论文标题
大流行期间的大学运营:灵活的决策分析工具包
University Operations During a Pandemic: A Flexible Decision Analysis Toolkit
论文作者
论文摘要
在大流行期间建模感染扩散并不是什么新鲜事物,模型使用过去的数据来调整模拟参数以进行预测。这些有助于了解大流行带来的医疗保健负担,并做出相应的反应。 However, the problem of how college/university campuses should function during a pandemic is new for the following reasons:(i) social contact in colleges are structured and can be engineered for chosen objectives, (ii) the last pandemic to cause such societal disruption was over 100 years ago, when higher education was not a critical part of society, (ii) not much was known about causes of pandemics, and hence effective ways of safe operations were not known, and (iii) today with distance学习,学术机构的远程运作是可能的。我们的方法在展示一个灵活的仿真系统时是独一无二的,其中包含一套模型库,每个主要组件一个。该系统集成了基于代理的建模(ABM)和随机网络方法,并对单个实体(例如学生,讲师,教室,住宅等)进行了建模。为了做出每个决定,该系统可用于预测各种选择的影响,从而使管理员能够做出明智的决定。尽管当前的方法适合感染建模,但它们在社交接触建模中缺乏准确性。我们的ABM方法与网络科学的想法相结合,提出了一种新颖的接触模型方法。提出了明尼苏达大学日出计划的详细案例研究。对于做出的每个决定,都评估了其影响,并用于获得信心的结果。我们认为,这种灵活的工具对于各种组织来说可能是一项宝贵的资产,以评估其大流行期运营中的感染风险,包括中学和高中,工厂,仓库以及中小型企业。
Modeling infection spread during pandemics is not new, with models using past data to tune simulation parameters for predictions. These help understand the healthcare burden posed by a pandemic and respond accordingly. However, the problem of how college/university campuses should function during a pandemic is new for the following reasons:(i) social contact in colleges are structured and can be engineered for chosen objectives, (ii) the last pandemic to cause such societal disruption was over 100 years ago, when higher education was not a critical part of society, (ii) not much was known about causes of pandemics, and hence effective ways of safe operations were not known, and (iii) today with distance learning, remote operation of an academic institution is possible. Our approach is unique in presenting a flexible simulation system, containing a suite of model libraries, one for each major component. The system integrates agent based modeling (ABM) and stochastic network approach, and models the interactions among individual entities, e.g., students, instructors, classrooms, residences, etc. in great detail. For each decision to be made, the system can be used to predict the impact of various choices, and thus enable the administrator to make informed decisions. While current approaches are good for infection modeling, they lack accuracy in social contact modeling. Our ABM approach, combined with ideas from Network Science, presents a novel approach to contact modeling. A detailed case study of the University of Minnesota's Sunrise Plan is presented. For each decisions made, its impact was assessed, and results used to get a measure of confidence. We believe this flexible tool can be a valuable asset for various kinds of organizations to assess their infection risks in pandemic-time operations, including middle and high schools, factories, warehouses, and small/medium sized businesses.