An Optimal Predictive Control Strategy for COVID-19 (SARS-CoV-2) Social Distancing Policies in Brazil
Marcelo Menezes Morato, Saulo Benchimol Bastos, Daniel Oliveira, Cajueiro, Julio Elias Normey-Rico

TL;DR
This paper develops an optimal control strategy using Model Predictive Control to determine effective social distancing policies in Brazil during COVID-19, accounting for data uncertainties and population response dynamics.
Contribution
It introduces a novel MPC framework with a mixed-logical formalism and dynamic population response modeling for COVID-19 social distancing policy optimization.
Findings
Social distancing should not be relaxed before mid August 2020.
Relaxation periods should be short and carefully timed.
The second infection peak can be mitigated with shorter no-isolation periods.
Abstract
The global COVID-19 pandemic (SARS-CoV-2 virus) is the defining health crisis of our century. Due to the absence of vaccines and drugs that can help to fight it, the world solution to control the spread has been to consider public social distance measures that avoids the saturation of the health system. In this context, we investigate a Model Predictive Control (MPC) framework to determine the time and duration of social distancing policies. We use Brazilian data in the period from March to May of 2020. The available data regarding the number of infected individuals and deaths suffers from sub-notification due to the absence of mass tests and the relevant presence of the asymptomatic individuals. We estimate variations of the SIR model using an uncertainty-weighted Least-Squares criterion that considers both nominal and inconsistent-data conditions. Moreover, we add to our versions of…
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