Author:
Goulet James-A.,Smith Ian
Abstract
<p>The ageing of existing structures and new innovative designs are increasing the necessity for a greater understanding of structural behaviour. A better understanding would improve effectiveness of activities such as assessing reserve capacity, evaluating load increases and replacement decision making. Identification methodologies are needed to indicate the right behaviour using indirect measurements and behaviour models.</p><p>This paper proposes a methodology that is able to accommodate multiple explanations while overcoming limitations of other SI approaches. The algorithm is called Candidate Model Search for System Identification (CMS<i>4</i>SI). Metrology guidelines are extended for use in the field of system identification while systematically including uncertainties and their correlations. The CMS<i>4</i>SI approach provides the necessary robustness and simplicity to support decisions related to the identification and understanding of structural behaviour. The approach is evaluated by full scale- testing of the Langensand Bridge. A critical aspect for meaningful identification is the uncertainty associated with model simplifications. The adaptation of clustering techniques and the use of radar plots allow for a convenient visualisation of results involving several parameters. Finally, models that are identified can be used to perform predictions of unmeasured behaviour, thereby supporting infrastructure management.</p>
Publisher
International Association for Bridge and Structural Engineering (IABSE)
Reference16 articles.
1. Goulet, J.-A., P. Kripakaran, and I.F.C. Smith, Multi-Model Structural Performance Monitoring. Journal of Structural Engineering, Submitted for publication (In press).
2. Raphael, B. and I. Smith, Finding the right model for bridge diagnosis, in Artificial Intelligence in Structural Engineering. 1998. p. 308-319.
3. Robert-Nicoud, Y., et al., Model identification of bridges using measurement data. Computer-Aided Civil and Infrastructure Engineering, 2005. 20(2): p. 118-131.
4. Robert-Nicoud, Y., B. Raphael, and I.F.C. Smith, System Identification through Model Composition and Stochastic Search. Journal of Computing in Civil Engineering, 2005. 19(3): p. 239-247.
5. Raphael, B. and I.F.C. Smith, A direct stochastic algorithm for global search. Applied Mathematics and Computation, 2003. 146(2-3): p. 729-758.
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