The focus is on a model reduction framework for parameterized elliptic eigenvalue problems by a reduced basis method. In contrast to the standard single output case, one is interested in approximating several outputs simultaneously, namely a certain number of the smallest eigenvalues. For a fast and reliable evaluation of these input-output relations, we analyze a posteriori error estimators for eigenvalues. Moreover, we present different greedy strategies and study systematically their performance. Special attention needs to be paid to multiple eigenvalues whose appearance is parameter-dependent. Our methods are of particular interest for applications in vibro-acoustics
Summary. A method is introduced for speeding up resonance computations for modelling human speech pr...
In a very recent paper (Hu et al., The lower bounds for eigenvalues of elliptic operators by nonconf...
The reduced basis method [1,2] is an increasingly popular reduced order modeling technique for param...
The focus is on a model reduction framework for parameterized elliptic eigenvalue problems by a redu...
The focus is on a model reduction framework for parameterized elliptic eigenvalue problems by a redu...
The focus is on a model reduction framework for parameterized elliptic eigenvalue problems by a redu...
We develop a new reduced basis (RB) method for the rapid and reliable approximation of parametrized ...
We develop a new reduced basis (RB) method for the rapid and reliable approximation of parametrized ...
We develop a new reduced basis (RB) method for the rapid and reliable approximation of parametrized ...
We develop a new reduced basis (RB) method for the rapid and reliable approximation of parametrized ...
We develop a new reduced basis (RB) method for the rapid and reliable approximation of parametrized ...
We develop a new reduced basis (RB) method for the rapid and reliable approximation of parametrized ...
We develop a new reduced basis (RB) method for the rapid and reliable approximation of par...
We develop a new reduced basis (RB) method for the rapid and reliable approximation of par...
Abstract. We study harmonic and refined extraction methods for the multiparameter eigenvalue problem...
Summary. A method is introduced for speeding up resonance computations for modelling human speech pr...
In a very recent paper (Hu et al., The lower bounds for eigenvalues of elliptic operators by nonconf...
The reduced basis method [1,2] is an increasingly popular reduced order modeling technique for param...
The focus is on a model reduction framework for parameterized elliptic eigenvalue problems by a redu...
The focus is on a model reduction framework for parameterized elliptic eigenvalue problems by a redu...
The focus is on a model reduction framework for parameterized elliptic eigenvalue problems by a redu...
We develop a new reduced basis (RB) method for the rapid and reliable approximation of parametrized ...
We develop a new reduced basis (RB) method for the rapid and reliable approximation of parametrized ...
We develop a new reduced basis (RB) method for the rapid and reliable approximation of parametrized ...
We develop a new reduced basis (RB) method for the rapid and reliable approximation of parametrized ...
We develop a new reduced basis (RB) method for the rapid and reliable approximation of parametrized ...
We develop a new reduced basis (RB) method for the rapid and reliable approximation of parametrized ...
We develop a new reduced basis (RB) method for the rapid and reliable approximation of par...
We develop a new reduced basis (RB) method for the rapid and reliable approximation of par...
Abstract. We study harmonic and refined extraction methods for the multiparameter eigenvalue problem...
Summary. A method is introduced for speeding up resonance computations for modelling human speech pr...
In a very recent paper (Hu et al., The lower bounds for eigenvalues of elliptic operators by nonconf...
The reduced basis method [1,2] is an increasingly popular reduced order modeling technique for param...