TL;DR
This paper develops a multiscale modeling framework that links microscopic droplet dynamics to population-level infection risks, highlighting the impact of ambient airflow on COVID-19 transmission in various crowded settings.
Contribution
It introduces a novel coarse-graining approach to connect fluid dynamics simulations with epidemiological models for short-range respiratory disease transmission.
Findings
Ambient airflow significantly disperses infectious aerosols, reducing transmission risk.
Crowd scenarios like street cafés and markets have higher infection risks.
Even modest winds substantially lower infection rates.
Abstract
Short-range exposure to airborne virus-laden respiratory droplets is now acknowledged as an effective transmission route of respiratory diseases, as exemplified by COVID-19. In order to assess the risks associated with this pathway in daily-life settings involving tens to hundreds of individuals, the chasm needs to be bridged between fluid dynamical simulations of droplet propagation and population-scale epidemiological models. We achieve this by coarse-graining microscopic droplet trajectories (simulated in various ambient flows) into spatio-temporal maps of viral concentration around the emitter and coupling these maps to field-data about pedestrian crowds in different scenarios (streets, train stations, markets, queues, and street caf{\'e}s). At the scale of an individual pedestrian, our results highlight the paramount importance of the velocity of the ambient air flow relative to…
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