An integrated planning approach for perishable goods with stochastic lifespan: Production, inventory, and routing

IF 6.9 Q1 OPERATIONS RESEARCH & MANAGEMENT SCIENCE
Mansoure Komijani, Mohsen Sheikh Sajadieh
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引用次数: 0

Abstract

This paper focuses on addressing the crucial challenges posed by the uncertainty surrounding perishable goods within the supply chain. With staggering socioeconomic costs and significant environmental implications, effective management of perishable goods emerges as a critical imperative. Globally, the annual loss of approximately 14% of food, amounting to a staggering USD 1 trillion, highlights the urgency of the issue. However, Prevailing classification methods for perishable products oversimplify their complexity by dividing them into fixed or variable lifespans, neglecting the random lifespans endured due to fluctuating storage conditions, blurring traditional boundaries between fixed and variable classifications. In response to these pressing challenges, the research proposes a novel approach: the development of a nonlinear mixed-integer programming model for a green closed-loop supply chain. This innovative model seamlessly integrates production, inventory, and routing decisions for both main and secondary products of a manufacturer. Moreover, it optimizes order splitting and transportation modes to efficiently convert perished items into raw materials under conditions of uncertainty. Central to the approach is the adoption of a scenario-based methodology to model uncertainties, particularly focusing on the variability in the lifespan of perishable products. This approach allows for a more nuanced understanding of the complex dynamics inherent in managing perishable goods within the supply chain. To solve the proposed model, a novel hybrid algorithm is introduced: the Particle Swarm Optimization (PSO) and Simulated Annealing (SA) algorithm, or PSOSA, ensuring robust optimization under uncertainty and enhancing decision-making within the perishable goods supply chain. The research findings underscore the inadequacy of prevailing assumptions regarding the fixed lifespan of perishable products, commonly observed in the literature. By accounting for uncertainty in perishable goods’ lifespan, a more accurate representation of total producer costs is achieved, highlighting the misleading reduction of 25% observed when neglecting such uncertainty.

随机寿命易腐货物的综合规划方法:生产、库存和路线规划
本文重点探讨如何应对供应链中易腐货物的不确定性所带来的关键挑战。易腐物品的社会经济成本惊人,对环境也有重大影响,因此有效管理易腐物品势在必行。在全球范围内,每年约有 14% 的粮食损失,损失金额高达 1 万亿美元,这凸显了问题的紧迫性。然而,目前流行的易腐产品分类方法将易腐产品分为固定或可变寿命,从而过度简化了易腐产品的复杂性,忽略了因储存条件波动而导致的随机寿命,模糊了固定和可变分类之间的传统界限。为应对这些紧迫挑战,研究提出了一种新方法:为绿色闭环供应链开发非线性混合整数编程模型。这一创新模型无缝整合了生产商主要产品和次要产品的生产、库存和路由决策。此外,它还优化了订单分割和运输模式,以便在不确定条件下有效地将损耗物品转化为原材料。该方法的核心是采用基于情景的方法来模拟不确定性,尤其侧重于易腐产品寿命的可变性。通过这种方法,可以更细致地了解供应链中易腐物品管理所固有的复杂动态。为了解决所提出的模型,引入了一种新颖的混合算法:粒子群优化(PSO)和模拟退火(SA)算法,或称 PSOSA,以确保在不确定情况下进行稳健优化,并加强易腐商品供应链中的决策制定。研究成果强调了文献中常见的易腐产品固定寿命假设的不足之处。通过考虑易腐产品生命周期的不确定性,可以更准确地反映生产商的总成本,同时强调了忽略这种不确定性会误导生产商将成本降低 25%。
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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CiteScore
8.60
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