Department of Computer Science and Engineering, Indian Institute of Technology at Madras, Chennai, Tamil Nadu, India.
Department of Computer Science, University of Houston, Houston, TX, United States of America.
PLoS One. 2022 Sep 15;17(9):e0272739. doi: 10.1371/journal.pone.0272739. eCollection 2022.
We study scheduling mechanisms that explore the trade-off between containing the spread of COVID-19 and performing in-person activity in organizations. Our mechanisms, referred to as group scheduling, are based on partitioning the population randomly into groups and scheduling each group on appropriate days with possible gaps (when no one is working and all are quarantined). Each group interacts with no other group and, importantly, any person who is symptomatic in a group is quarantined. We show that our mechanisms effectively trade-off in-person activity for more effective control of the COVID-19 virus spread. In particular, we show that a mechanism which partitions the population into two groups that alternatively work in-person for five days each, flatlines the number of COVID-19 cases quite effectively, while still maintaining in-person activity at 70% of pre-COVID-19 level. Other mechanisms that partitions into two groups with less continuous work days or more spacing or three groups achieve even more aggressive control of the virus at the cost of a somewhat lower in-person activity (about 50%). We demonstrate the efficacy of our mechanisms by theoretical analysis and extensive experimental simulations on various epidemiological models based on real-world data.
我们研究了调度机制,旨在探索在控制 COVID-19 传播和在组织中进行面对面活动之间的权衡。我们的机制称为分组调度,它基于将人群随机分为小组,并在适当的日期安排每个小组,可能会有间隔(当没有人工作且所有人都在隔离时)。每个小组与其他小组没有交互,重要的是,任何在小组中出现症状的人都将被隔离。我们表明,我们的机制有效地在面对面活动和更有效地控制 COVID-19 病毒传播之间进行了权衡。特别是,我们表明,一种将人群分为两组的机制,这两组人交替进行五天的面对面工作,非常有效地使 COVID-19 病例数量保持稳定,同时仍将面对面活动维持在 COVID-19 前水平的 70%。其他将人群分为两组且工作天数较少或间隔较大的机制或三组机制以牺牲较低的面对面活动(约 50%)为代价,实现了对病毒的更积极控制。我们通过基于真实世界数据的各种流行病学模型的理论分析和广泛的实验模拟证明了我们的机制的有效性。