Bayesian updating on resistance factors of H-Piles with axial load tests
Bayesian updating on resistance factors of H-Piles with axial load tests
In the Load and Resistance Factor Design (LRFD) of piles, several design codes recommend higher resistance factors if load tests are conducted. However, no information is provided on how these resistance factors are determined. In this paper, a probabilistic approach based on Bayes' theorem and the First Order Reliability Method (FORM) is proposed to calibrate resistance factors for different numbers of load tests and the corresponding test results. In addition, within-site variability, design methods, types of piles, and ground conditions can also be considered. The proposed approach applied to H-piles under axial load tests shows consistent results with current design codes. Results show that resistance factors are significantly increased even if only one positive test is observed among all the tests. For low variability sites, the differences of resistance factors between various design methods are significantly reduced if one or more tests are positive, while for high variability sites, the differences of resistance factors are only slightly decreased, indicating that design methods should be considered in the latter case. Most of the increase in resistance factors is achieved with a small number of tests. For β-Method used in clay sites, 80% of the increase in resistance factors is achieved with two, four and five consecutive positive tests are observed for low, medium and high variability sites, respectively.
Bayesian updating, H-pile, Load test, Resistance factor
Zhang, Yuting
821b7687-fe98-4525-b641-2ea503797319
Huang, Jinsong
da153fad-3446-47fc-8b4a-5799e42fb59e
Giacomini, Anna
93a2476b-4df9-4d0b-8269-1070776d8f45
1 July 2023
Zhang, Yuting
821b7687-fe98-4525-b641-2ea503797319
Huang, Jinsong
da153fad-3446-47fc-8b4a-5799e42fb59e
Giacomini, Anna
93a2476b-4df9-4d0b-8269-1070776d8f45
Zhang, Yuting, Huang, Jinsong and Giacomini, Anna
(2023)
Bayesian updating on resistance factors of H-Piles with axial load tests.
Computers and Geotechnics, 159, [105421].
(doi:10.1016/j.compgeo.2023.105421).
Abstract
In the Load and Resistance Factor Design (LRFD) of piles, several design codes recommend higher resistance factors if load tests are conducted. However, no information is provided on how these resistance factors are determined. In this paper, a probabilistic approach based on Bayes' theorem and the First Order Reliability Method (FORM) is proposed to calibrate resistance factors for different numbers of load tests and the corresponding test results. In addition, within-site variability, design methods, types of piles, and ground conditions can also be considered. The proposed approach applied to H-piles under axial load tests shows consistent results with current design codes. Results show that resistance factors are significantly increased even if only one positive test is observed among all the tests. For low variability sites, the differences of resistance factors between various design methods are significantly reduced if one or more tests are positive, while for high variability sites, the differences of resistance factors are only slightly decreased, indicating that design methods should be considered in the latter case. Most of the increase in resistance factors is achieved with a small number of tests. For β-Method used in clay sites, 80% of the increase in resistance factors is achieved with two, four and five consecutive positive tests are observed for low, medium and high variability sites, respectively.
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Published date: 1 July 2023
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© 2023 The Author(s)
Keywords:
Bayesian updating, H-pile, Load test, Resistance factor
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Local EPrints ID: 505895
URI: http://eprints.soton.ac.uk/id/eprint/505895
ISSN: 0266-352X
PURE UUID: 2b32a562-c1b2-4d99-a093-a15469009654
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Date deposited: 22 Oct 2025 16:56
Last modified: 23 Oct 2025 02:26
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Author:
Yuting Zhang
Author:
Jinsong Huang
Author:
Anna Giacomini
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