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 modelling and the systematic study of what if scenarios of the social distancing in a retrospective analysis for the first wave of the pandemic in Lombardy. The performance of the proposed PMPC scheme was assessed based on simulations of a compartmental model that was developed to quantify the uncertainty in the level of the asymptomatic cases in the population, and the synergistic effect of social distancing in various activities, and public awareness campaign prompting people to adopt cautious behaviors to reduce the risk of disease transmission. The PMPC scheme takes into account the social mixing effect, i.e. the effect of the various activities in the potential transmission of the disease. The proposed approach demonstrates the utility of a PMPC approach in addressing COVID-19 transmission and implementing public relaxation policies.
翻译:对COVID-19大流行的有效控制是当今最具有挑战性的问题之一。最佳控制政策的设计与各种社会、政治、经济和流行病学因素混淆不解。这里,根据最近在意大利伦巴迪地区研究中报告的流行病学数据,我们处理的是一种概率模型预测控制方法,用于模拟和系统研究在对隆巴迪第一波大流行进行回顾性分析时社会分化的情景。 拟议的PMPPC计划的执行情况是根据模拟一个区间模型进行的评估,该模型是用来量化人口中无症状病例的不确定性,以及各种活动中社会分化的协同效应。公众认识运动促使人们采取谨慎的行为来减少疾病传播的风险。PPC计划考虑到了社会混合效应,即各种可能传播疾病的活动的影响。拟议的方法表明,实行PMPPC方针在解决COVI的传播和公共政策方面非常有用。