Engineering Reports (Nov 2023)

Bayesian model calibration and damage detection for a digital twin of a bridge demonstrator

  • Thomas Titscher,
  • Thomas vanDijk,
  • Daniel Kadoke,
  • Annika Robens‐Radermacher,
  • Ralf Herrmann,
  • Jörg F. Unger

DOI
https://doi.org/10.1002/eng2.12669
Journal volume & issue
Vol. 5, no. 11
pp. n/a – n/a

Abstract

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Abstract Using digital twins for decision making is a very promising concept which combines simulation models with corresponding experimental sensor data in order to support maintenance decisions or to investigate the reliability. The quality of the prognosis strongly depends on both the data quality and the quality of the digital twin. The latter comprises both the modeling assumptions as well as the correct parameters of these models. This article discusses the challenges when applying this concept to real measurement data for a demonstrator bridge in the lab, including the data management, the iterative development of the simulation model as well as the identification/updating procedure using Bayesian inference with a potentially large number of parameters. The investigated scenarios include both the iterative identification of the structural model parameters as well as scenarios related to a damage identification. In addition, the article aims at providing all models and data in a reproducible way such that other researcher can use this setup to validate their methodologies.

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