Köhler Johannes, Schwenkel Lukas, Koch Anne, Berberich Julian, Pauli Patricia, Allgöwer Frank
Institute for Systems Theory and Automatic Control, University of Stuttgart, Germany.
Annu Rev Control. 2021;51:525-539. doi: 10.1016/j.arcontrol.2020.11.002. Epub 2020 Dec 23.
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.
我们以德国为例,研究通过社交距离措施对新冠疫情进行稳健且最优控制的自适应策略。我们的目标是在两年时间内将死亡人数降至最低,同时不引发过高的社会成本。我们考虑了一个针对德国新冠疫情爆发情况的定制模型,该模型具有不同的参数集,以设计和验证我们的方法。我们的分析表明,在精确模型知识的假设下,与更简单的策略相比,开环最优控制策略可以显著减少死亡人数。在数据不确定且存在模型不匹配的更现实场景中,一种使用模型预测控制(MPC)每周更新策略的反馈策略,即使应用于参数不同的验证模型,也能带来可靠的性能。除此之外,我们提出了一种基于区间算术的鲁棒MPC反馈策略,该策略谨慎且安全地调整社交距离措施,因此即使测量不准确且社交距离无法精确确定感染率,也能使死亡人数降至最低。我们的理论研究结果支持了最近的多项研究,表明:(1)需要采用自适应反馈策略来可靠地控制新冠疫情爆发;(2)精心设计的策略与更简单的策略相比,可以显著减少死亡人数,同时保持社交距离措施的程度不变;(3)从长远来看,尽早实施更强的社交距离措施比过早放开并在稍后恢复更严格的措施更有效且成本更低。