LAPSE:2023.31641
Published Article

LAPSE:2023.31641
A Cross-Country Model for End-Use Specific Aggregated Household Load Profiles
April 19, 2023
Abstract
End-use specific residential electricity load profiles are of interest for energy system modelling that requires future load curves or demand-side management. We present a model that is applicable across countries to predict consumption on a regional and national scale, using openly available data. The model uses neural networks (NNs) to correlate measured consumption from one country (United Kingdom) with weather data and daily profiles of a mix of human activity and device specific power profiles. We then use region-specific weather data and time-use surveys as input for the trained NNs to predict unscaled electric load profiles. The total power profile consists of the end-use household load profiles scaled with real consumption. We compare the model’s results with measured and independently simulated profiles of various European countries. The NNs achieve a mean absolute error compared with the average load of 6.5 to 33% for the test set. For Germany, the standard deviation between the simulation, the standard load profile H0, and measurements from the University of Applied Sciences Berlin is 26.5%. Our approach reduces the amount of input data required compared with existing models for modelling region-specific electricity load profiles considering end-uses and seasonality based on weather parameters. Hourly load profiles for 29 European countries based on four historical weather years are distributed under an open license.
End-use specific residential electricity load profiles are of interest for energy system modelling that requires future load curves or demand-side management. We present a model that is applicable across countries to predict consumption on a regional and national scale, using openly available data. The model uses neural networks (NNs) to correlate measured consumption from one country (United Kingdom) with weather data and daily profiles of a mix of human activity and device specific power profiles. We then use region-specific weather data and time-use surveys as input for the trained NNs to predict unscaled electric load profiles. The total power profile consists of the end-use household load profiles scaled with real consumption. We compare the model’s results with measured and independently simulated profiles of various European countries. The NNs achieve a mean absolute error compared with the average load of 6.5 to 33% for the test set. For Germany, the standard deviation between the simulation, the standard load profile H0, and measurements from the University of Applied Sciences Berlin is 26.5%. Our approach reduces the amount of input data required compared with existing models for modelling region-specific electricity load profiles considering end-uses and seasonality based on weather parameters. Hourly load profiles for 29 European countries based on four historical weather years are distributed under an open license.
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Keywords
consumer behavior, cross-country, end-uses, energy system modelling, household load profile, neural network, open data
Suggested Citation
Schlemminger M, Niepelt R, Brendel R. A Cross-Country Model for End-Use Specific Aggregated Household Load Profiles. (2023). LAPSE:2023.31641
Author Affiliations
Schlemminger M: Department Solar Energy, Leibniz University Hannover, Appelstr. 2, 30167 Hannover, Germany [ORCID]
Niepelt R: Department Solar Energy, Leibniz University Hannover, Appelstr. 2, 30167 Hannover, Germany; Institute for Solar Energy Research Hamelin (ISFH), Am Ohrberg 1, 31860 Emmerthal, Germany
Brendel R: Department Solar Energy, Leibniz University Hannover, Appelstr. 2, 30167 Hannover, Germany; Institute for Solar Energy Research Hamelin (ISFH), Am Ohrberg 1, 31860 Emmerthal, Germany
Niepelt R: Department Solar Energy, Leibniz University Hannover, Appelstr. 2, 30167 Hannover, Germany; Institute for Solar Energy Research Hamelin (ISFH), Am Ohrberg 1, 31860 Emmerthal, Germany
Brendel R: Department Solar Energy, Leibniz University Hannover, Appelstr. 2, 30167 Hannover, Germany; Institute for Solar Energy Research Hamelin (ISFH), Am Ohrberg 1, 31860 Emmerthal, Germany
Journal Name
Energies
Volume
14
Issue
8
First Page
2167
Year
2021
Publication Date
2021-04-13
ISSN
1996-1073
Version Comments
Original Submission
Other Meta
PII: en14082167, Publication Type: Journal Article
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LAPSE:2023.31641
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https://doi.org/10.3390/en14082167
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Apr 19, 2023
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