Occupancy State Prediction by Recurrent Neural Network (LSTM): Multi-Room Context

Sensors (Basel). 2023 Dec 4;23(23):9603. doi: 10.3390/s23239603.

Abstract

The energy consumption of a building is significantly influenced by the habits of its occupants. These habits not only pertain to occupancy states, such as presence or absence, but also extend to more detailed aspects of occupant behavior. To accurately capture this information, it is essential to use tools that can monitor occupant habits without altering them. Invasive methods such as body sensors or cameras could potentially disrupt the natural habits of the occupants. In our study, we primarily focus on occupancy states as a representation of occupant habits. We have created a model based on artificial neural networks (ANNs) to ascertain the occupancy state of a building using environmental data such as CO2 concentration and noise level. These data are collected through non-intrusive sensors. Our approach involves rule-based a priori labeling and the use of a long short-term memory (LSTM) network for predictive purposes. The model is designed to predict four distinct states in a residential building. Although we lack data on actual occupancy states, the model has shown promising results with an overall prediction accuracy ranging between 78% and 92%.

Keywords: artificial neural networks; building energy consumption; habits of occupants; long short-term memory; machine learning; neural network; occupant behavior.

Grants and funding

This research received no external funding.