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Data-driven modeling of modal parameters of long-span bridges under environmental and operational variation

 Data-driven modeling of modal parameters of long-span bridges under environmental and operational variation
Auteur(s): , , , ,
Présenté pendant IABSE Conference: Risk Intelligence of Infrastructures, Seoul, South Korea, 9-10 November 2020, publié dans , pp. 170-173
DOI: 10.2749/seoul.2020.170
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This study develops the multivariate model of modal parameters under the high variability of structural responses and environmental conditions. The automated operational modal analysis procedure is...
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Détails bibliographiques

Auteur(s): (University of Illinois at Urbana-Champaign, IL, USA)
(University of Illinois at Urbana-Champaign, IL, USA)
(University of Illinois at Urbana-Champaign, IL, USA)
(University of Illinois at Urbana-Champaign, IL, USA)
(DM Engineering, Seoul, Korea)
Médium: papier de conférence
Langue(s): anglais
Conférence: IABSE Conference: Risk Intelligence of Infrastructures, Seoul, South Korea, 9-10 November 2020
Publié dans:
Page(s): 170-173 Nombre total de pages (du PDF): 4
Page(s): 170-173
Nombre total de pages (du PDF): 4
DOI: 10.2749/seoul.2020.170
Abstrait:

This study develops the multivariate model of modal parameters under the high variability of structural responses and environmental conditions. The automated operational modal analysis procedure is implemented by synthesizing the algorithms of output-only system identification and density-based clustering algorithm. The Gaussian Process Regression is applied to accumulated modal estimates as well as corresponding environmental/operational conditions for examining the high degree of nonlinear variation in these monitoring data. The performance of the developed model is demonstrated for one-to-one regressions for multivariate structural health monitoring outputs in the presence of environmental and operational variation.