Reinforcement corrosion has been recognized as an influential factor in the seismic fragility, both demand and capacity models, of aging reinforced concrete (RC) bridges. For capacity models, accurate and applied prediction tools accounting for aging effects are yet to be well established. Current practices usually perform numerical analyses to obtain time-variant capacity models, which are time-consuming particularly when multi-source structural and environmental uncertainties are considered and sometimes even suffer computational non-convergence. To address these issues, this study leverages a rigorously optimized artificial neural network architecture to develop data-driven models for rapid estimates of probabilistic curvature capacity of corroded circular RC bridge columns with flexural failure modes. An extensive database of multi-level curvature limit states (i.e. slight, moderate, severe, and complete) is created through experimentally validated moment–curvature analyses. A new threshold for the moderate limit state is defined based on the strain of core concrete, rather than cover concrete, to account for the potential full erosion of the cover with drastic corrosion. The data-driven probabilistic capacity models are applied to aid the lifetime seismic fragility assessment of a typical highway bridge, where the spectral acceleration at 1.0 s (Sa-10), peak ground velocity (PGV), and Housner intensity (HI) are found consistently, for the first time, as optimal intensity measures for probabilistic demand modeling of RC columns with different extents of aging effects. For the ease of application, the database and code for the data-driven probabilistic capacity models are accessible at https://bit.ly/3uAa8EY.
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Research Article|
November 01, 2024
Probabilistic curvature limit states of corroded circular RC bridge columns: Data-driven models and application to lifetime seismic fragility analyses Available to Purchase
Bo Xu, S.M.EERI;
Bo Xu, S.M.EERI
1
Department of Civil and Environmental Engineering, Case Western Reserve University, Cleveland, OH, USA
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Xiaowei Wang, M.EERI;
2
Department of Bridge Engineering, Tongji University, Shanghai, ChinaXiaowei Wang, Department of Bridge Engineering, Tongji University, Shanghai 200092, China. Email: [email protected]
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Chuang-Sheng Walter Yang;
Chuang-Sheng Walter Yang
3
Department of Civil and Environmental Engineering, Georgia Institute of Technology, Atlanta, GA, USA
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Yue Li, M.EERI
Yue Li, M.EERI
1
Department of Civil and Environmental Engineering, Case Western Reserve University, Cleveland, OH, USA
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Bo Xu, S.M.EERI
1
Department of Civil and Environmental Engineering, Case Western Reserve University, Cleveland, OH, USA
Chuang-Sheng Walter Yang
3
Department of Civil and Environmental Engineering, Georgia Institute of Technology, Atlanta, GA, USA
Yue Li, M.EERI
1
Department of Civil and Environmental Engineering, Case Western Reserve University, Cleveland, OH, USAXiaowei Wang, Department of Bridge Engineering, Tongji University, Shanghai 200092, China. Email: [email protected]
Publisher: Earthquake Engineering Research Institute
Received:
12 Oct 2023
Accepted:
21 Apr 2024
First Online:
28 Oct 2024
Online ISSN: 1944-8201
Print ISSN: 8755-2930
Funding
- Funder(s):U.S. Department of Transportation (USDOT) National Center for Transportation Infrastructure Durability & Life Extension
- Funder(s):National Natural Science Foundation of China
- Award Id(s): 52008155
- Award Id(s):
- Funder(s):National Natural Science Foundation of China
- Award Id(s): 52378183
- Award Id(s):
- Funder(s):Division of Civil, Mechanical and Manufacturing Innovation
- Award Id(s): NSF-1638320
- Award Id(s):
© The Author(s) 2024
Earthquake Engineering Research Institute
Earthquake Spectra (2024) 40 (4): 2805–2835.
Article history
Received:
12 Oct 2023
Accepted:
21 Apr 2024
First Online:
28 Oct 2024
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CitationBo Xu, Xiaowei Wang, Chuang-Sheng Walter Yang, Yue Li; Probabilistic curvature limit states of corroded circular RC bridge columns: Data-driven models and application to lifetime seismic fragility analyses. Earthquake Spectra 2024;; 40 (4): 2805–2835. doi: https://doi.org/10.1177/87552930241255091
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Index Terms/Descriptors
- artificial intelligence
- bridges
- civil engineering
- concrete
- construction materials
- corrosion
- data bases
- data processing
- earthquakes
- finite element analysis
- ground motion
- neural networks
- prediction
- probability
- reinforced materials
- seismic intensity
- seismic moment
- seismic response
- shaking tables
- statistical analysis
- structures
- velocity
- peak ground velocity
- machine learning
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