Nonlinear eigenproblem

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A nonlinear eigenproblem is a generalization of an ordinary eigenproblem to equations that depend nonlinearly on the eigenvalue. Specifically, it refers to equations of the form:

A(\lambda ){\mathbf  {x}}=0,\,

where x is a vector (the nonlinear "eigenvector") and A is a matrix-valued function of the number \lambda (the nonlinear "eigenvalue"). (More generally, A(\lambda ) could be a linear map, but most commonly it is a finite-dimensional, usually square, matrix.) A is usually required to be a holomorphic function of \lambda (in some domain).

For example, an ordinary linear eigenproblem B{\mathbf  {v}}=\lambda {\mathbf  {v}}, where B is a square matrix, corresponds to A(\lambda )=B-\lambda I, where I is the identity matrix.

One common case is where A is a polynomial matrix, which is called a polynomial eigenvalue problem. In particular, the specific case where the polynomial has degree two is called a quadratic eigenvalue problem, and can be written in the form:

A(\lambda ){\mathbf  {x}}=(A_{2}\lambda ^{2}+A_{1}\lambda +A_{0}){\mathbf  {x}}=0,\,

in terms of the constant square matrices A0,1,2. This can be converted into an ordinary linear generalized eigenproblem of twice the size by defining a new vector {\mathbf  {y}}=\lambda {\mathbf  {x}}. In terms of x and y, the quadratic eigenvalue problem becomes:

{\begin{pmatrix}-A_{0}&0\\0&I\end{pmatrix}}{\begin{pmatrix}{\mathbf  {x}}\\{\mathbf  {y}}\end{pmatrix}}=\lambda {\begin{pmatrix}A_{1}&A_{2}\\I&0\end{pmatrix}}{\begin{pmatrix}{\mathbf  {x}}\\{\mathbf  {y}}\end{pmatrix}},

where I is the identity matrix. More generally, if A is a matrix polynomial of degree d, then one can convert the nonlinear eigenproblem into a linear (generalized) eigenproblem of d times the size.

Besides converting them to ordinary eigenproblems, which only works if A is polynomial, there are other methods of solving nonlinear eigenproblems based on the Jacobi-Davidson algorithm or based on Newton's method (related to inverse iteration).

References

  • Françoise Tisseur and Karl Meerbergen, "The quadratic eigenvalue problem," SIAM Review 43 (2), 235-286 (2001).
  • Gene H. Golub and Henk A. van der Vorst, "Eigenvalue computation in the 20th century," Journal of Computational and Applied Mathematics 123, 35-65 (2000).
  • Philippe Guillaume, "Nonlinear eigenproblems," SIAM J. Matrix. Anal. Appl. 20 (3), 575-595 (1999).
  • Axel Ruhe, "Algorithms for the nonlinear eigenvalue problem," SIAM Journal on Numerical Analysis 10 (4), 674-689 (1973).
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