LGOct 8, 2020

Towards the Detection of Building Occupancy with Synthetic Environmental Data

arXiv:2010.04209v113 citations
Originality Synthesis-oriented
AI Analysis

This addresses the challenge of data scarcity for building automation and energy simulation, though it is incremental as it builds on existing data-driven methods.

The paper tackles the problem of building occupancy detection by proposing knowledge transfer from synthetic data to reduce data requirements, showing that this approach can effectively reduce the amount of data needed for model training.

Information about room-level occupancy is crucial to many building-related tasks, such as building automation or energy performance simulation. Current occupancy detection literature focuses on data-driven methods, but is mostly based on small case studies with few rooms. The necessity to collect room-specific data for each room of interest impedes applicability of machine learning, especially data-intensive deep learning approaches, in practice. To derive accurate predictions from less data, we suggest knowledge transfer from synthetic data. In this paper, we conduct an experiment with data from a CO$_2$ sensor in an office room, and additional synthetic data obtained from a simulation. Our contribution includes (a) a simulation method for CO$_2$ dynamics under randomized occupant behavior, (b) a proof of concept for knowledge transfer from simulated CO$_2$ data, and (c) an outline of future research implications. From our results, we can conclude that the transfer approach can effectively reduce the required amount of data for model training.

Foundations

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