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Risk quantification in cold chain management: a federated learning-enabled multi-criteria decision-making methodology

机译:冷链管理中的风险量化:支持联合学习的多标准决策方法

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Purpose In the cold supply chain (SC), effective risk management is regarded as an essential component to address the risky and uncertain SC environment in handling time- and temperature-sensitive products. However, existing multi-criteria decision-making (MCDM) approaches greatly rely on expert opinions for pairwise comparisons. Despite the fact that machine learning models can be customised to conduct pairwise comparisons, it is difficult for small and medium enterprises (SMEs) to intelligently measure the ratings between risk criteria without sufficiently large datasets. Therefore, this paper aims at developing an enterprise-wide solution to identify and assess cold chain risks. Design/methodology/approach A novel federated learning (FL)-enabled multi-criteria risk evaluation system (FMRES) is proposed, which integrates FL and the best-worst method (BWM) to measure firm-level cold chain risks under the suggested risk hierarchical structure. The factors of technologies and equipment, operations, external environment, and personnel and organisation are considered. Furthermore, a case analysis of an e-grocery SC in Australia is conducted to examine the feasibility of the proposed approach. Findings Throughout this study, it is found that embedding the FL mechanism into the MCDM process is effective in acquiring knowledge of pairwise comparisons from experts. A trusted federation in a cold chain network is therefore formulated to identify and assess cold SC risks in a systematic manner. Originality/value A novel hybridisation between horizontal FL and MCDM process is explored, which enhances the autonomy of the MCDM approaches to evaluate cold chain risks under the structured hierarchy.
机译:目的在冷供应链(SC)中,有效的风险管理被认为是解决机械处理时间和温度敏感产品的风险和不确定的SC环境的重要组成部分。然而,现有的多标准决策(MCDM)致力于对成对比较的专家意见。尽管机器学习模型可以定制以进行成对比较,但很难对中小企业(中小企业)智能地测量风险标准之间的评级而没有足够大的数据集。因此,本文旨在开发企业范围的解决方案来识别和评估冷链风险。设计/方法/方法提出了一种新型联合学习(FL)的多标准风险评估系统(FMRES),该评估系统(FMRES)集成了FL和最佳方法(BWM)来根据建议的风险测量公司水平的冷链风险层次结构。考虑了技术和设备,运营,外部环境和人员和组织的因素。此外,进行了澳大利亚电子杂货SC的案例分析,以检查所提出的方法的可行性。在本研究中发现,发现将流入MCDM过程嵌入到MCDM过程中是有效获取从专家比较的认识。因此,调用冷链网络中的可信联盟以以系统的方式识别和评估冷SC风险。探讨了Plantal FL和MCDM过程之间的新型杂交,这提高了MCDM方法的自主权,以评估结构化层次结构的冷链风险。

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