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임민혁

Lim, Min Hyuk
Intelligence and Control-based BioMedicine Lab
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Towards optimal design of patient isolation units in emergency rooms to prevent airborne virus transmission: From computational fluid dynamics to data-driven modeling

Author(s)
Lee, JHShim, J.W.Lim, Min HyukBaek, C.Jeon, B.Cho, M.Park, S.Choi, D.H.Kim, B.S.Yoon, D.Kim, Y.G.Cho, S.Y.Lee, K.-M.Yeo, M.-SZo, H.Shin, S.D.Kim, S.
Issued Date
2024-05
DOI
10.1016/j.compbiomed.2024.108309
URI
https://scholarworks.unist.ac.kr/handle/201301/83551
Citation
COMPUTERS IN BIOLOGY AND MEDICINE, v.173, pp.108309
Abstract
Background: Patient isolation units (PIUs) can be an effective method for effective infection control. Computational fluid dynamics (CFD) is commonly used for PIU design; however, optimizing this design requires extensive computational resources. Our study aims to provide data-driven models to determine the PIU settings, thereby promoting a more rapid design process. Method: Using CFD simulations, we evaluated various PIU parameters and room conditions to assess the impact of PIU installation on ventilation and isolation. We investigated particle dispersion from coughing subjects and airflow patterns. Machine-learning models were trained using CFD simulation data to estimate the performance and identify significant parameters. Results: Physical isolation alone was insufficient to prevent the dispersion of smaller particles. However, a properly installed fan filter unit (FFU) generally enhanced the effectiveness of physical isolation. Ventilation and isolation performance under various conditions were predicted with a mean absolute percentage error of within 13%. The position of the FFU was found to be the most important factor affecting the PIU performance. Conclusion: Data-driven modeling based on CFD simulations can expedite the PIU design process by offering predictive capabilities and clarifying important performance factors. Reducing the time required to design a PIU is critical when a rapid response is required.
Publisher
Elsevier Ltd
ISSN
0010-4825
Keyword (Author)
Data-driven machine-learning-based modelingPatient isolation unitAirborne virusComputational fluid dynamicsCOVID-19

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