A digital twin contains up-to-date data-driven models of the physical world being studied and can use simulation to optimise the physical world. However, the analysis made by the digital twin is valid and reliable only when the model is equivalent to the physical world. Maintaining such an equivalent model is challenging, especially when the physical systems being modelled are intelligent and autonomous. The paper focuses in particular on digital twin models of intelligent systems where the systems are knowledge-aware but with limited capability. The digital twin improves the acting of the physical system at a meta-level by accumulating more knowledge in the simulated environment. The modelling of such an intelligent physical system requires replicating the knowledge-awareness capability in the virtual space. Novel equivalence maintaining techniques are needed, especially in synchronising the knowledge between the model and the physical system. This paper proposes the notion of knowledge equivalence and an equivalence maintaining approach by knowledge comparison and updates. A quantitative analysis of the proposed approach confirms that compared to state equivalence, knowledge equivalence maintenance can tolerate deviation thus reducing unnecessary updates and achieve more Pareto efficient solutions for the trade-off between update overhead and simulation reliability.
翻译:数字双胞胎包含正在研究的物理世界的最新数据驱动模型,可以模拟优化物理世界。但是,数字双胞胎所作的分析只有在该模型与物理世界等同时才有效且可靠。保持这样一个等同模型具有挑战性,特别是当正在模拟的物理系统是智能和自主的时。本文件特别侧重于智能系统的数字双胞胎模型,这些系统具有知识意识,但能力有限。数字双胞胎通过在模拟环境中积累更多的知识,在元层面改进物理系统的动作。这种智能物理系统的建模要求在虚拟空间复制知识意识能力。需要新等同维护技术,特别是在将模型和物理系统之间的知识同步化方面。本文件提出知识等同概念和通过知识比较和更新来保持等同方法。对拟议方法的定量分析证实,与国家等值相比,知识等值维护可以容忍偏差,从而减少不必要的更新,并为更新间接费用和模拟可靠性之间的交易找到更有效率的解决办法。