A Risk-averse Inventory-based Supply Chain Protection Problem with Adapted Stochastic Measures under Intentional Facility Disruptions: Decomposition and Hybrid Algorithms

Q2 Engineering
M. Seifbarghy, S. T. A. Niaki, S. Jalali
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引用次数: 0

Abstract

Owing to rising intentional events, supply chain disruptions have been considered by setting up a game between two players, namely, a designer and an interdictor contesting on minimizing and maximizing total cost, respectively. The previous studies have found the equilibrium solution by taking transportation, penalty and restoration cost into account. To contribute further, we examine how incorporation of inventory cost influences the players’ strategies. Assuming risk-averse feature of the designer and fully optimizing property of the interdictor with limited budget, the conditional-value-at-risk is employed to be involved in total cost. Using special order sets of type two and duality role, the linearized tri-level problem is solved by column-and-constraint generation and benders decomposition algorithms in terms of small-sized instances. In terms of larger-sized instances, we also contribute to prior studies by hybridizing corresponding algorithms with bio-geography based optimization method. Another non-trivial extension of our work is to define adapted stochastic measures based on the proposed mean-risk tri-level formulation. Borrowing instances from prior papers, the computational results indicate the managerial insights on players’ decisions, the model’s efficiency and performance of the algorithms.
基于风险规避库存的供应链保护问题——基于自适应随机措施的分解和混合算法
由于有意事件的增加,我们通过在两个参与者之间建立一个游戏来考虑供应链中断,即设计师和拦截者分别竞争最小化和最大化总成本。以往的研究已经找到了考虑运输成本、罚金成本和修复成本的平衡解。为了进一步做出贡献,我们研究了纳入库存成本如何影响参与者的策略。假设设计者具有风险规避特征,在有限的预算条件下,拦截者具有完全优化的特性,采用条件风险值来表示总成本。利用二型特殊阶集和对偶作用,采用列约束生成和benders分解算法对小实例的线性化三层问题进行求解。对于更大的实例,我们还将相应的算法与基于生物地理的优化方法相结合,为前人的研究做出了贡献。我们工作的另一个重要扩展是根据提出的平均风险三水平公式定义自适应随机度量。借用之前论文的实例,计算结果表明管理层对玩家决策的见解,模型的效率和算法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Optimization in Industrial Engineering
Journal of Optimization in Industrial Engineering Engineering-Industrial and Manufacturing Engineering
CiteScore
2.90
自引率
0.00%
发文量
0
审稿时长
32 weeks
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