高速公路客车空气传染/传播风险预测的计算流体和粒子动力学分析:参数化研究

IF 1.8 Q3 MECHANICS Fluids Pub Date : 2023-09-17 DOI:10.3390/fluids8090253
Sung-Jun Yoo, Shori Yamauchi, Hyungyu Park, Kazuhide Ito
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引用次数: 0

摘要

公路公共汽车广泛用于通勤服务和旅游业。在最近的大流行后世界,对公路公共汽车运输的需求急剧增加,空中传播的风险可能会随着对公路公共汽车的需求而增加,因为公共汽车客舱内的乘客密度更高。建立了客车客舱内空气传播风险空间分布的数值预测方法。为了进行计算流体动力学分析,以两种类型的客车客舱为目标,再现了具有真实加热、通风和空调的客车客舱的复杂几何形状。巴士客舱里的乘客是用电脑模拟的人来复制的。基于计算流体力学进行气流、热量和水分传递分析,预测乘客周围的小气候以及客舱气候与乘客之间的相互作用。最后,采用欧拉-拉格朗日方法进行了液滴弥散分析,并对假设感染SARS-CoV-2的感染/传播风险的空间分布进行了调查。通过对降低空气传播感染风险的被动对策和个体对策的参数分析,探讨了空气传播感染对策的有效性。设置隔墙作为被动对策,对人体小气候有影响,降低了感染风险。个人的对策,戴口罩,几乎完全防止了空气传播。
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Computational Fluid and Particle Dynamics Analyses for Prediction of Airborne Infection/Spread Risks in Highway Buses: A Parametric Study
Highway buses are used in a wide range of commuting services and in the tourist industry. The demand for highway bus transportation has dramatically increased in the recent post-pandemic world, and airborne transmission risks may increase alongside the demand for highway buses, owing to a higher passenger density in bus cabins. We developed a numerical prediction method for the spatial distribution of airborne transmission risks inside bus cabins. For a computational fluid dynamics analyses, targeting two types of bus cabins, sophisticated geometries of bus cabins with realistic heating, ventilation, and air-conditioning were reproduced. The passengers in bus cabins were reproduced using computer-simulated persons. Airflow, heat, and moisture transfer analysis were conducted based on computational fluid dynamics, to predict the microclimate around passengers and the interaction between the cabin climate and passengers. Finally, droplet dispersion analysis using the Eulerian–Lagrangian method and an investigation of the spatial distribution of infection/spread risks, assuming SARS-CoV-2 infection, were performed. Through parametric analyses of passive and individual countermeasures to reduce airborne infection risks, the effectiveness of countermeasures for airborne infection was discussed. Partition installation as a passive countermeasure had an impact on the human microclimate, which decreased infection risks. The individual countermeasure, mask-wearing, almost completely prevented airborne infection.
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来源期刊
Fluids
Fluids Engineering-Mechanical Engineering
CiteScore
3.40
自引率
10.50%
发文量
326
审稿时长
12 weeks
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