This paper combines data from laboratory, centrifuge testing, and numerical tools to highlight the predictive capabilities of the Bayesian method for uncertainty quantification and propagation. The Bayesian approach is employed to estimate uncertain parameters of a multi-yield constitutive model using data from cyclic-triaxial testing. Then, predictive capabilities of a finite element model in reproducing the dynamic response of a saturated sand deposit are investigated by drawing samples from the estimated posterior probability distributions of the constitutive model parameters. Variability of the predicted responses due to estimation uncertainty is evaluated. The response of centrifuge tests is used to assess the simulated responses
High uncertainties arias through the characterization of soil parameters because of the lack of data...
The impacts of acidifying atmospheric deposition to soil and water resources are commonly calculated...
Geotechnical models are usually associated with considerable amounts of model uncertainty. In this s...
In this paper, an innovative procedure is developed for estimating the uncertainty of an empirical g...
As any model is only an abstraction of the real world, model uncertainty always exists. The magnitud...
There are two types of uncertainty that could affect the credibility of a geotechnical analysis, i.e...
Uncertainty exists in geomaterials at contact, microstructural, and continuum scales. To develop pre...
Modeling physical systems in engineering always comes with uncertainties in terms of the model’s inp...
As the profession moves toward the performance-based earthquake engineering design, it becomes more ...
One of the main difficulties in the geotechnical design process lies in dealing with uncertainty. Un...
One of the main difficulties in the geotechnical design process lies in dealing with uncertainty. Un...
Knowledge about model error or model uncertainty is essential for liquefaction analysis. Model uncer...
Evaluation of liquefaction susceptibility is affected by different sources of uncertainties. These u...
Cyclic undrained triaxial tests are commonly used in research and practical design to evaluate the l...
A Bayesian framework for probabilistic assessment of the initiation of seismic soil liquefaction is ...
High uncertainties arias through the characterization of soil parameters because of the lack of data...
The impacts of acidifying atmospheric deposition to soil and water resources are commonly calculated...
Geotechnical models are usually associated with considerable amounts of model uncertainty. In this s...
In this paper, an innovative procedure is developed for estimating the uncertainty of an empirical g...
As any model is only an abstraction of the real world, model uncertainty always exists. The magnitud...
There are two types of uncertainty that could affect the credibility of a geotechnical analysis, i.e...
Uncertainty exists in geomaterials at contact, microstructural, and continuum scales. To develop pre...
Modeling physical systems in engineering always comes with uncertainties in terms of the model’s inp...
As the profession moves toward the performance-based earthquake engineering design, it becomes more ...
One of the main difficulties in the geotechnical design process lies in dealing with uncertainty. Un...
One of the main difficulties in the geotechnical design process lies in dealing with uncertainty. Un...
Knowledge about model error or model uncertainty is essential for liquefaction analysis. Model uncer...
Evaluation of liquefaction susceptibility is affected by different sources of uncertainties. These u...
Cyclic undrained triaxial tests are commonly used in research and practical design to evaluate the l...
A Bayesian framework for probabilistic assessment of the initiation of seismic soil liquefaction is ...
High uncertainties arias through the characterization of soil parameters because of the lack of data...
The impacts of acidifying atmospheric deposition to soil and water resources are commonly calculated...
Geotechnical models are usually associated with considerable amounts of model uncertainty. In this s...