Publication | Open Access
High Resolution Spatio-Temporal Model for Room-Level Airborne Pandemic Spread
12
Citations
71
References
2023
Year
EngineeringAir Pollution FiltrationEpidemiological DynamicAir QualityComputational EpidemiologyInfectious Disease ModellingComputational FrameworksInfectious Disease EpidemiologyPathogen PrevalenceMedicineGeographyAirflow DynamicsEpidemiologyInfectious Disease ModelingAtmospheric TransportIndoor Air QualityAir PollutionEpidemic IntelligenceAirborne PandemicsSpatio-temporal Model
Airborne pandemics have caused millions of deaths worldwide, large-scale economic losses, and catastrophic sociological shifts in human history. Researchers have developed multiple mathematical models and computational frameworks to investigate and predict pandemic spread on various levels and scales such as countries, cities, large social events, and even buildings. However, attempts of modeling airborne pandemic dynamics on the smallest scale, a single room, have been mostly neglected. As time indoors increases due to global urbanization processes, more infections occur in shared rooms. In this study, a high-resolution spatio-temporal epidemiological model with airflow dynamics to evaluate airborne pandemic spread is proposed. The model is implemented, using Python, with high-resolution 3D data obtained from a light detection and ranging (LiDAR) device and computing model based on the Computational Fluid Dynamics (CFD) model for the airflow and the Susceptible–Exposed–Infected (SEI) model for the epidemiological dynamics. The pandemic spread is evaluated in four types of rooms, showing significant differences even for a short exposure duration. We show that the room’s topology and individual distribution in the room define the ability of air ventilation to reduce pandemic spread throughout breathing zone infection.
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