Supply Chains (SCs) are subject to disruptive events that potentially hinder the operational performance. Disruption Management Process (DMP) relies on the analysis of integrated heterogeneous data sources such as production scheduling, order management and logistics to evaluate the impact of disruptions on the SC. Existing approaches are limited as they address DMP process steps and corresponding data sources in a rather isolated manner which hurdles the systematic handling of a disruption originating anywhere in the SC. Thus, we propose MARE a semantic disruption management and resilience evaluation framework for integration of data sources included in all DMP steps, i.e. Monitor/Model, Assess, Recover and Evaluate. MARE, leverages semantic technologies i.e. ontologies, knowledge graphs and SPARQL queries to model and reproduce SC behavior under disruptive scenarios. Also, MARE includes an evaluation framework to examine the restoration performance of a SC applying various recovery strategies. Semantic SC DMP, put forward by MARE, allows stakeholders to potentially identify the measures to enhance SC integration, increase the resilience of supply networks and ultimately facilitate digitalization.
翻译:干扰管理流程(DMP)依赖于对生产时间安排、订单管理和后勤等综合不同数据源的分析,以评价中断对SC的影响; 现有方法有限,因为它们以相当孤立的方式处理DMP流程步骤和相应数据源,妨碍系统处理源自SC任何地方的干扰; 因此,我们提议MARE建立一个语义中断管理和复原力评价框架,以整合DMP所有步骤中的数据源,即监测/模型、评估、恢复和评估MARE, 利用语义技术,即肿瘤、知识图和STARQL查询,在破坏性情景下模拟和复制SC行为; 并且,MARE包括一个评估框架,以审查SC采用各种恢复战略的恢复业绩。 MARE提出的Smanitic SC DMP使利益攸关方有可能确定加强SC整合、提高供应网络的复原力并最终促进数字化的措施。