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Predicting UK domestic electricity and gas consumption between differing demographic household compositions

Predicting UK domestic electricity and gas consumption between differing demographic household compositions
Predicting UK domestic electricity and gas consumption between differing demographic household compositions
This paper examines the influence of building characteristics, occupant demographics and behaviour on gas and electricity consumption, differentiating between family groups; homes with children; homes with elderly; and homes without either. Both regression and Lasso regression analyses are used to analyse data from a 2019 UK-based survey of 4358homes (n = 1576 with children, n = 436 with elderly, n = 2330 without either). Three models (building, occupants, behaviour) were tested against electricity and gas consumption for each group. Results indicated that homes without children or elderly consumed the least energy. Property Type emerged as the strongest predictor in the Building Model (except for homes with elderly), while Current Energy Efficiency was less significant, particularly for homes with elderly occupants. Homeownership and number of occupants were the most influential factors in the Occupants Model, though this pattern did not hold for homes with elderly. Many occupant and behaviour variables are often considered ‘unregulated energy’ in calculations such as SAP and are thus typically disregarded. However, this study found these variables to be significant, especially as national standards improve. The findings suggest that incorporating occupant behaviour into energy modelling could help reduce the energy performance gap.
1996-1073
Sewell, Gregory
89cc753a-9a0c-40a3-97e1-eb243634ec01
Gauthier, Stephanie
4e7702f7-e1a9-4732-8430-fabbed0f56ed
James, Patrick
da0be14a-aa63-46a7-8646-a37f9a02a71b
Stein, Sebastian
cb2325e7-5e63-475e-8a69-9db2dfbdb00b
Sewell, Gregory
89cc753a-9a0c-40a3-97e1-eb243634ec01
Gauthier, Stephanie
4e7702f7-e1a9-4732-8430-fabbed0f56ed
James, Patrick
da0be14a-aa63-46a7-8646-a37f9a02a71b
Stein, Sebastian
cb2325e7-5e63-475e-8a69-9db2dfbdb00b

Sewell, Gregory, Gauthier, Stephanie, James, Patrick and Stein, Sebastian (2024) Predicting UK domestic electricity and gas consumption between differing demographic household compositions. Energies, 17 (18), [4753]. (doi:10.3390/en17184753).

Record type: Article

Abstract

This paper examines the influence of building characteristics, occupant demographics and behaviour on gas and electricity consumption, differentiating between family groups; homes with children; homes with elderly; and homes without either. Both regression and Lasso regression analyses are used to analyse data from a 2019 UK-based survey of 4358homes (n = 1576 with children, n = 436 with elderly, n = 2330 without either). Three models (building, occupants, behaviour) were tested against electricity and gas consumption for each group. Results indicated that homes without children or elderly consumed the least energy. Property Type emerged as the strongest predictor in the Building Model (except for homes with elderly), while Current Energy Efficiency was less significant, particularly for homes with elderly occupants. Homeownership and number of occupants were the most influential factors in the Occupants Model, though this pattern did not hold for homes with elderly. Many occupant and behaviour variables are often considered ‘unregulated energy’ in calculations such as SAP and are thus typically disregarded. However, this study found these variables to be significant, especially as national standards improve. The findings suggest that incorporating occupant behaviour into energy modelling could help reduce the energy performance gap.

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Accepted/In Press date: 21 September 2024
Published date: 23 September 2024

Identifiers

Local EPrints ID: 499885
URI: http://eprints.soton.ac.uk/id/eprint/499885
ISSN: 1996-1073
PURE UUID: fb9b57f8-81f3-4de4-88d2-82874ee76588
ORCID for Gregory Sewell: ORCID iD orcid.org/0000-0003-0217-1113
ORCID for Stephanie Gauthier: ORCID iD orcid.org/0000-0002-1720-1736
ORCID for Patrick James: ORCID iD orcid.org/0000-0002-2694-7054
ORCID for Sebastian Stein: ORCID iD orcid.org/0000-0003-2858-8857

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Date deposited: 08 Apr 2025 16:34
Last modified: 22 Aug 2025 02:30

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Contributors

Author: Gregory Sewell ORCID iD
Author: Patrick James ORCID iD
Author: Sebastian Stein ORCID iD

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