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On Inverse Quadratic Eigenvalue Problems with Partially Prescribed Eigenstructure
SIAM. J. Matrix Anal. & Appl. Volume 25, Issue 4, pp. 995-1020 (2004)
Issue Date: 2004The inverse eigenvalue problem of constructing real and symmetric square matrices $M$, $C$, and $K$ of size $n \times n$ for the quadratic pencil $Q(\lambda) = \lambda^2 M + \lambda C + K$ so that $Q(\lambda)$ has a prescribed subset of eigenvalues and eigenvectors is considered. This paper consists of two parts addressing two related but different problems.
The first part deals with the inverse problem where $M$ and $K$ are required to be positive definite and semidefinite, respectively. It is shown via construction that the inverse problem is solvable for any $k$, given complex conjugately closed pairs of distinct eigenvalues and linearly independent eigenvectors, provided $k \leq n$. The construction also allows additional optimization conditions to be built into the solution so as to better refine the approximate pencil. The eigenstructure of the resulting $Q(\lambda)$ is completely analyzed.
The second part deals with the inverse problem where $M$ is a fixed positive definite matrix (and hence may be assumed to be the identity matrix $I_n$). It is shown via construction that the monic quadratic pencil $Q(\lambda)=\lambda^2 I_n + \lambda C + K$, with $n + 1$ arbitrarily assigned complex conjugately closed pairs of distinct eigenvalues and column eigenvectors which span the space $\mathbb{C}^n$, always exists. Sufficient conditions under which this quadratic inverse eigenvalue problem is uniquely solvable are specified.
©2004 Society for Industrial and Applied Mathematics| Permalink: | http://dx.doi.org/10.1137/S0895479803404484 |




