A global database of building occupant behavior

  • Air-conditioning use emerges as a key driver of growth in global electricity demand – News. OUCH https://www.iea.org/news/air-conditioning-use-emerges-as-one-of-the-key-drivers-of-global-electricity-demand-growth.

  • Arisoy, A. et al. NZEB Design Strategies for Residential Buildings in Mediterranean Regions – Part 1. European Guide 28. (Federation of European Heating, Ventilation and Air Conditioning Associations (REHVA) 2019).

  • Plesser, S., Teisen, O. & Ryan, C. Building quality management – Improving building performance through technical monitoring and commissioning – European Guide 29. (Federation of European Heating, Ventilation and Air Conditioning Associations (REHVA), 2021).

  • Cakan, M. et al. NZEB Design Strategies for Residential Buildings in Mediterranean Regions – Part 2. European Guide 31. (Federation of European Heating, Ventilation and Air Conditioning Associations (REHVA), 2021).

  • Cheshire, D. Guide F – Energy efficiency of buildings. (Chartered Institution of Building Services Engineers (CIBSE) 2012).

  • Cheshire, D. & Godfrey, J. Guide L – Sustainability. (Chartered Institution of Building Services Engineers (CIBSE), 2020).

  • Scofield, JH & Doane, J. Energy performance of LEED-certified buildings from 2015 Chicago baseline data. Energy and Buildings 174402–413 (2018).

    Google Scholar article

  • D’Oca, S., Hong, T. & Langevin, J. The human dimensions of energy use in buildings: A review. Renewable and Sustainable Energy Reviews 81731–742 (2018).

    Google Scholar article

  • Dong, B. et al. Occupancy and Behavior Modeling for Better Building Design and Operation – A Critical Review. To build. Sim. 11899-921 (2018).

    Google Scholar article

  • O’Brien, W. et al. Introducing IEA EBC Annex 79: Key Challenges and Opportunities in Occupant-Centered Building Design and Operation. Building and Environment 178106738 (2020).

    Google Scholar article

  • Yan, D. et al. AIE EBC Appendix 66: Definition and simulation of occupant behavior in buildings. Energy and Buildings 156258-270 (2017).

    Google Scholar article

  • Balaji, B. et al. Brick: towards a unified metadata schema for buildings. In Proceedings of the 3rd ACM International Conference on Systems for Energy Efficient Built Environments 41–50, https://doi.org/10.1145/2993422.2993577 (ACM, 2016).

  • Korsavi, SS, Montazami, A. & Mumovic, D. Perceived indoor air quality in naturally ventilated primary schools in the UK: impact of environmental variables and thermal sensation. Indoor air 31480-501 (2021).

    Google Scholar article

  • Jia, R., Sangogboye, FC, Hong, T., Spanos, C. & Kjærgaard, MB PAD: Protecting anonymity when publishing construction-related datasets. In Proceedings of the 4th ACM International Conference on Systems for Energy Efficient Built Environments 1–10, https://doi.org/10.1145/3137133.3137140 (Computer Machinery Association, 2017).

  • Koh, JB Metadata Models and Methods for Smart Buildings. (University of San Diego, 2020).

  • Kim, J. et al. Establishment of optimal occupant behavior considering energy consumption and indoor environmental quality by region. Energy applied 2041431-1443 (2017).

    Google Scholar article

  • Carlucci, S. et al. Modeling the behavior of occupants in buildings. Building and Environment 174106768 (2020).

    Google Scholar article

  • Amasyali, K. & El-Gohary, NM Energy values ​​and occupant satisfaction levels in residential and office buildings. Building and Environment 95251-263 (2016).

    Google Scholar article

  • Dong, B. et al. ASHRAE Global Occupant Behavior Database. fig tree slice https://doi.org/10.6084/m9.figshare.16920118.v6 (2021).

  • Sadat Korsavi, S., Montazami, A. & Brusey, J. Developing a design framework to facilitate adaptive behaviors. Energy and Buildings 179360–373 (2018).

    Google Scholar article

  • Rafsanjani, HN, Ahn, CR, and Chen, J. Linking Building Energy Use to Occupant Energy Consumption Behaviors in Commercial Buildings: Non-Intrusive Occupant Load Monitoring (NIOLM). Energy and Buildings 172317–327 (2018).

    Google Scholar article

  • Kumar, S. & Singh, MK Field investigation of thermal comfort and occupant preferences in naturally ventilated multi-storey hostels over two seasons in India. Building and Environment 163106309 (2019).

