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Office Low-Intrusive Occupancy Detection Based on Power Consumption | IEEE Journals & Magazine | IEEE Xplore

Office Low-Intrusive Occupancy Detection Based on Power Consumption


Occupancy detection with ID on a specific day using RNN LSTM. Blue line shows power usage in Watts, orange line shows predicted occupancy, and dashed green line shows act...

Abstract:

Precise fine-grained office occupancy detection can be exploited for energy savings in buildings. Based on such information one can optimally regulate lighting and climat...Show More
Topic: Deep Learning for Internet of Things

Abstract:

Precise fine-grained office occupancy detection can be exploited for energy savings in buildings. Based on such information one can optimally regulate lighting and climatization based on the actual presence and absence of users. Conventional approaches are based on movement detection, which are cheap and easy to deploy, but are imprecise and offer coarse information. We propose a power monitoring system as a source of occupancy information. The approach is based on sub-metering at the level of room circuit breakers. The proposed method tackles the problem of indoor office occupancy detection based on statistical approaches, thus contributing to building context awareness which, in turn, is a crucial stepping stone for energy-efficient buildings. The key advantage of the proposed approach is to be low intrusive, especially when compared with image- or tag-based solutions, while still being sufficiently precise in its classification. Such classification is based on nearest neighbors and neural networks machine learning approaches, both in sequential and non-sequential implementations. To test the viability, precision, and saving potential of the proposed approach we deploy in an actual office over several months. We find that the room-level sub-metering can acquire precise, fine-grained occupancy context for up to three people, with averaged kappa measures of 93-95% using either the nearest neighbors or neural networks based approaches.
Topic: Deep Learning for Internet of Things
Occupancy detection with ID on a specific day using RNN LSTM. Blue line shows power usage in Watts, orange line shows predicted occupancy, and dashed green line shows act...
Published in: IEEE Access ( Volume: 9)
Page(s): 141167 - 141180
Date of Publication: 14 October 2021
Electronic ISSN: 2169-3536

References

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