The repeated or closely spaced eigenvalues and corresponding eigenvectors of a matrix are usually very sensitive to a perturbation of the matrix, which makes capturing the behavior of these eigenpairs very difficult. Similar difficulty is encountered in solving the random eigenvalue problem when a matrix with random elements has a set of clustered eigenvalues in its mean. In addition, the methods to solve the random eigenvalue problem often differ in characterizing the problem, which leads to different interpretations of the solution. Thus, the solutions obtained from different methods become mathematically incomparable. These two issues, the difficulty of solving and the non-unique characterization, are addressed here. A different approach...
Random matrix theory allows one to deduce the eigenvalue spectrum of a large matrix given only stati...
A reduced basis formulation is presented for efficient solution of large-scale random eigenvalue pro...
AbstractThis paper presents a new approach to stochastic eigenvalue equations using the decompositio...
The repeated or closely spaced eigenvalues and corresponding eigenvectors of a matrix are usually ve...
The random eigenvalue problem arises in frequency and mode shape determination for a linear system w...
The random eigenvalue problem arises in frequency and mode shape determination for a linear system w...
Uncertainties need to be taken into account in the dynamic analysis of complex structures. This is b...
Uncertainties need to be taken into account in the dynamic analysis of complex structures. This is b...
A new algorithm for the computation of the spectral expansion of the eigenvalues and eigenvectors of...
A new algorithm for the computation of the spectral expansion of the eigenvalues and eigenvectors of...
A new algorithm for the computation of the spectral expansion of the eigenvalues and eigenvectors of...
A reduced basis formulation is presented for the efficient solution of large-scale algebraic random ...
A new algorithm for the computation of the spectral expansion of the eigenvalues and eigenvectors of...
A new algorithm for the computation of the spectral expansion of the eigenvalues and eigenvectors of...
Random matrix theory allows one to deduce the eigenvalue spectrum of a large matrix given only stati...
Random matrix theory allows one to deduce the eigenvalue spectrum of a large matrix given only stati...
A reduced basis formulation is presented for efficient solution of large-scale random eigenvalue pro...
AbstractThis paper presents a new approach to stochastic eigenvalue equations using the decompositio...
The repeated or closely spaced eigenvalues and corresponding eigenvectors of a matrix are usually ve...
The random eigenvalue problem arises in frequency and mode shape determination for a linear system w...
The random eigenvalue problem arises in frequency and mode shape determination for a linear system w...
Uncertainties need to be taken into account in the dynamic analysis of complex structures. This is b...
Uncertainties need to be taken into account in the dynamic analysis of complex structures. This is b...
A new algorithm for the computation of the spectral expansion of the eigenvalues and eigenvectors of...
A new algorithm for the computation of the spectral expansion of the eigenvalues and eigenvectors of...
A new algorithm for the computation of the spectral expansion of the eigenvalues and eigenvectors of...
A reduced basis formulation is presented for the efficient solution of large-scale algebraic random ...
A new algorithm for the computation of the spectral expansion of the eigenvalues and eigenvectors of...
A new algorithm for the computation of the spectral expansion of the eigenvalues and eigenvectors of...
Random matrix theory allows one to deduce the eigenvalue spectrum of a large matrix given only stati...
Random matrix theory allows one to deduce the eigenvalue spectrum of a large matrix given only stati...
A reduced basis formulation is presented for efficient solution of large-scale random eigenvalue pro...
AbstractThis paper presents a new approach to stochastic eigenvalue equations using the decompositio...