Dynamic model to predict the association between air quality, COVID-19 cases, and level of lockdown

Studies have reported significant reductions in air pollutant levels due to the COVID-19 outbreak worldwide global lockdowns. Nevertheless, all of the reports are limited compared to data from the same period over the past few years, providing mainly an overview of past events, with no future predic...

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Veröffentlicht in:Environmental pollution (1987) 2021-01, Vol.268 (Pt B), p.115920-115920, Article 115920
Hauptverfasser: Tadano, Yara S., Potgieter-Vermaak, Sanja, Kachba, Yslene R., Chiroli, Daiane M.G., Casacio, Luciana, Santos-Silva, Jéssica C., Moreira, Camila A.B., Machado, Vivian, Alves, Thiago Antonini, Siqueira, Hugo, Godoi, Ricardo H.M.
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Sprache:eng
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Zusammenfassung:Studies have reported significant reductions in air pollutant levels due to the COVID-19 outbreak worldwide global lockdowns. Nevertheless, all of the reports are limited compared to data from the same period over the past few years, providing mainly an overview of past events, with no future predictions. Lockdown level can be directly related to the number of new COVID-19 cases, air pollution, and economic restriction. As lockdown status varies considerably across the globe, there is a window for mega-cities to determine the optimum lockdown flexibility. To that end, firstly, we employed four different Artificial Neural Networks (ANN) to examine the compatibility to the original levels of CO, O3, NO2, NO, PM2.5, and PM10, for São Paulo City, the current Pandemic epicenter in South America. After checking compatibility, we simulated four hypothetical scenarios: 10%, 30%, 70%, and 90% lockdown to predict air pollution levels. To our knowledge, ANN have not been applied to air pollution prediction by lockdown level. Using a limited database, the Multilayer Perceptron neural network has proven to be robust (with Mean Absolute Percentage Error ∼ 30%), with acceptable predictive power to estimate air pollution changes. We illustrate that air pollutant levels can effectively be controlled and predicted when flexible lockdown measures are implemented. The models will be a useful tool for governments to manage the delicate balance among lockdown, number of COVID-19 cases, and air pollution. [Display omitted] •COVID-19 cases, air pollution and lockdown level inter-dependency can be predicted.•First time ANN application to predict air quality change as a function of lockdown.•MLP has proven to be robust, with mean absolute percentage error around 30%.•Hypothetical lockdown (10–90%) predicted CO, O3, NO2, NO, PM2.5 and PM10 levels.
ISSN:0269-7491
1873-6424
DOI:10.1016/j.envpol.2020.115920