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Research Project
Center for Research and Development in Mathematics and Applications
Funder
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Publications
Optimal control of the COVID-19 pandemic: controlled sanitary deconfinement in Portugal
Publication . Silva, Cristiana J.; Cruz, Carla; Torres, Delfim F. M.; Muñuzuri, Alberto P.; Carballosa, Alejandro; Area, Iván; Nieto, Juan J.; Fonseca-Pinto, Rui; Passadouro, Rui; Santos, Estevão Soares dos; Abreu, Wilson; Mira, Jorge
The COVID-19 pandemic has forced policy makers to decree urgent confinements to stop a rapid
and massive contagion. However, after that stage, societies are being forced to find an equilibrium
between the need to reduce contagion rates and the need to reopen their economies. The experience
hitherto lived has provided data on the evolution of the pandemic, in particular the population
dynamics as a result of the public health measures enacted. This allows the formulation of forecasting
mathematical models to anticipate the consequences of political decisions. Here we propose a model
to do so and apply it to the case of Portugal. With a mathematical deterministic model, described
by a system of ordinary differential equations, we fit the real evolution of COVID-19 in this country.
After identification of the population readiness to follow social restrictions, by analyzing the social
media, we incorporate this effect in a version of the model that allow us to check different scenarios.
This is realized by considering a Monte Carlo discrete version of the previous model coupled via a
complex network. Then, we apply optimal control theory to maximize the number of people returning
to “normal life” and minimizing the number of active infected individuals with minimal economical
costs while warranting a low level of hospitalizations. This work allows testing various scenarios of
pandemic management (closure of sectors of the economy, partial/total compliance with protection
measures by citizens, number of beds in intensive care units, etc.), ensuring the responsiveness of the
health system, thus being a public health decision support tool.
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Funders
Funding agency
Fundação para a Ciência e a Tecnologia
Funding programme
6817 - DCRRNI ID
Funding Award Number
UIDB/04106/2020
