The seamless integration of physical and digital environments in Cyber-Physical Systems(CPS), particularly within Industry 4.0, presents significant challenges stemming from system heterogeneity and complexity. Traditional approaches often rely on rigid, data-centric solutions like co-simulation frameworks or brittle point-to-point middleware bridges, which lack the semantic richness and flexibility required for intelligent, autonomous coordination. This report introduces the Knowledge Graph-Enhanced Multi-Agent Infrastructure(KG-MAS), as resolution in addressing such limitations. KG-MAS leverages a centralized Knowledge Graph (KG) as a dynamic, shared world model, providing a common semantic foundation for a Multi-Agent System(MAS). Autonomous agents, representing both physical and digital components, query this KG for decision-making and update it with real-time state information. The infrastructure features a model-driven architecture which facilitates the automatic generation of agents from semantic descriptions, thereby simplifying system extension and maintenance. By abstracting away underlying communication protocols and providing a unified, intelligent coordination mechanism, KG-MAS offers a robust, scalable, and flexible solution for coupling heterogeneous physical and digital robotic environments.
翻译:在信息物理系统(CPS),尤其是工业4.0背景下,物理环境与数字环境的无缝集成面临着由系统异构性与复杂性带来的重大挑战。传统方法通常依赖于僵化的、以数据为中心的解决方案,如联合仿真框架或脆弱的点对点中间件桥接,这些方案缺乏智能自主协调所需的语义丰富性与灵活性。本报告介绍了知识图谱增强多智能体基础设施(KG-MAS),作为应对此类局限性的解决方案。KG-MAS利用集中式知识图谱(KG)作为动态共享的世界模型,为多智能体系统(MAS)提供通用的语义基础。代表物理与数字组件的自主智能体通过查询该知识图谱进行决策,并用实时状态信息对其进行更新。该基础设施采用模型驱动架构,能够基于语义描述自动生成智能体,从而简化系统扩展与维护。通过抽象底层通信协议并提供统一的智能协调机制,KG-MAS为耦合异构的物理与数字机器人环境提供了一个鲁棒、可扩展且灵活的解决方案。