Rafigh Parisa, Akbari Ali Akbar, Bidhandi Hadi Mohammadi, Kashan Ali Husseinzadeh
Department of Industrial Engineering, South Tehran Branch, Islamic Azad University, Tehran, Iran.
Faculty of Industrial and Systems Engineering, Tarbiat Modares University, Tehran, Iran.
J Comb Optim. 2022;44(3):1387-1432. doi: 10.1007/s10878-022-00891-w. Epub 2022 Aug 27.
This study proposes a framework for the main parties of a sustainable supply chain network considering lot-sizing impact with quantity discounts under disruption risk among the first studies. The proposed problem differs from most studies considering supplier selection and order allocation in this area. First, regarding the concept of the triple bottom line, total cost, environmental emissions, and job opportunities are considered to cover the criteria of sustainability. Second, the application of this supply chain network is transformer production. Third, applying an economic order quantity model lets our model have a smart inventory plan to control the uncertainties. Most significantly, we present both centralized and decentralized optimization models to cope with the considered problem. The proposed centralized model focuses on pricing and inventory decisions of a supply chain network with a focus on supplier selection and order allocation parts. This model is formulated by a scenario-based stochastic mixed-integer non-linear programming approach. Our second model focuses on the competition of suppliers based on the price of products with regard to sustainability. In this regard, a Stackelberg game model is developed. Based on this comparison, we can see that the sum of the costs for both levels is lower than the cost without the bi-level approach. However, the computational time for the bi-level approach is more than for the centralized model. This means that the proposed optimization model can better solve our problem to achieve a better solution than the centralized optimization model. However, obtaining this better answer also requires more processing time. To address both optimization models, a hybrid bio-inspired metaheuristic as the hybrid of imperialist competitive algorithm (ICA) and particle swarm optimization (PSO) is utilized. The proposed algorithm is compared with its individuals. All employed optimizers have been tuned by the Taguchi method and validated by an exact solver in small sizes. Numerical results show that striking similarities are observed between the results of the algorithms, but the standard deviations of PSO and ICA-PSO show better behavior. Furthermore, while PSO consumes less time among the metaheuristics, the proposed hybrid metaheuristic named ICA-PSO shows more time computations in all small instances. Finally, the provided results confirm the efficiency and the performance of the proposed framework and the proposed hybrid metaheuristic algorithm.
本研究在首批研究中提出了一个可持续供应链网络主要参与方的框架,该框架考虑了中断风险下数量折扣对批量大小的影响。所提出的问题与该领域大多数考虑供应商选择和订单分配的研究不同。首先,基于三重底线的概念,考虑总成本、环境排放和就业机会以涵盖可持续性标准。其次,该供应链网络的应用领域是变压器生产。第三,应用经济订货量模型使我们的模型有一个智能库存计划来控制不确定性。最显著的是,我们提出了集中式和分散式优化模型来处理所考虑的问题。所提出的集中式模型侧重于供应链网络的定价和库存决策,重点在于供应商选择和订单分配部分。该模型通过基于情景的随机混合整数非线性规划方法来构建。我们的第二个模型侧重于供应商在产品价格方面基于可持续性的竞争。在这方面,开发了一个斯塔克尔伯格博弈模型。基于此比较,我们可以看到两个层级的成本总和低于未采用双层方法时的成本。然而,双层方法的计算时间比集中式模型更长。这意味着所提出的优化模型比集中式优化模型能更好地解决我们的问题以获得更好的解决方案。然而,获得这个更好的答案也需要更多的处理时间。为了解决这两个优化模型,采用了一种混合生物启发式元启发式算法,即帝国主义竞争算法(ICA)和粒子群优化(PSO)的混合。将所提出的算法与其个体进行了比较。所有使用的优化器都通过田口方法进行了调整,并在小规模情况下通过精确求解器进行了验证。数值结果表明,算法结果之间存在显著相似性,但PSO和ICA - PSO的标准差表现更好。此外,虽然PSO在元启发式算法中耗时较少,但所提出的名为ICA - PSO的混合元启发式算法在所有小实例中显示出更多的计算时间。最后,所提供的结果证实了所提出框架和所提出的混合元启发式算法的效率和性能。