Clustering Residential Electricity Consumption Data to Create Archetypes that Capture Household Behaviour in South Africa
Clustering is frequently used in the energy domain to identify dominant electricity consumption patterns of households, which can be used to construct customer archetypes for long term energy planning. Selecting a useful set of clusters however requires extensive experimentation and domain knowledge...
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South African Institute of Computer Scientists and Information Technologists
2020-12-01
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Series: | South African Computer Journal |
Online Access: | https://sacj.cs.uct.ac.za/index.php/sacj/article/view/845 |
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doaj-bdd5b59cdd524f3ca05f55874516ff562020-12-08T07:46:49ZengSouth African Institute of Computer Scientists and Information TechnologistsSouth African Computer Journal1015-79992313-78352020-12-0132210.18489/sacj.v32i2.845759Clustering Residential Electricity Consumption Data to Create Archetypes that Capture Household Behaviour in South AfricaWiebke Toussaint0https://orcid.org/0000-0002-9657-9509Deshendran Moodley1https://orcid.org/0000-0002-4340-9178Delft University of TechnologyUniversity of Cape TownClustering is frequently used in the energy domain to identify dominant electricity consumption patterns of households, which can be used to construct customer archetypes for long term energy planning. Selecting a useful set of clusters however requires extensive experimentation and domain knowledge. While internal clustering validation measures are well established in the electricity domain, they are limited for selecting useful clusters. Based on an application case study in South Africa, we present an approach for formalising implicit expert knowledge as external evaluation measures to create customer archetypes that capture variability in residential electricity consumption behaviour. By combining internal and external validation measures in a structured manner, we were able to evaluate clustering structures based on the utility they present for our application. We validate the selected clusters in a use case where we successfully reconstruct customer archetypes previously developed by experts. Our approach shows promise for transparent and repeatable cluster ranking and selection by data scientists, even if they have limited domain knowledge.https://sacj.cs.uct.ac.za/index.php/sacj/article/view/845 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Wiebke Toussaint Deshendran Moodley |
spellingShingle |
Wiebke Toussaint Deshendran Moodley Clustering Residential Electricity Consumption Data to Create Archetypes that Capture Household Behaviour in South Africa South African Computer Journal |
author_facet |
Wiebke Toussaint Deshendran Moodley |
author_sort |
Wiebke Toussaint |
title |
Clustering Residential Electricity Consumption Data to Create Archetypes that Capture Household Behaviour in South Africa |
title_short |
Clustering Residential Electricity Consumption Data to Create Archetypes that Capture Household Behaviour in South Africa |
title_full |
Clustering Residential Electricity Consumption Data to Create Archetypes that Capture Household Behaviour in South Africa |
title_fullStr |
Clustering Residential Electricity Consumption Data to Create Archetypes that Capture Household Behaviour in South Africa |
title_full_unstemmed |
Clustering Residential Electricity Consumption Data to Create Archetypes that Capture Household Behaviour in South Africa |
title_sort |
clustering residential electricity consumption data to create archetypes that capture household behaviour in south africa |
publisher |
South African Institute of Computer Scientists and Information Technologists |
series |
South African Computer Journal |
issn |
1015-7999 2313-7835 |
publishDate |
2020-12-01 |
description |
Clustering is frequently used in the energy domain to identify dominant electricity consumption patterns of households, which can be used to construct customer archetypes for long term energy planning. Selecting a useful set of clusters however requires extensive experimentation and domain knowledge. While internal clustering validation measures are well established in the electricity domain, they are limited for selecting useful clusters. Based on an application case study in South Africa, we present an approach for formalising implicit expert knowledge as external evaluation measures to create customer archetypes that capture variability in residential electricity consumption behaviour. By combining internal and external validation measures in a structured manner, we were able to evaluate clustering structures based on the utility they present for our application. We validate the selected clusters in a use case where we successfully reconstruct customer archetypes previously developed by experts. Our approach shows promise for transparent and repeatable cluster ranking and selection by data scientists, even if they have limited domain knowledge. |
url |
https://sacj.cs.uct.ac.za/index.php/sacj/article/view/845 |
work_keys_str_mv |
AT wiebketoussaint clusteringresidentialelectricityconsumptiondatatocreatearchetypesthatcapturehouseholdbehaviourinsouthafrica AT deshendranmoodley clusteringresidentialelectricityconsumptiondatatocreatearchetypesthatcapturehouseholdbehaviourinsouthafrica |
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