Knowledge Equivalence in Digital Twins of Intelligent Systems

Author:

Zhang Nan1ORCID,Bahsoon Rami2ORCID,Tziritas Nikos3ORCID,Theodoropoulos Georgios4ORCID

Affiliation:

1. Department of Computer Science and Engineering, Southern University of Science and Technology (SUSTech), China and School of Computer Science, University of Birmingham, UK

2. School of Computer Science, University of Birmingham, UK

3. Department of Computer Science and Telecommunications, University of Thessaly, Greece

4. Department of Computer Science and Engineering and Research Institute for Trustworthy Autonomous Systems, Southern University of Science and Technology (SUSTech), China

Abstract

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 article 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 article 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 tradeoff between update overhead and simulation reliability.

Funder

Shenzhen Science and Technology Program, China

SUSTech-University of Birmingham Collaborative PhD Programme

Guangdong Province Innovative and Entrepreneurial Team Programme, China

SUSTech Research Institute for Trustworthy Autonomous Systems, China

EPSRC/EverythingConnected Network project on Novel Cognitive Digital Twins for Compliance, UK

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Science Applications,Modeling and Simulation

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3. ARUP. 2019. Digital Twin: Towards a Meaningful Framework. Technical Report. ARUP. Retrieved from www.arup.com/digitaltwinreport

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5. A. Biere, A. Cimatti, E.M. Clarke, M. Fujita, and Y. Zhu. 1999. Symbolic model checking using SAT procedures instead of BDDs. In Proceedings of the 1999 Design Automation Conference (Cat. No. 99CH36361). ACM, New York, NY, 317–320.

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