Supply Chain (SC) modeling is essential to understand and influence SC behavior, especially for increasingly globalized and complex SCs. Existing models address various SC notions, e.g., processes, tiers and production, in an isolated manner limiting enriched analysis granted by integrated information systems. Moreover, the scarcity of real-world data prevents the benchmarking of the overall SC performance in different circumstances, especially wrt. resilience during disruption. We present SENS, an ontology-based Knowlegde-Graph (KG) equipped with SPARQL implementations of KPIs to incorporate an end-to-end perspective of the SC including standardized SCOR processes and metrics. Further, we propose SENS-GEN, a highly configurable data generator that leverages SENS to create synthetic semantic SC data under multiple scenario configurations for comprehensive analysis and benchmarking applications. The evaluation shows that the significantly improved simulation and analysis capabilities, enabled by SENS, facilitate grasping, controlling and ultimately enhancing SC behavior and increasing resilience in disruptive scenarios.
翻译:现有模型以孤立的方式处理各种SC概念,例如流程、层级和生产,以限制综合信息系统提供的丰富分析;此外,现实世界数据稀缺,无法在不同情况下,特别是在中断期间,为整个SC的绩效制定基准,特别是在干扰期间的抗御能力;我们介绍了SENS,一个基于气候学的知识格(KG),配备了KPI的SPARQL实施,以纳入SC的端到端视角,包括标准化的SCOR流程和指标;我们建议SENS-GEN,这是一个高度可配置的数据生成器,利用SENS在多种情景组合下创建合成的短链氯化石蜡数据,用于综合分析和基准应用;评估表明,SENS所促成的模拟和分析能力大大改进,有助于掌握、控制和最终增强SC的行为,并提高破坏性情景中的复原力。