Optimal control of the COVID-19 pandemic: controlled sanitary deconfinement in Portugal
Cristiana J. Silva, Carla Cruz, Delfim F. M. Torres, Alberto P., Munuzuri, Alejandro Carballosa, Ivan Area, Juan J. Nieto, Rui Fonseca-Pinto,, Rui Passadouro da Fonseca, Estevao Soares dos Santos, Wilson Abreu, Jorge, Mira

TL;DR
This paper develops a mathematical model and optimal control strategy to balance COVID-19 containment and economic reopening in Portugal, using data-driven simulations and social media analysis.
Contribution
It introduces a deterministic and network-based stochastic model incorporating social behavior, and applies optimal control to guide pandemic management decisions.
Findings
Model accurately fits COVID-19 evolution in Portugal
Optimal control scenarios suggest effective strategies for reopening
Framework supports health system responsiveness and economic considerations
Abstract
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…
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