Deep Neural Network and Polynomial Chaos Expansion-Based Surrogate Models for Sensitivity and Uncertainty Propagation: An Application to a Rockfill Dam

Author:

Shahzadi Gullnaz,Soulaïmani Azzeddine

Abstract

Computational modeling plays a significant role in the design of rockfill dams. Various constitutive soil parameters are used to design such models, which often involve high uncertainties due to the complex structure of rockfill dams comprising various zones of different soil parameters. This study performs an uncertainty analysis and a global sensitivity analysis to assess the effect of constitutive soil parameters on the behavior of a rockfill dam. A Finite Element code (Plaxis) is utilized for the structure analysis. A database of the computed displacements at inclinometers installed in the dam is generated and compared to in situ measurements. Surrogate models are significant tools for approximating the relationship between input soil parameters and displacements and thereby reducing the computational costs of parametric studies. Polynomial chaos expansion and deep neural networks are used to build surrogate models to compute the Sobol indices required to identify the impact of soil parameters on dam behavior.

Publisher

MDPI AG

Subject

Water Science and Technology,Aquatic Science,Geography, Planning and Development,Biochemistry

Reference47 articles.

1. Foundation Analysis and Design;Bowles,1996

2. Selecting parameters to optimize in model calibration by inverse analysis

3. Importance measures in global sensitivity analysis of nonlinear models

4. Global Sensitivity Analysis: The Primer;Saltelli,2008

5. Sensitivity and Uncertainty Analysis, Volume II: Applications to Large-Scale Systems;Cacuci,2005

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