一种新的供应链管理风险评估灰色多目标二元线性规划模型

Amin Vafadarnikjoo , Md. Abdul Moktadir , Sanjoy Kumar Paul , Syed Mithun Ali
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引用次数: 3

摘要

鉴于未来几十年需求的增加将带来许多挑战和风险,稳健和有弹性的农业食品供应链管理(AFSCM)对农业企业至关重要。这一关键供应链网络的各种风险造成的中断,特别是在新兴经济体,可能会使数百万人的生命处于危险之中,更不用说对经济和环境造成毁灭性影响了。即便如此,AFSCM文献中的定量风险管理研究数量有限。在本研究中,开发了一个综合修正风险缓解矩阵(M-RMM),以分析在农业食品供应链背景下应对各种风险的缓解策略。将M-RMM与灰色多目标二元线性规划(GMOBLP)模型相结合,以获得与风险、成本和时间最小化三个目标函数相关的最优风险缓解策略。所提出的模型是制定可持续商业政策和减少食物浪费的有用工具,并获得特定环境(即发展中经济体)、特定部门(即农业食品加工部门)和多产品(即新鲜和不易腐烂)的方法。研究结果表明,IT系统的持续培训和开发以及漏洞分析是最有效的风险缓解策略,可以减轻技能人员缺乏、领导能力不达标、IT系统故障、生产优质产品能力不足以及客户关系不佳的影响。这些发现有助于从业者管理供应链中的风险。
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A novel grey multi-objective binary linear programming model for risk assessment in supply chain management

Robust and resilient agri-food supply chain management (AFSCM) is paramount to agribusinesses, given the many challenges and risks that this increased demand will bring in the coming decades. Interruptions caused by various risks to this crucial supply chain network, particularly in emerging economies, can put the lives of millions in danger, not to mention creating devastating impacts on the economy and the environment. Even so, there are only a limited number of quantitative risk management studies in the AFSCM literature. In this study, an integrated modified risk mitigation matrix (M-RMM) is developed to analyze the mitigation strategies for dealing with various risks in the context of the agri-food supply chain. The M-RMM is integrated with the grey multi-objective binary linear programming (GMOBLP) model to obtain the optimal risk mitigation strategies related to the three objective functions of risk, cost, and time minimization. The proposed model is a useful tool for formulating sustainable business policies and reducing food waste, and acquiring a context-specific (i.e., a developing economy), sector-specific (i.e., the agri-food processing sector), and multi-product (i.e., fresh and non-perishable) approach. The findings reveal that continuous training and development and vulnerability analysis of IT systems are the most effective risk mitigation strategies to lessen the impacts of lack of skilled personnel, sub-standard leadership, failure in IT systems, insufficient capacity to produce quality products, and poor customer relationships. The findings assist practitioners in managing risks in supply chains.

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