Davoodi Mansoor, Batista Ana, Senapati Abhishek, Calabrese Justin M
Center for Advanced Systems Understanding (CASUS), Helmholtz-Zentrum Dresden Rossendorf (HZDR), 01328 Görlitz, Germany.
Department of Ecological Modelling, Helmholtz Centre for Environmental Research (UFZ), 04318 Leipzig, Germany.
Healthcare (Basel). 2023 Jul 3;11(13):1917. doi: 10.3390/healthcare11131917.
Effective personnel scheduling is crucial for organizations to match workload demands. However, staff scheduling is sometimes affected by unexpected events, such as the COVID-19 pandemic, that disrupt regular operations. Limiting the number of on-site staff in the workplace together with regular testing is an effective strategy to minimize the spread of infectious diseases like COVID-19 because they spread mostly through close contact with people. Therefore, choosing the best scheduling and testing plan that satisfies the goals of the organization and prevents the virus's spread is essential during disease outbreaks. In this paper, we formulate these challenges in the framework of two Mixed Integer Non-linear Programming (MINLP) models. The first model aims to derive optimal staff occupancy and testing strategies to minimize the risk of infection among employees, while the second is aimed only at optimal staff occupancy under a random testing strategy. To solve the problems expressed in the models, we propose a canonical genetic algorithm as well as two commercial solvers. Using both real and synthetic contact networks of employees, our results show that following the recommended occupancy and testing strategy reduces the risk of infection 25-60% under different scenarios. The minimum risk of infection can be achieved when the employees follow a planned testing strategy. Further, vaccination status and interaction rate of employees are important factors in developing scheduling strategies that minimize the risk of infection.
有效的人员排班对于组织满足工作量需求至关重要。然而,员工排班有时会受到意外事件的影响,例如新冠疫情,这些事件会扰乱正常运营。限制工作场所现场工作人员数量并定期进行检测是将新冠病毒等传染病传播风险降至最低的有效策略,因为这些疾病大多通过与他人密切接触传播。因此,在疾病爆发期间,选择能满足组织目标并防止病毒传播的最佳排班和检测计划至关重要。在本文中,我们在两个混合整数非线性规划(MINLP)模型的框架内阐述了这些挑战。第一个模型旨在推导最优的员工占用率和检测策略,以将员工感染风险降至最低,而第二个模型仅针对随机检测策略下的最优员工占用率。为了解决模型中表达的问题,我们提出了一种规范遗传算法以及两个商业求解器。使用真实和合成的员工接触网络,我们的结果表明,在不同场景下,遵循推荐的占用率和检测策略可将感染风险降低25%至60%。当员工遵循计划检测策略时,可实现最低感染风险。此外,员工的疫苗接种状况和互动率是制定将感染风险降至最低的排班策略的重要因素。