Wang Xin, Jiang Ruiwei, Qi Mingyao
Department of Industrial Engineering, Tsinghua University, Beijing 100084, China.
Logistics and Transportation Division, Shenzhen International Graduate School, Tsinghua University, Shenzhen 518055, China.
Omega. 2023 Sep;119:102872. doi: 10.1016/j.omega.2023.102872. Epub 2023 Mar 21.
Widespread vaccination is the only way to overcome the COVID-19 global crisis. However, given the vaccine scarcity during the early outbreak of the pandemic, ensuring efficient and equitable distribution of vaccines, particularly in rural areas, has become a significant challenge. To this end, this study develops a two-stage robust vaccine distribution model that addresses the supply uncertainty incurred by vaccine shortages. The model aims to optimize the social and economic benefits by jointly deciding vaccination facility location, transportation capacity, and reservation plan in the first stage, and rescheduling vaccinations in the second stage after the confirmation of uncertainty. To hedge vaccine storage and transportation difficulties in remote areas, we consider using drones to deliver vaccines in appropriate and small quantities to vaccination points. Two tailored column-and-constraint generation algorithms are proposed to exactly solve the robust model, in which the subproblems are solved via the vertex traversal and the dual methods, respectively. The superiority of the dual method is further verified. Finally, we use real-world data to demonstrate the necessity to account for uncertain supply and equitable distribution, and analyze the impacts of several key parameters. Some managerial insights are also produced for decision-makers.
广泛接种疫苗是克服新冠疫情全球危机的唯一途径。然而,鉴于疫情初期疫苗短缺,确保疫苗高效、公平分配,尤其是在农村地区,已成为一项重大挑战。为此,本研究建立了一个两阶段鲁棒疫苗分配模型,以应对疫苗短缺导致的供应不确定性。该模型旨在通过在第一阶段联合决定疫苗接种设施位置、运输能力和预约计划,以及在不确定性得到确认后的第二阶段重新安排疫苗接种,来优化社会和经济效益。为了应对偏远地区疫苗储存和运输困难,我们考虑使用无人机将适量的疫苗小批量运送到疫苗接种点。提出了两种定制的列生成算法和约束生成算法来精确求解鲁棒模型,其中子问题分别通过顶点遍历和对偶方法求解。进一步验证了对偶方法的优越性。最后,我们使用实际数据证明了考虑供应不确定性和公平分配的必要性,并分析了几个关键参数的影响。还为决策者提供了一些管理见解。