特刊:CFD与Covid-19

IF 1.1 4区 工程技术 Q4 MECHANICS
T. Saad
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CFD has been used in the past to study the spread of airborne diseases in close quarters such as school buses, hospital wards, schools, and other crowded venues. Most of the existing work, however, was limited to low order RANS-type models due to technological limitations. With our modern computational power, it seems natural to seek advanced CFD calculations for Covid-19 and airborne disease transmission. More importantly, therewas little technology exchange between those studying the science of viral transmission and engineering fluid mechanics, in part because CFD was not very popular or was considered as an interesting gadget at best. Recent advances in computational science, however, and their impact on health sciences has created a newfound trust in tools such as CFD to study the spread of airborne disease. There is no better time to capitalise on that opportunity than the present. 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引用次数: 0

摘要

新冠肺炎疫情在全球造成重大人员和经济损失。虽然保持社交距离和戴口罩的经验法则被认为是抑制病毒传播的有效措施,但其背后的科学仍处于起步阶段,而且往往仅限于安静的空气条件。由于Covid-19等空气传播疾病主要通过雾化的呼吸道飞沫传播,因此流体动力学在其传播和随后的缓解中发挥着重要作用。这就是CFD可以在了解Covid-19和其他空气传播疾病如何传播方面发挥关键作用的地方。利用CFD提供的强大洞察力,可以实施简单有效的工程控制,从而减轻其他措施(如屏蔽、保持社交距离和接种疫苗)的合规负担。CFD过去曾用于研究近距离空气传播疾病的传播,如校车、医院病房、学校和其他拥挤的场所。然而,由于技术限制,大多数现有工作仅限于低阶ranss型模型。凭借现代计算能力,寻求Covid-19和空气传播疾病的先进CFD计算似乎是很自然的。更重要的是,研究病毒传播科学和工程流体力学的人之间几乎没有技术交流,部分原因是CFD不是很流行,或者充其量被认为是一个有趣的小工具。然而,计算科学的最新进展及其对健康科学的影响,使人们对CFD等研究空气传播疾病的工具产生了新的信任。现在是利用这一机会的最佳时机。空气传播的CFD有两个主要组成部分:模拟呼吸系统疾病源(例如口腔),随后跟踪它们在空气中的运动。一般来说,在非常高保真度的情况下不可能同时做到这两点,因为前者需要nslevel计算,而后者通常可以用LES或ransmodel很好地管理。此外,应用CFD来了解呼吸源必须在一定程度上依赖于颗粒大小分布及其在源处的性质的观测数据。另一方面,如果源被正确建模,这些可以有效地输入到CFD模型中,以捕获它们在空气中的整体运动。本期特刊的目的是邀请全球CFD和流体力学专家,利用先进的计算技术,为科学理解Covid-19的传播做出贡献。贡献者名单是由活跃的CFD从业者和先驱精心策划的,他们是第一批运用其专业知识近距离研究Covid-19传播的人。对本期特刊的贡献包括在LES框架内对呼吸道液滴的沉积、蒸发和传播进行高保真计算。此外,HPC和现代软件栈的使用渗透到所有提交的文章中。案例研究包括餐馆、城市公交车和一般室内空间的传播。我们希望,当涉及到流行病和空气传播疾病时,CFD在公共卫生决策中发挥关键作用。在该领域的持续工作,以提高高保真度和低订单模型是至关重要的,我们很高兴看到这个特殊的问题包含了这个领域非常需要的CFD结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Special Issue: CFD and Covid-19
The Covid-19 outbreak has caused significant human and economic loss across the world. While rules-ofthumb for social distancing and masking are thought to be effective measures at inhibiting the spread of the virus, the science behind them is still in its infancy and is often limited to quiescent air conditions. Because airborne diseases such as Covid-19 are transported primarily via aerosolized respiratory droplets, fluid dynamics plays a fundamental role in its spread and, subsequently, mitigation. This is where CFD can play a critical role in understanding how Covid-19 and other airborne diseases spread. With the powerful insight that CFD can provide, simple and effective engineering controls can be implemented therefore reducing the burden of compliance with other measures such as masking, social distancing, and vaccination. CFD has been used in the past to study the spread of airborne diseases in close quarters such as school buses, hospital wards, schools, and other crowded venues. Most of the existing work, however, was limited to low order RANS-type models due to technological limitations. With our modern computational power, it seems natural to seek advanced CFD calculations for Covid-19 and airborne disease transmission. More importantly, therewas little technology exchange between those studying the science of viral transmission and engineering fluid mechanics, in part because CFD was not very popular or was considered as an interesting gadget at best. Recent advances in computational science, however, and their impact on health sciences has created a newfound trust in tools such as CFD to study the spread of airborne disease. There is no better time to capitalise on that opportunity than the present. CFD for airborne transmission has two major components: modelling respiratory disease sources (e.g. mouth) and subsequently tracking their motion with the air. In general, it is not possible to do bothwith very high-fidelity because the former requires DNSlevel calculations while the latter can generally be well managed with LES or RANSmodels. In addition, CFD applied to understanding respiratory sources must at some point rely on observational data of particle size distributions and their properties at the source. On the other hand, if sources are properlymodelled, those can be effectively input to the CFD model to capture their bulk motion with the air. The objective of this special issue is to bring-in world experts in CFD and fluid mechanics to contribute to the scientific understanding of the spread of Covid-19 using advanced computational techniques. The list of contributors was carefully curated from active CFD practitioners and pioneers who were among the first to apply their expertise to study the spread of Covid-19 in close quarters. Contributions to this special issue include high-fidelity calculations of respiratory droplet transport accounting for deposition, evaporation, and transmission, within an LES framework. In addition, the use of HPC and modern software stacks permeates across all submitted articles. Case studies include transmission in a restaurant, city bus, and generic indoor spaces. It is our hope that CFD plays a critical role in public health decisions when it comes to pandemics and the spread of airborne diseases. Continued work in the area to improve both high-fidelity and low-ordermodels is critical and we are excited to see this special issue contain much needed CFD results in this area.
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来源期刊
CiteScore
2.70
自引率
7.70%
发文量
25
审稿时长
3 months
期刊介绍: The International Journal of Computational Fluid Dynamics publishes innovative CFD research, both fundamental and applied, with applications in a wide variety of fields. The Journal emphasizes accurate predictive tools for 3D flow analysis and design, and those promoting a deeper understanding of the physics of 3D fluid motion. Relevant and innovative practical and industrial 3D applications, as well as those of an interdisciplinary nature, are encouraged.
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