2022
DOI: 10.48550/arxiv.2202.00924
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Designing Social Distancing Policies for the COVID-19 Pandemic: A probabilistic model predictive control approach

Abstract: The effective control of the COVID-19 pandemic is one the most challenging issues of nowadays. The design of optimal control policies is perplexed from a variety of social, political, economical and epidemiological factors. Here, based on epidemiological data reported in recent studies for the Italian region of Lombardy, which experienced one of the largest and most devastating outbreaks in Europe during the first wave of the pandemic, we address a probabilistic model predictive control (PMPC) approach for the… Show more

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