An RF-PCE Hybrid Surrogate Model for Sensitivity Analysis of Dams
Abstract
:1. Introduction
Literature Review
2. Background Theory
2.1. Polynomial Chaos Expansion
2.2. Random Fields
2.3. Lanczos Algorithm for Eigenvalue Problems
Algorithm 1: Computation of and . |
|
2.4. Hybrid Method
- Step A: Develop a computational model (i.e., a dam finite element model) which has a role of black-box in the form of (and connects inputs to outputs).
- Step B: Quantify the uncertainty in the input parameters, , either in the form of random variables (correlated or uncorrelated) or random fields.
- Step C: Perform an uncertainty analysis that combines the input uncertainties with the computational model, and quantifies characteristics of the stochastic system. The PCE meta-model, , will be used for this purpose.
3. Case Study Dams
4. Results: Correlation-Based vs. Variance-Based Decomposition
4.1. Dam 1
- In general, Correlation Rank provides a fair estimation of most sensitive locations compared to Sobol indices.
- Dam-1 is a symmetry dam with symmetry mesh, and it is expected the results of sensitivity analysis reflect this fact. However, the Correlation Rank method provides a non-uniform distribution of the sensitivity index within dam body. The results from Sobol index are quite symmetry.
- According to these figures, the regions of the dam in vicinity of abutments are most sensitive locations for the modes #1, #3, and #6. On the other hand, the middle regions located at the upper one-half are most sensitive for modes #2, #4, and #5. The lower half part of dam is not sensitive at all in its overall vibration characteristics.
4.2. Dam 2
- For this un-symmetry dam, the Correlation Rank method provides a good estimation of the most sensitive locations compared to the Sobol indices. For all six mode of vibrations, the most sensitive location is identical in two methods.
- It is observed that for some of the vibration modes, the estimated sensitive location at the upstream and downstream faces are different (modes #1, #2, and #5). For those modes, the First order Sobol indices are also illustrated on the downstream face (see Figure 13m–o). In modes #1 and #2, a central sensitive region in upstream face corresponds to two sensitive side areas in downstream face, and vice versa. This type of response is consistent with the nature of mode shapes in the shell-type structures.
- According to these figures, the upper central regions of upstream/downstream face (not in the vicinity of the crest), as well as the left bank, are the most sensitive locations.
4.3. Spectrum of Sensitivity Indices
5. Results: Random Forest-Based Ensemble Regression
6. Connection to the System Identification and Dynamic Analysis
- In the response spectrum analysis technique, the response of the coupled system (i.e., displacement and stress) is separately computed for each vibration mode, and then are combined to calculate the total system level response. Using a proper heterogeneous model with exact effective mass and participation factor improves the accuracy of total calculations. In addition, it is important to identify the most effective vibration modes which contribute most to the dynamic response of the system. The number of effective modes (which might be different in heterogeneous models compared to the homogeneous ones) is typically selected to reach at least 90% total accuracy.
- In the time-integration time history analysis, the heterogeneous dam assumption alters the stiffness matrix and damping values of at different modes.
7. Summary and Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A. Dam Mode Shapes
Appendix B. Detailed Regression Trees
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Hariri-Ardebili, M.A.; Mahdavi, G.; Abdollahi, A.; Amini, A. An RF-PCE Hybrid Surrogate Model for Sensitivity Analysis of Dams. Water 2021, 13, 302. https://doi.org/10.3390/w13030302
Hariri-Ardebili MA, Mahdavi G, Abdollahi A, Amini A. An RF-PCE Hybrid Surrogate Model for Sensitivity Analysis of Dams. Water. 2021; 13(3):302. https://doi.org/10.3390/w13030302
Chicago/Turabian StyleHariri-Ardebili, Mohammad Amin, Golsa Mahdavi, Azam Abdollahi, and Ali Amini. 2021. "An RF-PCE Hybrid Surrogate Model for Sensitivity Analysis of Dams" Water 13, no. 3: 302. https://doi.org/10.3390/w13030302
APA StyleHariri-Ardebili, M. A., Mahdavi, G., Abdollahi, A., & Amini, A. (2021). An RF-PCE Hybrid Surrogate Model for Sensitivity Analysis of Dams. Water, 13(3), 302. https://doi.org/10.3390/w13030302