Amir-Mohammad Esmaieeli-Sikaroudi, Boris Goikhman, Dmitri Chubarov, Hung Dinh Nguyen, Michael Chertkov, Petr Vorobev
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Physics-Informed Building Occupancy Detection: a Switching Process with Markov Regime
Energy efficiency of buildings is considered to be one of the major means of
achieving the net-zero carbon goal around the world. The big part of the energy
savings are supposed to be coming from optimizing the operation of the building
heating, ventilation, and air conditioning (HVAC) systems. There is a natural
trade-off between the energy efficiency and the indoor comfort level, and
finding an optimal operating schedule/regime requires knowing the occupancy of
different spaces inside of the building. Moreover, the COVID-19 pandemic has
also revealed the need to sustain the high quality of the indoor air in order
to reduce the risk of spread of infection. Occupancy detection from indoor
sensors is thus an important practical problem. In the present paper, we
propose detection of occupancy based on the carbon dioxide measurements inside
the building. In particular, a new approach based on the, so-called, switching
auto-regressive process with Markov regime is presented and justified by the
physical model of the carbon dioxide concentration dynamics. We demonstrate the
efficiency of the method compared to simple Hidden Markov approaches on
simulated and real-life data. We also show that the model is flexible and can
be generalized to account for different ventilation regimes, simultaneously
detecting the occupancy and the ventilation rate.