Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
4927705 | Soils and Foundations | 2016 | 16 Pages |
Abstract
The effective cohesion (câ²) and effective friction angle (Ïâ²) of soil are important soil parameters required for evaluating stability and deformation of geotechnical structures. It is well known that there is cross-correlation between câ² and Ïâ² of soil and that this cross-correlation affects reliability analysis of geotechnical structures. Ignoring the cross-correlation between câ² and Ïâ² may lead to a biased estimation of failure probability. It is therefore important to properly quantify the cross-correlation between câ² and Ïâ² of soil for geotechnical analysis and design. However, the câ² and Ïâ² data obtained from field and/or laboratory tests for a project are usually limited and insufficient to provide a meaningful joint probability distribution of câ² and Ïâ² or quantify their cross-correlation. This poses a significant challenge in engineering practice. To address this challenge, this paper develops a Bayesian approach for characterizing the site-specific joint probability distribution of câ² and Ïâ² and quantifying the cross-correlation between câ² and Ïâ² from a limited number of câ² and Ïâ² data obtained from a project. Under a Bayesian framework, the proposed approach probabilistically integrates the limited site-specific câ² and Ïâ² data pairs with prior knowledge, and the integrated knowledge is transformed into a large number of câ² and Ïâ² sample pairs using Markov Chain Monte Carlo (MCMC) simulation. Using the generated câ² and Ïâ² sample pairs, the correlation coefficient of câ² and Ïâ² is estimated, and the marginal and joint distributions of câ² and Ïâ² are evaluated. The proposed approach is illustrated and validated using real câ² and Ïâ² data pairs obtained from direct shear tests of alluvial fine-grained soils at Paglia River alluvial plain in Central Italy.
Keywords
Related Topics
Physical Sciences and Engineering
Earth and Planetary Sciences
Geotechnical Engineering and Engineering Geology
Authors
Yu Wang, Oluwatosin Victor Akeju,