Assessment of airborne transmitted infection risk in classrooms using computational fluid dynamics and machine learning-based surrogate modeling

被引:1
|
作者
Lee, Hyeonjun [1 ]
Rim, Donghyun [1 ]
机构
[1] Penn State Univ, Architectural Engn Dept, 222 Engn Unit A, University Pk, PA 16801 USA
来源
基金
美国国家科学基金会;
关键词
Computational fluid dynamics; Data-driven machine learning; Surrogate modeling; Airborne transmission; Infection risk; AIR-FLOW; INDOOR ENVIRONMENTS;
D O I
10.1016/j.jobe.2024.110760
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
In recent years, the assessment of airborne transmitted infection risk has been extensively performed using Computational Fluid Dynamics (CFD) simulations, especially in response to the COVID-19 pandemic. Nevertheless, the high computational demands and time-intensive nature of CFD simulations highlight the need for fast or real-time infection risk predictions. This capability is crucial for swift decision-making in dynamic environments where timely health interventions are critical. This paper presents a thorough analysis of airborne infection risks in classroom environments based on CFD simulations to understand key factors such as ventilation strategies, air change rates, occupant arrangements, source locations, and particle sizes. This study also employs data-driven supervised learning methods-specifically, Long Short-Term Memory (LSTM) and Artificial Neural Networks (ANN)-to generate surrogate models for predicting airborne infection risk. Key findings reveal that different ventilation strategies significantly affect airborne infection risk, reducing it by 49 %-77 %. Moreover, the conventional Wells-Riley model was identified as lacking in its ability to accurately predict local infection risks. The study further challenges the assumption that higher air change rates are universally beneficial, considering that occupants seated in the back rows of a classroom experienced up to a 166 % increased risk, despite elevating air change rates from 1.1 h(-1) to 11 h(-1). These results suggest that physical distancing alone may be insufficient and highlight the importance of considering other factors such as occupant arrangements. Regarding the model performance, the ANN-based surrogate model demonstrated varying prediction accuracy. For inhalable particle concentration predictions for susceptible occupants, R-2 values ranged from 0.31 to 0.65 with CVRMSE values between 100 % and 180 %. In contrast, the model achieved an R-2 of 0.79 and a CVRMSE of 34 % for infectors. The insights and methodologies from this study can inform HVAC system design and operation strategies to better mitigate infectious disease transmission in densely occupied indoor environments.
引用
收藏
页数:21
相关论文
共 50 条
  • [31] Machine Learning-Based Surrogate Modeling for Urban Water Networks: Review and Future Research Directions
    Garzon, A.
    Kapelan, Z.
    Langeveld, J.
    Taormina, R.
    WATER RESOURCES RESEARCH, 2022, 58 (05)
  • [32] Evolving reliability assessment of systems using active learning-based surrogate modelling
    Zhu, Yuhang
    Zhao, Yinghao
    Song, Chaolin
    Wang, Zeyu
    PHYSICA D-NONLINEAR PHENOMENA, 2024, 457
  • [33] Machine Learning-Based Fast Seismic Risk Assessment of Building Structures
    Tang, Qi
    Dang, Ji
    Cui, Yao
    Wang, Xin
    Jia, Jinqing
    JOURNAL OF EARTHQUAKE ENGINEERING, 2022, 26 (15) : 8041 - 8062
  • [34] Machine Learning-Based Fault Injection for Hazard Analysis and Risk Assessment
    Oakes, Bentley James
    Moradi, Mehrdad
    Van Mierlo, Simon
    Vangheluwe, Hans
    Denil, Joachim
    COMPUTER SAFETY, RELIABILITY, AND SECURITY (SAFECOMP 2021), 2021, 12852 : 178 - 192
  • [35] A machine learning-based predictive model for risk assessment in airport areas
    Gugliandolo, Giovanni
    Caccamo, Maria Teresa
    Castorina, Giuseppe
    Chillemi, Domenica Letizia
    Famoso, Fabio
    Munao, Gianmarco
    Raffaele, Marcello
    Schifilliti, Valeria
    Semprebello, Agostino
    Magazu, Salvatore
    2021 IEEE 8TH INTERNATIONAL WORKSHOP ON METROLOGY FOR AEROSPACE (IEEE METROAEROSPACE), 2021, : 53 - 57
  • [36] CREDIBILITY ASSESSMENT OF MACHINE LEARNING-BASED SURROGATE MODEL PREDICTIONS ON NACA 0012 AIRFOIL FLOW
    Kirsch, Jared
    Rider, William
    Fathi, Nima
    PROCEEDINGS OF 2024 VERIFICATION, VALIDATION, AND UNCERTAINTY QUANTIFICATION SYMPOSIUM, VVUQ2024, 2024,
  • [37] Malnutrition risk assessment using a machine learning-based screening tool: A multicentre retrospective cohort
    Parchuri, Pramathamesh
    Besculides, Melanie
    Zhan, Serena
    Cheng, Fu-yuan
    Timsina, Prem
    Cheertirala, Satya Narayana
    Kersch, Ilana
    Wilson, Sara
    Freeman, Robert
    Reich, David
    Mazumdar, Madhu
    Kia, Arash
    JOURNAL OF HUMAN NUTRITION AND DIETETICS, 2024, 37 (03) : 622 - 632
  • [38] Modeling Cloud Computing Risk Assessment Using Machine Learning
    Ahmed, Nada
    Abraham, Ajith
    AFRO-EUROPEAN CONFERENCE FOR INDUSTRIAL ADVANCEMENT, AECIA 2014, 2015, 334 : 315 - 325
  • [39] Machine learning-based modeling of surface water temperature dynamics in arctic lakes
    Kim, Hyung Il
    Kim, Dongkyun
    Salamattalab, Mohammad Milad
    Mahdian, Mehran
    Bateni, Sayed M.
    Noori, Roohollah
    Environmental Science and Pollution Research, 2024, 31 (49) : 59642 - 59655
  • [40] A bilevel production planning using machine learning-based customer modeling
    Nakao, Jun
    Nishi, Tatsushi
    JOURNAL OF ADVANCED MECHANICAL DESIGN SYSTEMS AND MANUFACTURING, 2022, 16 (04):