Liu Kanglin, Liu Changchun, Xiang Xi, Tian Zhili
School of Traffic and Transportation, Beijing Jiaotong University, Beijing, 100044, China.
Institute of Operations Research & Analytics, National University of Singapore, 117602, Singapore.
Eur J Oper Res. 2023 Jan 1;304(1):150-168. doi: 10.1016/j.ejor.2021.11.028. Epub 2021 Nov 25.
The outbreak of coronavirus disease 2019 (COVID-19) has seriously affected the whole world, and epidemic research has attracted increasing amounts of scholarly attention. Critical facilities such as warehouses to store emergency supplies and testing or vaccination sites could help to control the spread of COVID-19. This paper focuses on how to locate the testing facilities to satisfy the varying demand, i.e., test kits, caused by pandemics. We propose a two-phase optimization framework to locate facilities and adjust capacity during large-scale emergencies. During the first phase, the initial prepositioning strategies are determined to meet predetermined fill-rate requirements using the sample average approximation formulation. We develop an online convex optimization-based Lagrangian relaxation approach to solve the problem. Specifically, to overcome the difficulty that all scenarios should be addressed simultaneously in each iteration, we adopt an online gradient descent algorithm, in which a near-optimal approximation for a given Lagrangian dual multiplier is constructed. During the second phase, the capacity to deal with varying demand is adjusted dynamically. To overcome the inaccuracy of long-term prediction, we design a dynamic allocation policy and adaptive dynamic allocation policy to adjust the policy to meet the varying demand with only one day's prediction. A comprehensive case study with the threat of COVID-19 is conducted. Numerical results have verified that the proposed two-phase framework is effective in meeting the varying demand caused by pandemics. Specifically, our adaptive policy can achieve a solution with only a 3.3% gap from the optimal solution with perfect information.
2019年冠状病毒病(COVID-19)的爆发严重影响了全球,疫情研究也吸引了越来越多的学术关注。诸如储存应急物资的仓库以及检测或接种点等关键设施有助于控制COVID-19的传播。本文聚焦于如何定位检测设施以满足由疫情引发的不同需求,即检测试剂盒的需求。我们提出了一个两阶段优化框架,用于在大规模紧急情况下定位设施并调整容量。在第一阶段,使用样本平均近似公式确定初始预置策略,以满足预定的填充率要求。我们开发了一种基于在线凸优化的拉格朗日松弛方法来解决该问题。具体而言,为了克服在每次迭代中需要同时处理所有场景的困难,我们采用在线梯度下降算法,其中针对给定的拉格朗日对偶乘数构建了一个近似最优解。在第二阶段,动态调整应对不同需求的容量。为了克服长期预测的不准确性,我们设计了动态分配策略和自适应动态分配策略,仅通过一天的预测来调整策略以满足不同需求。我们进行了一个针对COVID-19威胁的综合案例研究。数值结果验证了所提出的两阶段框架在满足疫情引发的不同需求方面是有效的。具体而言,我们的自适应策略能够实现一个与具有完美信息的最优解仅有3.3%差距的解决方案。