Systematic framework for handling uncertainty in probabilistic failure analysis of corroded concretes
Created by W.Langdon from
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- @Article{XIA:2024:engfailanal,
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author = "Jin Xia and Ren-jie Wu and Yu Zhou and Xipeng Wang and
Jiejing Chen and Wan-lin Min and Ke-yu Chen and
Wei-liang Jin",
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title = "Systematic framework for handling uncertainty in
probabilistic failure analysis of corroded concretes",
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journal = "Engineering Failure Analysis",
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volume = "156",
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pages = "107859",
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year = "2024",
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ISSN = "1350-6307",
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DOI = "doi:10.1016/j.engfailanal.2023.107859",
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URL = "https://www.sciencedirect.com/science/article/pii/S1350630723008130",
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keywords = "genetic algorithms, genetic programming, Civil
engineering, RC structures, Steel, Numerical
simulation, Chloride-induced corrosion, Uncertainty
quantification",
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abstract = "Due to ambiguous correlations between input random
variables and multi-source uncertainties from the
electrochemical model, significant differences between
deterministic corrosion prediction models and actual
measurements are often observed. A systematic framework
of quantification of uncertainties is developed for
structures with correlated random variables originated
from multiple sources, which allows efficiently
estimating the failure probability distribution of the
steel corrosion over time considering the randomness of
the cover depth, the surface chloride concentration,
and the chloride diffusion coefficient. After
partitioning correlated random variables into different
groups based on their uncertain sources, the Morris
one-step-at-a-time and Sobol model is established to
rank with respect to the importance of each correlated
random variable. Based on polynomial chaos expansions
and genetic programming methods, a more condensed set
of random variables is created to propagate parametric
problems. The unknown probability distribution of the
input random variables is formulated by the Markov
chain Monte Carlo to realize rigorous uncertainty
quantification of the structural reliability. The
application of the systematic framework to a set of
numerical examples of steel corrosion includes
experimental validation and uncertainty quantification
and propagation of environmental, material and
geometric properties. The results show that the
framework can be integrated with parametric
electrochemical models to allow robustness and
reliability of corrosion prediction",
- }
Genetic Programming entries for
Jin Xia
Ren-jie Wu
Yu Zhou
Xipeng Wang
Jiejing Chen
Wan-lin Min
Ke-yu Chen
Wei-liang Jin
Citations