Abstract

Clustering has been shown to be a promising approach to reduce the large amount of data from smart heat meters to representative profiles. However, attempts to understand why a case (building including its occupants) is within a particular cluster have only been moderately accurate. Therefore, this work uses existing energy use clusters based on about 4500 single-family homes to investigate whether socio-economic characteristics (SECs) alone or in combination with building characteristics (BCs) can improve the insight into the energy use clusters. An established variable selection and classification approach based on random forests was used. The results show that the eight SECs used alone provide poor insight into the energy use clusters, achieving only a Matthew Correlation Coefficient (MCC) of around 0.1. Simplifying the energy use clusters based on similarities, which was successful in the past, only moderately increased the MCC (≈ 0.17). When combined with BCs, SECs were never selected by the algorithm used, showing that they do not lead to a (significant) increase in MCC for both unsimplified and simplified clusters. Thus, this work suggests that SECs do not provide additional insights into why a case is within its respective energy use cluster.
Original languageEnglish
Article number052004
Book seriesJournal of Physics: Conference Series (Online)
Volume2600
Issue number5
ISSN1742-6596
DOIs
Publication statusPublished - Nov 2023
Event2023 International Conference on the Built Environment in Transition, CISBAT 2023 - EPFL, Hybrid, Lausanne, Switzerland
Duration: 13 Sept 202315 Sept 2023
https://cisbat.epfl.ch/index.html

Conference

Conference2023 International Conference on the Built Environment in Transition, CISBAT 2023
LocationEPFL
Country/TerritorySwitzerland
CityHybrid, Lausanne
Period13/09/202315/09/2023
SponsorSwiss Federal Institute of Technology Lausanne, Smart Living Lab, Swiss Federal Office of Energy (SFOE)
Internet address

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