Digital Twin Driven Assembly Line Re-Balancing and Decision Support

Autor/innen

  • Giovanni Lugaresi Department of Mechanical Engineering, KU Leuven
  • Kovacs Laszlo 2Department of Automation and Applied Informatics, Budapest University of Technology and Economics
  • Kornel Tamas 3Department of Machine and Industrial Product Design, Budapest University of Technology and Economics

DOI:

https://doi.org/10.26034/lu.akwi.2024.6233

Schlagworte:

Digital twins, assembly lines, production control, Industry 5.0, work assignment, re-balancing

Abstract

Recent investments in industrial digitization together with the concrete need for short-term planning capabilities mean digital twins can effectively aid enterprises in the management of their production systems and value chains. This paper introduces a conceptual framework for assembly line re-balancing in the context of Industry 5.0, focusing on manual assembly processes. The framework aims to leverage a digital twin for obtaining a synchronized representation of the current task allocations in the assembly line, and uses data-driven scenario generation methods for investigating alternative balancing solutions that are proposed to operators in real time. A proof-of-concept platform is implemented in a laboratory environment, utilizing an assembly line with industrial components. Preliminary results demonstrate the compatibility of the proposed components within the digital twin framework. The potential applicability to various manual assembly scenarios is discussed, along with considerations for incorporating additional constraints in the evaluation process.

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2025-01-09

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