Acceso abierto

Building Ventilation Optimization Through Occupant-Centered Computer Vision Analysis


Cite

Ahmad, A., Hassan, M., Abdullah, M., Rahman, H., Abdullah, F.H., & Saidur, R. (2014). A Review on Applications of ANN and SVM for Building Electrical Energy Consumption Forecasting. Renewable and Sustainable Energy Reviews, 33, 102–109. Search in Google Scholar

Nassif, N. (2012). A Robust CO2-Based Demand-Controlled Ventilation Control Strategy for Multi-Zone HVAC Systems. Energy and Buildings, 45, 72–81. Search in Google Scholar

Fisk, W.J., Sullivan, D.P., Faulkner, D., & Eliseeva, E. (2010). CO2 monitoring for demand-controlled ventilation in commercial buildings. Available at https://eta-publications.lbl.gov/sites/default/files/lbnl-3279e.pdf Search in Google Scholar

Howard-Reed, C., Wallace, L.A., & Ott, W.R. (2002). The Effect of Opening Windows on Air Change Rates in Two Homes. Journal of the Air & Waste Management Association, 52, 147–159. Search in Google Scholar

Wei, S., Tien, P.W., Chow, T.W., Wu, Y., & Calautit, J.K. (2022). Deep Learning and Computer Vision Based Occupancy CO2 Level Prediction for Demand-Controlled Ventilation (DCV). Journal of Building Engineering, 56. Search in Google Scholar

Yang, B., Liu, Y., Liu, P., Wang, F., Cheng, X., & Lv, Z. (2023). A Novel Occupant-Centric Stratum Ventilation System Using Computer Vision: Occupant Detection, Thermal Comfort, Air Quality, and Energy Savings. Building and Environment, 237. Search in Google Scholar

American Society of Heating, Refrigerating and Air Conditioning Engineers. (2019). Ansi/Ashrae Standard 62.1-2019, Ventilation for Acceptable Indoor Air Quality. Search in Google Scholar

Telicko, J., Vidulejs, D., & Jakovics, A. (2021). A Monitoring System for Evaluation of Covid-19 Infection Risk. Journal of Physics: Conference Series, 2069, 012192. Search in Google Scholar

Lin, T.-Y., Maire, M., Belongie, S., Bourdev, L., Girshick, R., Hays, J. …& Doll ìar, P. (2014). Microsoft Coco: Common Objects in Context. Available at https://arxiv.org/abs/1405.0312 Search in Google Scholar

Telicko, J., & Jakovics, A. (2023). Comparative analysis of yolov8 and mackrcnn for people counting on fish-eye images. In the 3rd International Conference on Electrical, Computer, Communications and Mechatronics Engineering (ICECCME), (pp. 1–6), 2023. Search in Google Scholar

Hussain, M. (2023). Yolo-v1 to Yolo-v8, the Rise of Yolo and its Complementary Nature toward Digital Manufacturing and Industrial Defect Detection. Machines and Tooling, 11, 677. Search in Google Scholar

Heidt, F., & Werner, H. (1986). Microcomputer-Aided Measurement of Air Change Rates. Energy and Buildings, 9. Search in Google Scholar

Persily, A, & de Jonge, L. (2017). Carbon Dioxide Generation Rates for Building Occupants. Indoor Air, 27, 868–879. Search in Google Scholar

eISSN:
2255-8896
Idioma:
Inglés
Calendario de la edición:
6 veces al año
Temas de la revista:
Physics, Technical and Applied Physics