Due to the COVID-19 pandemic, the global supply chain is disrupted at an unprecedented scale under uncertain and unknown trends of labor shortage, high material prices, and changing travel or trade regulations. To stay competitive, enterprises desire agile and dynamic response strategies to quickly react to disruptions and recover supply-chain functions. Although both centralized and multi-agent approaches have been studied, their implementation requires prior knowledge of disruptions and agent-rule-based reasoning. In this paper, we introduce a model-based multi-agent framework that enables agent coordination and dynamic agent decision-making to respond to supply chain disruptions in an agile and effective manner. Through a small-scale simulated case study, we showcase the feasibility of the proposed approach under several disruption scenarios that affect a supply chain network differently, and analyze performance trade-offs between the proposed distributed and centralized methods.
翻译:由于COVID-19大流行,全球供应链在劳动力短缺、材料价格高以及旅行或贸易条例变化等不确定和未知趋势下,以前所未有的规模被打乱。为了保持竞争力,企业希望采取灵活和动态的应对战略,对中断迅速作出反应,恢复供应链功能。虽然已经研究了集中和多试剂两种方法,但其实施需要事先了解中断情况和基于代理规则的推理。在本文件中,我们引入了一个基于模式的多试剂框架,使代理协调和动态代理决策能够以灵活和有效的方式应对供应链的中断。我们通过小规模模拟案例研究,展示了在对供应链网络产生不同影响的几种干扰情景下拟议方法的可行性,并分析了分布式和集中式方法之间的绩效权衡。