Jahani Hamed, Chaleshtori Amir Eshaghi, Khaksar Seyed Mohammad Sadegh, Aghaie Abdollah, Sheu Jiuh-Biing
School of Accounting, Information Systems and Supply Chain, RMIT University, Melbourne, Australia.
K.N. Toosi University of Technology, Tehran, Iran.
Transp Res E Logist Transp Rev. 2022 Jul;163:102749. doi: 10.1016/j.tre.2022.102749. Epub 2022 May 30.
Crisis-induced vaccine supply chain management has recently drawn attention to the importance of immediate responses to a crisis (e.g., the COVID-19 pandemic). This study develops a queuing model for a crisis-induced vaccine supply chain to ensure efficient coordination and distribution of different COVID-19 vaccine types to people with various levels of vulnerability. We define a utility function for queues to study the changes in arrival rates related to the inventory level of vaccines, the efficiency of vaccines, and a risk aversion coefficient for vaccinees. A multi-period queuing model considering congestion in the vaccination process is proposed to minimise two contradictory objectives: (i) the expected average wait time of vaccinees and (ii) the total investment in the holding and ordering of vaccines. To develop the bi-objective non-linear programming model, the goal attainment algorithm and the non-dominated sorting genetic algorithm (NSGA-II) are employed for small- to large-scale problems. Several solution repairs are also implemented in the classic NSGA-II algorithm to improve its efficiency. Four standard performance metrics are used to investigate the algorithm. The non-parametric Friedman and Wilcoxon signed-rank tests are applied on several numerical examples to ensure the privilege of the improved algorithm. The NSGA-II algorithm surveys an authentic case study in Australia, and several scenarios are created to provide insights for an efficient vaccination program.
危机引发的疫苗供应链管理最近使人们关注到对危机(如新冠疫情)做出即时响应的重要性。本研究为危机引发的疫苗供应链开发了一种排队模型,以确保将不同类型的新冠疫苗高效协调并分配给不同脆弱程度的人群。我们定义了队列的效用函数,以研究与疫苗库存水平、疫苗效率以及接种者风险厌恶系数相关的到达率变化。提出了一种考虑接种过程拥堵的多周期排队模型,以最小化两个相互矛盾的目标:(i)接种者的预期平均等待时间,以及(ii)疫苗持有和订购的总投资。为了建立双目标非线性规划模型,针对小规模到大规模问题采用了目标达成算法和非支配排序遗传算法(NSGA-II)。在经典的NSGA-II算法中还实施了几种解决方案修复措施以提高其效率。使用四个标准性能指标来研究该算法。对几个数值示例应用了非参数弗里德曼检验和威尔科克森符号秩检验,以确保改进算法的优越性。NSGA-II算法考察了澳大利亚的一个真实案例研究,并创建了几种情景以提供对高效疫苗接种计划的见解。