Towards a data-driven and scalable approach for window operation detection in multi-family residential buildings
Natural cooling, utilizing non-mechanical cooling, presents a low-carbon and low-cost way to provide thermal comfort in residential buildings. However, designing naturally cooled buildings requires a clear understanding of how opening and closing windows affect occupants' comfort. Predicting wh...
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Zusammenfassung: | Natural cooling, utilizing non-mechanical cooling, presents a low-carbon and
low-cost way to provide thermal comfort in residential buildings. However,
designing naturally cooled buildings requires a clear understanding of how
opening and closing windows affect occupants' comfort. Predicting when and why
occupants open windows is a challenging task, often relying on specialized
sensors and building-specific training data. This limits the scalability of
natural cooling solutions. Here, we, propose a novel unsupervised method that
utilizes easily deployable off-the-shelf temperature and humidity sensors to
detect window operations. The effectiveness of our approach is evaluated using
an empirical dataset and compared with a state-of-the-art support vector
machine (SVM) model. The results demonstrate that our proposed method
outperforms the SVM on key indicators, except when indoor and outdoor
temperatures have small differences. Unlike the SVM's sensitivity to time
series characteristics, our proposed method relies solely on indoor temperature
and exhibits robust performance in pilot studies, making it a promising
candidate for developing a highly scalable and generalizable window operation
detection model This work demonstrates the potential of unsupervised
data-driven methods for understanding window operations in residential
buildings. By enabling more accurate modeling of naturally cooled buildings,
our work aims to facilitate the widespread adoption of this low-cost and
low-carbon technology. |
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DOI: | 10.48550/arxiv.2406.16957 |