Covid-19 and Flattening the Curve: A Feedback Control Perspective
Author(s)
Di Lauro, Francesco; Kiss, Istvan Zoltan; Rus, Daniela L; Della Santina, Cosimo
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Many of the policies that were put into place during the Covid-19 pandemic had a common goal: to flatten the curve of the number of infected people so that its peak remains under a critical threshold. This letter considers the challenge of engineering a strategy that enforces such a goal using control theory. We introduce a simple formulation of the optimal flattening problem, and provide a closed form solution. This is augmented through nonlinear closed loop tracking of the nominal solution, with the aim of ensuring close-to-optimal performance under uncertain conditions. A key contribution of this letter is to provide validation of the method with extensive and realistic simulations in a Covid-19 scenario, with particular focus on the case of Codogno - a small city in Northern Italy that has been among the most harshly hit by the pandemic.
Date issued
2020-11Department
Massachusetts Institute of Technology. Computer Science and Artificial Intelligence LaboratoryJournal
IEEE Control Systems Letters
Publisher
Institute of Electrical and Electronics Engineers (IEEE)
Citation
Di Lauro, Francesco et al. "Covid-19 and Flattening the Curve: A Feedback Control Perspective." IEEE Control Systems Letters 5, 4 (October 2021): 1435 - 1440 © 2021 IEEE
Version: Original manuscript
ISSN
2475-1456