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On the Challenges of Integrating Digital Twins

  • Benoit Combemale*
  • , Jörg Kienzle*
  • , Gunter Mussbacher*
  • , Dominique Archambault*
  • , Jean-Michel Bruel*
  • , Lola Burgueño*
  • , Betty Cheng*
  • , Loek Cleophas*
  • , Gregor Engels*
  • , Damien Foures*
  • , Stefan Klikovits
  • , Vinay Kulkarni
  • , Judith Michael*
  • , Sebastian Mosser*
  • , Houari Sahraoui*
  • , Eugene Syriani*
  • , Andreas Wortmann*
  • *Korrespondierende/r Autor/-in für diese Arbeit

Publikation: Beitrag in Buch/Bericht/KonferenzbandKonferenzbeitragBegutachtung

Abstract

In the past two decades, a range of model versioning workflows have been proposed. Standard workflows are based on three-way model merging, which allows reasoning on potentially conflicting changes in concurrently developed model versions. However, the considered conflicts that can be detected are mostly targeting the syntactic level of models, such as update/update or delete/usage conflicts. In contrast, unintended semantic inconsistencies often remain unnoticed as detection mechanisms lack the semantic awareness of the modeling language or modeled domain. The resolution of such conflicts remains a manual task.
In this paper, we explore how Large Language Models (LLMs) can augment model versioning workflows by supporting conflict detection and resolution. In particular, we present an LLM-enhanced solution for detecting conflicts in the three-way model merging setting. Drawing on a collection of conflict types from prior literature, we demonstrate how an LLM assistant can 1) pinpoint conflicting changes and 2) provide resolution options with clear rationales and explanations of their implications. Our results indicate that the LLMs’ access to a broad range of domains and modeling languages can help find and resolve complex versioning conflicts. Our implementation combines the industrial tool LemonTree for analyzing models and model changes, with a GPT-4o (LLM) assistant primed with relevant context to detect and resolve conflicts. We conclude by discussing directions for future research to improve model versioning workflows using LLMs.
OriginalspracheEnglisch
TitelEDTconf 2025 - 2nd International Conference on Engineering Digital Twins, Oct 2025, Grand Rapids, Michigan, United States
Seitenumfang8
Auflage1
PublikationsstatusVeröffentlicht - Okt. 2025

Wissenschaftszweige

  • 102020 Medizinische Informatik
  • 102022 Softwareentwicklung
  • 102006 Computer Supported Cooperative Work (CSCW)
  • 102027 Web Engineering
  • 502050 Wirtschaftsinformatik
  • 102040 Quantencomputing
  • 102016 IT-Sicherheit
  • 503015 Fachdidaktik Technische Wissenschaften
  • 509026 Digitalisierungsforschung
  • 102015 Informationssysteme
  • 102034 Cyber-Physical Systems
  • 502032 Qualitätsmanagement
  • 211928 Systems Engineering

JKU-Schwerpunkte

  • Digital Transformation

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