Collaborative Bullwhip Effect-Oriented Bi-Objective Optimization for Inference-Based Weighted Moving Average Forecasting in Decentralized Supply Chain

Youssef Tliche, A. Taghipour, Jomana Mahfod-Leroux, Mohammadali Vosooghidizaji
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引用次数: 3

Abstract

Downstream demand inference (DDI) emerged in the supply chain theory, allowing an upstream actor to infer the demand occurring at his formal downstream actor without need of information sharing. Literature showed that simultaneously minimizing the average inventory level and the bullwhip effect isn't possible. In this paper, the authors show that demand inference is not only possible between direct supply chain links, but also at any downstream level. The authors propose a bi-objective approach to reduce both performance indicators by adopting the genetic algorithm. Simulation results show that bullwhip effect can be reduced highly if specific configurations are selected from the Pareto frontier. Numerical results show that demand's time-series structure, lead-times, holding and shortage costs, don't affect the behaviour of the bullwhip effect indicator. Moreover, the sensitivity analysis show that the optimization approach is robust when faced to varied initializations. Finally, the authors conclude the paper with managerial implications in multi-level supply chains.
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基于协同牛鞭效应的分散供应链加权移动平均预测双目标优化
下游需求推理(DDI)出现在供应链理论中,它允许上游行为者在不需要信息共享的情况下推断其正式下游行为者发生的需求。文献表明,同时最小化平均库存水平和牛鞭效应是不可能的。在本文中,作者表明需求推理不仅在直接供应链环节之间是可能的,而且在任何下游层面都是可能的。作者提出了一种采用遗传算法的双目标方法来降低这两个性能指标。仿真结果表明,在Pareto边界上选择特定的配置可以有效地减小牛鞭效应。数值结果表明,需求的时间序列结构、交货期、持有成本和短缺成本对牛鞭效应指标的行为没有影响。灵敏度分析表明,该优化方法在不同初始化条件下具有较强的鲁棒性。最后,作者总结了多层次供应链的管理启示。
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来源期刊
CiteScore
1.90
自引率
43.80%
发文量
59
期刊介绍: The International Journal of Information Systems and Supply Chain Management (IJISSCM) provides a practical and comprehensive forum for exchanging novel research ideas or down-to-earth practices which bridge the latest information technology and supply chain management. IJISSCM encourages submissions on how various information systems improve supply chain management, as well as how the advancement of supply chain management tools affects the information systems growth. The aim of this journal is to bring together the expertise of people who have worked with supply chain management across the world for people in the field of information systems.
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