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Smetana, Kathrin: A dimensional reduction approach based on the application of reduced basis methods in the context of hierarchical model reduction. 11.12.2013
Inhalt
Introduction
Aim, scope and contributions of this work
Overview on the literature
Outline of this work
The HMR-RB approach for linear elliptic problems
Hierarchical model reduction for linear elliptic problems
Formulation of the reduced problem
Example: An advection-diffusion problem
Discretization of the reduced problem
Basis generation with Reduced Basis Methods
Proper Orthogonal Decomposition
The Greedy Algorithm
The Hierarchical Model Reduction-Reduced Basis approach
Derivation of a parametrized 1D problem in transverse direction
Example: An advection-diffusion problem
Discretization of the parametrized 1D problem in transverse direction
Basis generation with RB techniques: The Adaptive-HMR-POD algorithm
A posteriori error estimation
An a posteriori error estimator based on the Riesz representative of the residual
A localized residual-type a posteriori error estimator
Analysis of the computational costs of the HMR-RB approach
Numerical experiments
Application of the HMR-RB approach to nonlinear PDEs
The HMR framework for nonlinear PDEs
Formulation of the reduced problem
Solution of the discrete reduced problem with Newton's method
The Empirical Projection Method (EPM)
Rigorous a priori and a posteriori error analysis for the EPM
The HMR-RB approach (using the EPM)
Formulation of the reduced problem in the HMR-RB framework employing the EPM
Derivation of a parametrized 1D problem in transverse direction
The generation of parametrized 1D operator evaluations
Example: The nonlinear diffusion equation
Reduced and collateral basis generation with RB methods — the Adaptive-HMR-RB algorithm
A posteriori error estimates
An a posteriori error bound based on the Brezzi-Rapaz-Raviart Theory
Computation of the inf-sup stability factor and the Lipschitz constant
Analysis of the computational costs of the HMR-RB approach
Numerical Experiments
Approximation of skewed interfaces
An ansatz for approximating skewed interfaces
Locating the interface
Removing the interface from the model reduction procedure
Exemplification for the HMR-RB approach
Formulation of the reduced problem
Derivation of a parametrized 1D problem in transverse direction
Example: An advection-diffusion problem
Numerical Experiments
Conclusion and Perspectives
Appendices
Appendix to Chapter 1
The HMR-RB approach for a domain with a curved boundary
Formulation of the reduced problem in the Hierarchical Model Reduction framework
Derivation of the parameter dependent one-dimensional problem in the HMR-RB approach
Alternative derivation of the localized estimator
Definition of the source term s of test case 2
Appendix to Chapter 3
Convergence of the EPM in the discrete setting
Bibliography