Multi-objective vendor managed inventory system with interval type-2 fuzzy demand and order quantities

Zubair Ashraf, Mohammad Shahid
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引用次数: 4

Abstract

PurposeThe proposed IT2FMOVMI model intends to concurrently minimize total cost and warehouse space for the single vendor-retailer, multi-item and a consolidated vendor store. Regarding demand and order quantities with the deterministic and type-1 fuzzy numbers, we have also formulated the classic/crisp MOVMI model and type-1 fuzzy MOVMI (T1FMOVMI) model. The suggested solution technique can solve both crisp MOVMI and T1FMOVMI problems. By finding the optimal ordered quantities and backorder levels, the Pareto-fronts are constructed to form the solution sets for the three models.Design/methodology/approachA multi-objective vendor managed inventory (MOVMI) is the most recognized marketing and delivery technique for the service provider and the retail in the supply chain in Industry 4.0. Due to the evolving market conditions, the characteristics of the individual product, the delivery period and the manufacturing costs, the demand rate and order quantity of the MOVMI device are highly unpredictable. In such a scenario, a MOVMI system with a deterministic demand rate and order quantity cannot be designed to estimate the highly unforeseen cost of the problem. This paper introduces a novel interval type-2 fuzzy multi-objective vendor managed inventory (IT2FMOVMI) system, which uses interval type-2 fuzzy numbers (IT2FNs) to represent demand rate and order quantities. As the model is an NP-hard, the well-known meta-heuristic algorithm named NSGA-II (Non-dominated sorted genetic algorithm-II) with EKM (Enhanced Karnink-Mendel) algorithm based solution method has been established.FindingsThe experimental simulations for the five test problems that demonstrated distinct conditions are considered from the real-datasets of SAPCO company. Experimental study concludes that T1FMOVMI and crisp MOVMI schemes are outclassed by IT2FMOVMI model, offering more accurate Pareto-Fronts and efficiency measurement values.Originality/valueUsing fuzzy sets theory, a significant amount of work has been already done in past decades from various points of views to model the MOVMI. However, this is the very first attempt to introduce type-2 fuzzy modelling for the problem to address the realistic implementation of the imprecise parameters.
区间2型模糊需求和订单数量的多目标供应商管理库存系统
提出的IT2FMOVMI模型旨在同时最小化单一供应商-零售商、多商品和合并供应商商店的总成本和仓库空间。对于确定性模糊数和1型模糊数的需求量和订货量,我们还建立了经典/脆化MOVMI模型和1型模糊MOVMI (T1FMOVMI)模型。所建议的解决技术既可以解决清晰的MOVMI问题,也可以解决T1FMOVMI问题。通过寻找最优订货量和缺货水平,构造pareto -front,形成三种模型的解集。设计/方法/方法多目标供应商管理库存(MOVMI)是工业4.0中服务提供商和供应链零售中最受认可的营销和交付技术。由于不断变化的市场条件、单个产品的特性、交货期和制造成本,MOVMI设备的需求率和订单量具有高度的不可预测性。在这种情况下,具有确定的需求率和订单数量的MOVMI系统不能设计为估计问题的高度不可预见的成本。本文提出了一种新的区间2型模糊多目标供应商库存管理系统,该系统使用区间2型模糊数(IT2FNs)来表示需求率和订货量。由于该模型是NP-hard,因此建立了基于EKM (Enhanced Karnink-Mendel)算法求解方法的著名元启发式算法NSGA-II (non - dominant sorted genetic algorithm- ii)。在SAPCO公司的实际数据集上,对五个测试问题进行了不同条件下的实验模拟。实验研究表明,IT2FMOVMI模型优于T1FMOVMI和crisp MOVMI方案,提供了更准确的pareto - front和效率测量值。原创性/价值利用模糊集理论,在过去的几十年里已经从不同的角度做了大量的工作来模拟MOVMI。然而,这是第一次尝试为该问题引入2型模糊建模,以解决不精确参数的实际实现。
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