Bayesian inference of pit corrosion in prestressing strands using Markov Chain Monte Carlo method

被引:2
|
作者
Lee, Jaebeom [1 ]
Jeon, Chi-Ho [2 ]
Shim, Chang-Su [2 ]
Lee, Young-Joo [3 ]
机构
[1] Korea Res Inst Stand & Sci KRISS, Intelligent Wave Engn Team, Daejeon 34113, South Korea
[2] Chung Ang Univ, Dept Civil & Environm Engn, Seoul 06974, South Korea
[3] Ulsan Natl Inst Sci & Technol UNIST, Dept Urban & Environm Engn, Ulsan 44919, South Korea
基金
新加坡国家研究基金会;
关键词
Corroded strand; Pit corrosion; Prestressed concrete bridge; Inverse analysis; Bayesian approach; Markov chain Monte Carlo (MCMC); INVERSE ANALYSIS; CONCRETE; IDENTIFICATION; COMPOSITES; PARAMETERS; FRAMEWORK; DAMAGE; MODEL;
D O I
10.1016/j.probengmech.2023.103512
中图分类号
TH [机械、仪表工业];
学科分类号
0802 ;
摘要
Corrosion monitoring has been widely studied to maintain the structural capacity of bridges through direct visual and nondestructive inspections or indirect inverse analysis-based methods. This study proposes a Bayesian inference method for inferring pit corrosion in the prestressing strands of prestressed concrete (PSC) bridges, which is an indirect method for corrosion monitoring. First, the probabilistic relationship between the mechanical properties of the strands and the amount of pit corrosion was defined using Bayes' rule. Subsequently, a Markov chain Monte Carlo method was introduced to infer the posterior probability, which is a conditional probability distribution of the amount of corrosion given a certain mechanical property. Based on the inference results, probabilistic bounds for the amount of corrosion were derived. The proposed method was applied to two examples: (a) probabilistic corrosion inference of strands based on the tensile test results, and (b) probabilistic corrosion inference of embedded strands in PSC girders based on the bending test results. The inference results demonstrated the applicability of the proposed method.
引用
收藏
页数:13
相关论文
共 50 条
  • [31] An efficient and robust sampler for Bayesian inference: Transitional Ensemble Markov Chain Monte Carlo
    Lye, Adolphus
    Cicirello, Alice
    Patelli, Edoardo
    MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2022, 167
  • [32] Bayesian inference of the sites of perturbations in metabolic pathways via Markov chain Monte Carlo
    Jayawardhana, Bayu
    Kell, Douglas B.
    Rattray, Magnus
    BIOINFORMATICS, 2008, 24 (09) : 1191 - 1197
  • [33] Bayesian estimation of an autoregressive model using Markov chain Monte Carlo
    Barnett, G
    Kohn, R
    Sheather, S
    JOURNAL OF ECONOMETRICS, 1996, 74 (02) : 237 - 254
  • [34] Bayesian internal dosimetry calculations using Markov Chain Monte Carlo
    Miller, G
    Martz, HF
    Little, TT
    Guilmette, R
    RADIATION PROTECTION DOSIMETRY, 2002, 98 (02) : 191 - 198
  • [35] Fully Bayesian image separation using Markov chain Monte Carlo
    Kayabol, Koray
    Kuruoglu, Ercan E.
    Sankur, Buelent
    2007 IEEE 15TH SIGNAL PROCESSING AND COMMUNICATIONS APPLICATIONS, VOLS 1-3, 2007, : 969 - +
  • [36] Markov Chain Monte Carlo for Exact Inference for Diffusions
    Sermaidis, Giorgos
    Papaspiliopoulos, Omiros
    Roberts, Gareth O.
    Beskos, Alexandros
    Fearnhead, Paul
    SCANDINAVIAN JOURNAL OF STATISTICS, 2013, 40 (02) : 294 - 321
  • [37] Bayesian Inference of Task-Based Functional Brain Connectivity Using Markov Chain Monte Carlo Methods
    Ahmad, M. Faizan
    Murphy, James
    Vatansever, Deniz
    Stamatakis, Emmanuel A.
    Godsill, Simon J.
    IEEE JOURNAL OF SELECTED TOPICS IN SIGNAL PROCESSING, 2016, 10 (07) : 1150 - 1159
  • [38] Structural physical parameter identification using Bayesian estimation with Markov Chain Monte Carlo method
    Li, Xiao-Hua
    Xie, Li-Li
    Gong, Mao-Sheng
    Zhendong yu Chongji/Journal of Vibration and Shock, 2010, 29 (04): : 59 - 63
  • [39] Improving Bayesian analysis for LISA Pathfinder using an efficient Markov Chain Monte Carlo method
    Ferraioli, Luigi
    Porter, Edward K.
    Armano, Michele
    Audley, Heather
    Congedo, Giuseppe
    Diepholz, Ingo
    Gibert, Ferran
    Hewitson, Martin
    Hueller, Mauro
    Karnesis, Nikolaos
    Korsakova, Natalia
    Nofrarias, Miquel
    Plagnol, Eric
    Vitale, Stefano
    EXPERIMENTAL ASTRONOMY, 2014, 37 (01) : 109 - 125
  • [40] Improving Bayesian analysis for LISA Pathfinder using an efficient Markov Chain Monte Carlo method
    Luigi Ferraioli
    Edward K. Porter
    Michele Armano
    Heather Audley
    Giuseppe Congedo
    Ingo Diepholz
    Ferran Gibert
    Martin Hewitson
    Mauro Hueller
    Nikolaos Karnesis
    Natalia Korsakova
    Miquel Nofrarias
    Eric Plagnol
    Stefano Vitale
    Experimental Astronomy, 2014, 37 : 109 - 125