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Damage identification of civil infrastructure in the time domain using FEM calibrated ARMAX model

Version 2 2024-06-03, 13:28
Version 1 2014-10-28, 09:40
conference contribution
posted on 2024-06-03, 13:28 authored by Y Wang, Sui Yang KhooSui Yang Khoo, AJ Li
Due to environmental loads, mechanical damages, structural aging and human factors, civil infrastructure inevitably deteriorate during their service lives. Since their damage may claim human lives and cause significant economic losses, how to identify damages and assess structural conditions timely and accurately has drawn increasingly more attentions from structural engineering community worldwide. In this study, a fast and sensitive time domain damage identification method will be developed. First, a high quality finite element model is built and the structural responses are simulated under different damage scenarios. Based on the simulated data, an Auto Regressive Moving Average Exogenous (ARMAX) model is then developed and calibrated. The calibrated ARMAX model can be used to identify damage in different scenarios through model updating process using clonal selection algorithm (CSA). The identification results demonstrate the performance of the proposed methodology, which has the potential to be used for damage identification in practices.

History

Pagination

203-212

Location

Hong Kong, China

Start date

2011-12-05

End date

2011-12-08

ISBN-13

9789623677318

Language

eng

Publication classification

E1 Full written paper - refereed

Copyright notice

2011, Hong Kong Polytechnic University

Title of proceedings

APVC 2011 : Proceedings of the14th Asia Pacific Vibration Conference

Event

Asia Pacific Vibration Conference (14th : 2011 : Hong Kong, China)

Publisher

Hong Kong Polytechnic University

Place of publication

[Hong Kong, China]

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