orthophotography
Using Machine Learning
- Authors: Klemens Schumann, Luis B\"ottcher, Philipp H\"alsig, Daniel Zelenak,
Andreas Ulbig
- Abstract summary: This paper presents a methodology which allows a holistic determination of residential supply tasks based on orthophotos.
The results show that the electricity demand deviates from the results of a reference method by an average 9%.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In order to achieve the climate targets, electrification of individual
mobility is essential. However, grid integration of electrical vehicles poses
challenges for the electrical distribution network due to high charging power
and simultaneity. To investigate these challenges in research studies, the
network-referenced supply task needs to be modeled. Previous research work
utilizes data that is not always complete or sufficiently granular in space.
This is why this paper presents a methodology which allows a holistic
determination of residential supply tasks based on orthophotos. To do this,
buildings are first identified from orthophotos, then residential building
types are classified, and finally the electricity demand of each building is
determined. In an exemplary case study, we validate the presented methodology
and compare the results with another supply task methodology. The results show
that the electricity demand deviates from the results of a reference method by
an average 9%. Deviations result mainly from the parameterization of the
selected residential building types. Thus, the presented methodology is able to
model supply tasks similarly as other methods but more granular.
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