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Digital twins for asset management: case study of snow galleries in Northern Sweden

Abstract

The use of digital twin (DT) technology within the engineering and construction (E&C) industry is valuable for practical applications in asset management of structures. Functional DT in E&C, however, are still in initial stages of development. Efforts toward standardisation of concepts and procedures are necessary to build on existing knowledge and drive progress further on functional DT. This paper proposes a DT of a snow gallery, part of the Iron Ore railway in northern Sweden. The gallery was instrumented with a structural health monitoring (SHM) system that feeds data in real time to the DT, which also includes a 3D model of the gallery. The proposed methodology can be replicated to different structures and scaled for larger amounts of data. The SHM data and the 3D digital model of the snow gallery are connected in a single, integrated platform that enables improved decision-making for maintenance of the gallery. To promote clarity and progress within the field, the proposed DT’s maturity level is classified in terms of autonomy, intelligence, learning and fidelity. The snow galleries, the SHM system, and the proposed DT are all presented and discussed, following a brief review on DT, the importance of level classification and predictive maintenance.
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Category

Academic article

Language

English

Author(s)

  • Vanessa Saback
  • Jens Eliasson
  • Cosmin Daescu
  • Jaime Gonzalez-Librerosa
  • Cosmin Popescu
  • Thomas Blanksvärd
  • Gabriel Sas

Affiliation

  • SINTEF Narvik
  • Luleå University of Technology
  • Polytehnic University of Timisoara

Date

08.04.2025

Year

2025

Published in

Structure and Infrastructure Engineering

ISSN

1573-2479

View this publication at Norwegian Research Information Repository