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Another Brick in the Wall: Leveraging Feature Extraction and Ensemble Learning for Building Data Classification

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dc.contributor.authorSteenwinckel, Bram
dc.contributor.authorVan Hoecke, Sofie
dc.contributor.authorOngenae, Femke
dc.contributor.imecauthorSteenwinckel, Bram
dc.contributor.imecauthorVan Hoecke, Sofie
dc.contributor.imecauthorOngenae, Femke
dc.contributor.orcidimecSteenwinckel, Bram::0000-0002-3488-2334
dc.contributor.orcidimecVan Hoecke, Sofie::0000-0002-7865-6793
dc.contributor.orcidimecOngenae, Femke::0000-0003-2529-5477
dc.date.accessioned2025-08-17T03:57:13Z
dc.date.available2025-08-17T03:57:13Z
dc.date.issued2025
dc.description.abstractAccurately classifying building time series data enables the identification of patterns, detecting anomalies, and the understanding of how people behave within a building and eventually leads to the automated control, predictive maintenance, and efficient energy management of smart buildings. The 2024 Brick by Brick competition aimed to create machine learning models that classify devices, which output building time series data according to the standardized Brick schema. Since manually labeling all these devices can require significant effort, the competition's goal was to automate this process. In this work, the competition's multi-label classification problem is reframed as a multiclass task in order to apply a classical multiclass classification approach. Our solution involves a structured pipeline where we extract statistical, temporal and frequency-domain features from various time intervals and apply feature selection techniques to enhance the model's efficiency. An extra-trees classifier, optimized using stratified k-fold cross-validation, forms the core of our model. Our method achieves a macro F1-score of 0.5767 on the Brick by Brick's public leaderboard test set, resulting in the 4th place and demonstrating its effectiveness in automating building device classification. By reducing manual effort and improving classification accuracy, our approach contributes to more scalable and intelligent building management systems.
dc.description.wosFundingTextThis work has been (partially) funded by the Flanders AI Research programme.
dc.identifier.doi10.1145/3701716.3718480
dc.identifier.eisbn979-8-4007-1331-6
dc.identifier.issnN/A
dc.identifier.urihttps://imec-publications.be/handle/20.500.12860/46085
dc.publisherASSOC COMPUTING MACHINERY
dc.source.beginpage3030
dc.source.conference2025 Web Conference-WWW
dc.source.conferencedate2025-04-28
dc.source.conferencelocationSydney
dc.source.endpage3034
dc.source.numberofpages5
dc.title

Another Brick in the Wall: Leveraging Feature Extraction and Ensemble Learning for Building Data Classification

dc.typeProceedings paper
dspace.entity.typePublication
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