    Google Scholar article

  • Kumar, S., Singh, MK, Kukreja, R., Chaurasiya, SK & Gupta, VK Comparative study of thermal comfort and adaptive actions for modern and traditional naturally ventilated multi-storey hostels during monsoon season in India. Building Engineering Journal 2390-106 (2019).

    Google Scholar article

  • Schwee, J.H. et al. Number of room-level occupants and environmental quality from heterogeneous sensing modalities in a smart building. Scientific data 6287 (2019).

    Google Scholar article

  • Piselli, C. & Pisello, AL Long-term continuous monitoring of occupant behavior integrated with prediction models: impact on the energy performance of office buildings. Energy 176667–681 (2019).

    Google Scholar article

  • Gao, N., Marschall, M., Burry, J., Watkins, S. & Salim, FD Understanding Interior Occupant Behavior, Engagement, Emotion, and Comfort with Sensors and Wearable Devices heterogeneous. Scientific data 9261 (2022).

    Google Scholar article

  • Touchie, MF & Pressnail, KD Using energy consumption and indoor condition data to improve energy modeling of a 1960s MURB. Energy and Buildings 80184-194 (2014).

    Google Scholar article

  • Bursill, J. An approach to data-driven sensing and predictive supervisory control for commercial buildings with In situ Evaluation. (Carleton University, 2020).

  • Mora, D., Fajilla, G., Austin, MC & De Simone, M. Occupancy patterns obtained by heuristic approaches: cluster analysis and logical flowcharts. A case study in a university office. Energy and Buildings 186147-168 (2019).

    Google Scholar article

  • Dong, B., Li, Z. & Mcfadden, G. A survey of energy-related occupancy behavior for low-income residential buildings. Science and Technology for the Built Environment 21892–901 (2015).

    Google Scholar article

  • Bandurski, K., Hamerla, M., Szulc, J. & Koczyk, H. The influence of occupants of multi-family buildings on energy and water consumption – preliminary results of the monitoring campaign and investigation. E3S Web Conferencing 2200010 (2017).

    Google Scholar article

  • Das, A., Annaqeeb, MK, Azar, E., Novakovic, V. & Kjærgaard, MB Prediction of diverse occupant-centered electrical loads in buildings using state-of-the-art deep learning methods. Energy applied 269115135 (2020).

    Google Scholar article

  • Lipczynska, A., Schiavon, S. & Graham, LT Thermal comfort and self-reported productivity in an office with ceiling fans in the tropics. Building and Environment 135202-212 (2018).

    Google Scholar article

  • Mahdavi, A., Berger, C., Tahmasebi, F. & Schuss, M. Monitored data on the presence and actions of occupants in an office building. Scientific data 6290 (2019).

    Google Scholar article

  • Sonta, A., Dougherty, TR & Jain, RK Data-Based Optimization of Building Layout for Energy Efficiency. Energy and Buildings 238110815 (2021).

    Google Scholar article

  • Neves, LO, Hopes, AP, Chung, WJ & Natarajan, S. “Mind reading” construction operation behavior. Energy for Sustainable Development 561–18 (2020).

    Google Scholar article

  • Schweiker, M., Kleber, M. & Wagner, A. Long-term monitoring data from a naturally ventilated office building. Scientific data 6293 (2019).

    Google Scholar article

  • Rupp, RF, Andersen, RK, Toftum, J. & Ghisi, E. Occupant behavior in mixed-mode office buildings in a subtropical climate: beyond typical patterns of adaptive actions. Building and Environment 190107541 (2021).

    Google Scholar article

  • Langevin, J. Longitudinal dataset of human-building interactions in US offices. Scientific data 6288 (2019).

    Google Scholar article

  • Andrews, CJ et al. Expanding the Definition of Ecology: Health Impacts of Ecological Active Living Design in Low-Income Housing: Adding Value of Behavioral Interventions Within an Integrated Service Delivery Model. 42.

  • Park, JY, Dougherty, T., Fritz, H. & Nagy, Z. LightLearn: An adaptive, occupant-centered controller for reinforcement learning-based lighting. Building and Environment 147397–414 (2019).

    Google Scholar article

  • Malik, J., Bardhan, R., Hong, T. & Piette, MA Contextualizing adaptive comfort behavior in low-income housing in Mumbai, India. Building and Environment 177106877 (2020).

    Google Scholar article

  • Wang, Z., Hong, T., Piette, MA, and Pritoni, M. Inferring Occupant Counts from Wi-Fi Data in Buildings Using Machine Learning. Building and Environment 158281-294 (2019).

    Google Scholar article

  • Maria H. Underwood