Goodarzian Fariba, Navaei Ali, Ehsani Behdad, Ghasemi Peiman, Muñuzuri Jesús
Machine Intelligence Research Labs (MIR Labs), Scientific Network for Innovation and Research Excellence, 11, 3rd Street NW, P.O. Box 2259, Auburn, WA 98071 USA.
Organization Engineering Group, School of Engineering, University of Seville, Camino de los Descubrimientos s/n, 41092 Seville, Spain.
Ann Oper Res. 2022 May 5:1-45. doi: 10.1007/s10479-022-04713-4.
In this paper, a new responsive-green-cold vaccine supply chain network during the COVID-19 pandemic is developed for the first time. According to the proposed network, a new multi-objective, multi-period, multi-echelon mathematical model for the distribution-allocation-location problem is designed. Another important novelty in this paper is that it considers an Internet-of-Things application in the COVID-19 condition in the suggested model to enhance the accuracy, speed, and justice of vaccine injection with existing priorities. Waste management, environmental effects, coverage demand, and delivery time of COVID-19 vaccine simultaneously are therefore considered for the first time. The LP-metric method and meta-heuristic algorithms called Gray Wolf Optimization (GWO), and Variable Neighborhood Search (VNS) algorithms are then used to solve the developed model. The other significant contribution, based on two presented meta-heuristic algorithms, is a new heuristic method called modified GWO (MGWO), and is developed for the first time to solve the model. Therefore, a set of test problems in different sizes is provided. Hence, to evaluate the proposed algorithms, assessment metrics including (1) percentage of domination, (2) the number of Pareto solutions, (3) data envelopment analysis, and (4) diversification metrics and the performance of the convergence are considered. Moreover, the Taguchi method is used to tune the algorithm's parameters. Accordingly, to illustrate the efficiency of the model developed, a real case study in Iran is suggested. Finally, the results of this research show MGO offers higher quality and better performance than other proposed algorithms based on assessment metrics, computational time, and convergence.
本文首次构建了新冠疫情期间新型的响应式绿色冷链疫苗供应链网络。基于该网络,设计了一个新的多目标、多周期、多梯队的配送-分配-选址问题数学模型。本文的另一个重要创新点在于,在建议模型中考虑了新冠疫情条件下的物联网应用,以提高现有优先级下疫苗接种的准确性、速度和公平性。因此,首次同时考虑了新冠疫苗的废物管理、环境影响、覆盖需求和交付时间。然后使用LP度量方法以及称为灰狼优化(GWO)和可变邻域搜索(VNS)算法的元启发式算法来求解所构建的模型。基于所提出的两种元启发式算法,另一个重要贡献是一种称为改进灰狼优化(MGWO)的新启发式方法,该方法也是首次开发用于求解该模型。因此,提供了一组不同规模的测试问题。为了评估所提出的算法,考虑了评估指标,包括(1)支配百分比,(2)帕累托解的数量,(3)数据包络分析,以及(4)多样化指标和收敛性能。此外,使用田口方法来调整算法参数。相应地,为了说明所构建模型的有效性,给出了伊朗的一个实际案例研究。最后,本研究结果表明,基于评估指标、计算时间和收敛性,改进灰狼优化算法比其他所提出的算法具有更高的质量和更好的性能。