The Parameterization Method for Invariant Manifolds The Parameterization Method for Invariant Manifolds
Applied Mathematical Sciences

The Parameterization Method for Invariant Manifolds

From Rigorous Results to Effective Computations

Àlex Haro and Others
    • €87.99
    • €87.99

Publisher Description

This monograph presents some theoretical and computational aspects of the parameterization method for invariant manifolds, focusing on the following contexts: invariant manifolds associated with fixed points, invariant tori in quasi-periodically forced systems, invariant tori in Hamiltonian systems and normally hyperbolic invariant manifolds. This book provides algorithms of computation and some practical details of their implementation. The methodology is illustrated with 12 detailed examples,  many of them well known in the literature of numerical computation in dynamical systems.  A public version of the software used for some of the examples is available online.

The book is aimed at mathematicians, scientists and engineers interested in the theory and  applications of computational dynamical systems.

GENRE
Science & Nature
RELEASED
2016
18 April
LANGUAGE
EN
English
LENGTH
283
Pages
PUBLISHER
Springer International Publishing
SIZE
7.9
MB

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