4.6 Review

Robust and optimal predictive control of the COVID-19 outbreak

Journal

ANNUAL REVIEWS IN CONTROL
Volume 51, Issue -, Pages 525-539

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.arcontrol.2020.11.002

Keywords

Epidemic control; COVID-19; Optimal control; Model predictive control; Robustness

Funding

  1. Deutsche Forschungsgemeinschaft (DFG, German Research Foundation) [GRK 2198/1277536708, AL 316/122279734922]
  2. International Max Planck Research School for Intelligent Systems (IMPRS-IS)

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The study shows that adaptive feedback strategies are required to reliably contain the COVID-19 outbreak, and well-designed policies can significantly reduce the number of fatalities. In dealing with uncertain data and model mismatch, using model predictive control (MPC) to implement a feedback strategy that updates the policy weekly can achieve reliable performance.
We investigate adaptive strategies to robustly and optimally control the COVID-19 pandemic via social distancing measures based on the example of Germany. Our goal is to minimize the number of fatalities over the course of two years without inducing excessive social costs. We consider a tailored model of the German COVID-19 outbreak with different parameter sets to design and validate our approach. Our analysis reveals that an open-loop optimal control policy can significantly decrease the number of fatalities when compared to simpler policies under the assumption of exact model knowledge. In a more realistic scenario with uncertain data and model mismatch, a feedback strategy that updates the policy weekly using model predictive control (MPC) leads to a reliable performance, even when applied to a validation model with deviant parameters. On top of that, we propose a robust MPC-based feedback policy using interval arithmetic that adapts the social distancing measures cautiously and safely, thus leading to a minimum number of fatalities even if measurements are inaccurate and the infection rates cannot be precisely specified by social distancing. Our theoretical findings support various recent studies by showing that (1) adaptive feedback strategies are required to reliably contain the COVID-19 outbreak, (2) well-designed policies can significantly reduce the number of fatalities compared to simpler ones while keeping the amount of social distancing measures on the same level, and (3) imposing stronger social distancing measures early on is more effective and cheaper in the long run than opening up too soon and restoring stricter measures at a later time.

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