Enhancing the prediction of artificial lighting control behavior using virtual reality (VR): A pilot study
Document Type
Conference Proceeding
Publication Date
1-1-2018
Abstract
Virtual reality (VR) has gained reputation in many research areas. It has been increasingly employed in the area of human behavior study. For the study of occupant behavior in buildings, VR is capable of allowing researchers to study occupant behavior in non-existing or future buildings to understand and refine building functions to fulfill occupants' satisfaction. However, doing research in VR has some limitations specially the sample size. In general, VR experiment generates a fewer number of samples compared to data from sensors a real environment (in-situ). Having a small sample size, sometimes VR data are insufficient to accurately perform further analyses. To overcome this problem, the authors utilize the potential of the Hidden Morkov Model (HMM) Baum-Welch algorithm to statistically learn the sequences and outcomes of VR data and repopulate synthetic data that are good enough for applications. The outcome of repopulated data was evaluated and compared with VR data and showed that HMM precisely estimated and generated the additional VR data.
Publication Source (Journal or Book title)
Construction Research Congress 2018: Sustainable Design and Construction and Education - Selected Papers from the Construction Research Congress 2018
First Page
216
Last Page
223
Recommended Citation
Chokwitthaya, C., Dibiano, R., Saeidi, S., Mukhopadhyay, S., & Zhu, Y. (2018). Enhancing the prediction of artificial lighting control behavior using virtual reality (VR): A pilot study. Construction Research Congress 2018: Sustainable Design and Construction and Education - Selected Papers from the Construction Research Congress 2018, 2018-April, 216-223. https://doi.org/10.1061/9780784481301.022