TY - JOUR
T1 - Room-level domestic occupancy simulation model using time use survey data
AU - Sood, Divyanshu
AU - Wolf, Sebastian
AU - Cali, Davide
AU - Korsholm Andersen, Rune
AU - Li, Rongling
AU - Madsen, Henrik
AU - O'Donnell, James
PY - 2025
Y1 - 2025
N2 - To minimize the energy performance gap between expected and actual energy usage in buildings, it is crucial to accurately represent occupant behaviour, which significantly impacts building performance. With improved building insulation standards, the impact of occupant actions becomes more pronounced. Most domestic occupancy models use three general states: present & awake, present & sleeping, and absent. However, in residential buildings, room-level presence information is essential for accurately evaluating energy demands, as specific activities occur in specific rooms. The novelty of this study lies in the simulation of occupancy at the room level. Using data from a Danish time-use survey, a hidden Markov model was fitted to estimate transition probabilities between five states: bedroom, kitchen, bathroom, living room, and not present, based on recorded activities. An online application of the model is available (Link: https://proccs.compute.dtu.dk), enabling researchers or building designers to create room-level occupancy profiles for use in building energy performance tools, providing a more accurate representation of household occupancy.
AB - To minimize the energy performance gap between expected and actual energy usage in buildings, it is crucial to accurately represent occupant behaviour, which significantly impacts building performance. With improved building insulation standards, the impact of occupant actions becomes more pronounced. Most domestic occupancy models use three general states: present & awake, present & sleeping, and absent. However, in residential buildings, room-level presence information is essential for accurately evaluating energy demands, as specific activities occur in specific rooms. The novelty of this study lies in the simulation of occupancy at the room level. Using data from a Danish time-use survey, a hidden Markov model was fitted to estimate transition probabilities between five states: bedroom, kitchen, bathroom, living room, and not present, based on recorded activities. An online application of the model is available (Link: https://proccs.compute.dtu.dk), enabling researchers or building designers to create room-level occupancy profiles for use in building energy performance tools, providing a more accurate representation of household occupancy.
KW - Occupant behaviour
KW - Occupancy simulation
KW - Domestic occupancy
KW - Hidden Markov models
U2 - 10.1080/19401493.2025.2465508
DO - 10.1080/19401493.2025.2465508
M3 - Journal article
SN - 1940-1493
JO - Journal of Building Performance Simulation
JF - Journal of Building Performance Simulation
ER -