Data di Pubblicazione:
2022
Abstract:
: COVID-19 is an infectious disease mainly transmitted through aerosol particles. Physical
distancing can significantly reduce airborne transmission at a short range, but it is not a sufficient
measure to avoid contagion. In recent months, health authorities have identified indoor spaces as
possible sources of infection, mainly due to poor ventilation, making it necessary to take measures
to improve indoor air quality. In this work, an accurate model for COVID-19 contagion risk estimation based on the Wells-Riley probabilistic approach for indoor environments is proposed and
implemented as an Android mobile App. The implemented algorithm takes into account all relevant
parameters, such as environmental conditions, age, kind of activities, and ventilation conditions,
influencing the risk of contagion to provide the real-time probability of contagion with respect to
the permanence time, the maximum allowed number of people for the specified area, the expected
number of COVID-19 cases, and the required number of Air Changes per Hour. Alerts are provided
to the user in the case of a high probability of contagion and CO2 concentration. Additionally, the
app exploits a Bluetooth signal to estimate the distance to other devices, allowing the regulation
of social distance between people. The results from the application of the model are provided and
discussed for different scenarios, such as offices, restaurants, classrooms, and libraries, thus proving
the effectiveness of the proposed tool, helping to reduce the spread of the virus still affecting the
world population.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
COVID-19; SARS-CoV-2; smart healthcare; contagion-risk monitoring; aerosol
Elenco autori:
Costanzo, Sandra
Link alla scheda completa:
Pubblicato in: