Bin, M., Crisostomi, E., Ferraro, P., Murray-Smith, R. , Parisini, T., Shorten, R. and Stein, S. (2021) Hysteresis-based supervisory control with application to non-pharmaceutical containment of COVID-19. Annual Reviews in Control, 52, pp. 508-522. (doi: 10.1016/j.arcontrol.2021.07.001) (PMID:34404974) (PMCID:PMC8361045)
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Abstract
The recent COVID-19 outbreak has motivated an extensive development of non-pharmaceutical intervention policies for epidemics containment. While a total lockdown is a viable solution, interesting policies are those allowing some degree of normal functioning of the society, as this allows a continued, albeit reduced, economic activity and lessens the many societal problems associated with a prolonged lockdown. Recent studies have provided evidence that fast periodic alternation of lockdown and normal-functioning days may effectively lead to a good trade-off between outbreak abatement and economic activity. Nevertheless, the correct number of normal days to allocate within each period in such a way to guarantee the desired trade-off is a highly uncertain quantity that cannot be fixed a priori and that must rather be adapted online from measured data. This adaptation task, in turn, is still a largely open problem, and it is the subject of this work. In particular, we study a class of solutions based on hysteresis logic. First, in a rather general setting, we provide general convergence and performance guarantees on the evolution of the decision variable. Then, in a more specific context relevant for epidemic control, we derive a set of results characterizing robustness with respect to uncertainty and giving insight about how a priori knowledge about the controlled process may be used for fine-tuning the control parameters. Finally, we validate the results through numerical simulations tailored on the COVID-19 outbreak.
Item Type: | Articles |
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Keywords: | Hysteresis control, supervisory control, COVID-19. |
Status: | Published |
Refereed: | Yes |
Glasgow Author(s) Enlighten ID: | Murray-Smith, Professor Roderick and Stein, Dr Sebastian |
Authors: | Bin, M., Crisostomi, E., Ferraro, P., Murray-Smith, R., Parisini, T., Shorten, R., and Stein, S. |
College/School: | College of Science and Engineering > School of Computing Science |
Journal Name: | Annual Reviews in Control |
Publisher: | Elsevier |
ISSN: | 1367-5788 |
ISSN (Online): | 1872-9088 |
Published Online: | 13 August 2021 |
Copyright Holders: | Copyright © 2021 The Authors |
First Published: | First published in Annual Reviews in Control 52: 508-522 |
Publisher Policy: | Reproduced under a Creative Commons licence |
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