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GreyCat: A Framework to Develop Digital Twins at Large Scale

Published: 31 October 2024 Publication History

Abstract

Digital Twins (DTs) have become a pivotal technology for enhancing the understanding, monitoring, and ultimately autonomous piloting of systems across various domains, including large-scale critical infrastructures such as smart electricity networks. The development of DTs necessitates developing diverse services that utilize different models and a digital shadow, which encompasses both real-time and historical data from the physical counterpart. The extensive scale of large infrastructures presents significant challenges, including managing numerous parameters, heterogeneous data, and the complex computations required, particularly with the increased use of AI algorithms. Current technologies, built by stacking multiple databases and using general-purpose languages, are inadequate for efficiently implementing digital twin services that need runtime reactivity. This tool demonstration paper introduces GreyCat, a framework designed for the development of digital twins over large-scale digital shadows. GreyCat combines imperative object-oriented programming, database persistent indexes, and scalable memory management to facilitate the creation of comprehensive and efficient digital twins. We demonstrate the ease use of GreyCat through simple examples and showcase its effectiveness in constructing the national digital twin of Luxembourg's electricity grid, which is currently operational and managing billions of data points. Reflecting on the development of GreyCat over the past years, we discuss the main lessons learned and identify open questions for future digital twin development frameworks.

References

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Santiago Gil, Bentley Oakes, Claudio Gomes, Mirgita Frasheri, and Peter G. Larsen. 2024. Towards a Systematic Reporting Framework for Digital Twins: A Cooperative Robotics Case Study. SIMULATION (2024), 1--27.
[2]
Wentao Han, Youshan Miao, Kaiwei Li, Ming Wu, Fan Yang, Lidong Zhou, Vijayan Prabhakaran, Wenguang Chen, and Enhong Chen. 2014. Chronos: a graph engine for temporal graph analysis. In Proceedings of the Ninth European Conference on Computer Systems. 1--14.
[3]
Thomas Hartmann, Francois Fouquet, Assaad Moawad, Romain Rouvoy, and Yves Le Traon. 2019. GreyCat: Efficient what-if analytics for data in motion at scale. Information Systems 83 (2019), 101--117.
[4]
Thomas Hartmann, Francois Fouquet, Gregory Nain, Brice Morin, Jacques Klein, Olivier Barais, and Yves Le Traon. 2014. A Native Versioning Concept to Support Historized Models at Runtime. In Model-Driven Engineering Languages and Systems. Springer International Publishing, Cham, 252--268.
[5]
Thomas Hartmann, Assaad Moawad, Francois Fouquet, and Yves Le Traon. 2017. The Next Evolution of MDE: A Seamless Integration of Machine Learning into Domain Modeling. In 2017 ACM/IEEE 20th International Conference on Model Driven Engineering Languages and Systems (MODELS). 180--180.
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ISO23247-1:2021 2000. Automation systems and integration --- Digital twin framework for manufacturing. Standard. International Organization for Standardization.

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cover image ACM Conferences
MODELS Companion '24: Proceedings of the ACM/IEEE 27th International Conference on Model Driven Engineering Languages and Systems
September 2024
1261 pages
ISBN:9798400706226
DOI:10.1145/3652620
Permission to make digital or hard copies of all or part of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for third-party components of this work must be honored. For all other uses, contact the owner/author(s).

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Association for Computing Machinery

New York, NY, United States

Publication History

Published: 31 October 2024

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Author Tags

  1. digital twins
  2. digital shadow
  3. development framework

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  • Demonstration

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  • ANR

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MODELS Companion '24
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Overall Acceptance Rate 144 of 506 submissions, 28%

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