Model Updating Strategy of the DLR-AIRMOD Test Structure

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Patelli, E.; Broggi, M.; Govers, Y.; Mottershead, J.E.: Model Updating Strategy of the DLR-AIRMOD Test Structure. In: Procedia Engineering 199 (2017), S. 978-983. DOI: https://doi.org/10.1016/j.proeng.2017.09.221

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To cite the version in the repository, please use this identifier: https://doi.org/10.15488/2106

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Sum total of downloads: 189




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Abstract: 
Considerable progresses have been made in computer-aided engineering for the high fidelity analysis of structures and systems. Traditionally, computer models are calibrated using deterministic procedures. However, different analysts produce different models based on different modelling approximations and assumptions. In addition, identically constructed structures and systems show different characteristic between each other. Hence, model updating needs to take account modelling and test-data variability. Stochastic model updating techniques such as sensitivity approach and Bayesian updating are now recognised as powerful approaches able to deal with unavoidable uncertainty and variability. This paper presents a high fidelity surrogate model that allows to significantly reduce the computational costs associated with the Bayesian model updating technique. A set of Artificial Neural Networks are proposed to replace multi non-linear input-output relationships of finite element (FE) models. An application for updating the model parameters of the FE model of the DRL-AIRMOD structure is presented. © 2017 The Authors. Published by Elsevier Ltd.
License of this version: CC BY-NC-ND 4.0 Unported
Document Type: Article
Publishing status: publishedVersion
Issue Date: 2017
Appears in Collections:Fakultät für Bauingenieurwesen und Geodäsie

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pos. country downloads
total perc.
1 image of flag of Germany Germany 120 63.49%
2 image of flag of United States United States 29 15.34%
3 image of flag of China China 11 5.82%
4 image of flag of Austria Austria 3 1.59%
5 image of flag of Netherlands Netherlands 2 1.06%
6 image of flag of Macau Macau 2 1.06%
7 image of flag of United Kingdom United Kingdom 2 1.06%
8 image of flag of Czech Republic Czech Republic 2 1.06%
9 image of flag of Chile Chile 2 1.06%
10 image of flag of Canada Canada 2 1.06%
    other countries 14 7.41%

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