期刊
CONSTRUCTION AND BUILDING MATERIALS
卷 301, 期 -, 页码 -出版社
ELSEVIER SCI LTD
DOI: 10.1016/j.conbuildmat.2021.124274
关键词
Recycled aggregate concrete; Probabilistic calibration; Bayesian model update; Mechanical performances
资金
- National Natural Science Foundation of China [52008108]
- Fund of State Key Laboratory of Subtropical Building Science of China [2019ZB22]
- Key Research and Development Project of Shaanxi Province [2020SF-392]
- Guangdong Basic and Applied Basic Research Foundation [2019A1515110481]
- Fund of Undergraduate Innovation and Entrepreneurship Training Program [202110291087Z, 202110291216Z, 202110291233Y]
- Fund of Start-up Research at Nanjing Tech University
- Zhejiang University-University of Illinois at Urbana Champaign Institute (ZJUI)
This paper presents a Bayesian model updating approach for evaluating and updating existing deterministic models for the mechanical properties of recycled aggregate concrete (RAC), improving the accuracy and applicability of prediction performances. Using Bayesian parameter estimation technique, the important parameters in the updating process are assessed and the selected deterministic models for RAC mechanical performances are accordingly updated.
This paper proposes a Bayesian model updating approach applied to mechanical properties of recycled aggregate concrete (RAC) under uniaxial or triaxial compression. In particular, a probabilistic calibration method is proposed for evaluating the accuracy and applicability of available deterministic models for the mechanical performances of RAC based on the Bayesian theory and the Markov Chain Monte Carlo (MCMC) method. With the aid of the Bayesian parameter estimation technique, assessments of important parameters in the updating process are conducted using a variable selection approach. The selected existing deterministic models for the estimation of RAC mechanical performances are updated accordingly. To conduct the model updating, two large databases of the mechanical properties of RAC were obtained from the literature, including 749 compressive strengths, 476 elastic moduli, 145 flexural strengths, and 324 splitting tensile strengths. Finally, the accuracy and applicability of available deterministic models were calibrated and updated improving their prediction performances.
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