Predictability of Chaotic Dynamics

A Finite-time Lyapunov Exponents Approach

Nonfiction, Science & Nature, Science, Physics, Chaotic Behavior, Mathematical Physics, Mathematics
Cover of the book Predictability of Chaotic Dynamics by Juan C. Vallejo, Miguel A. F. Sanjuan, Springer International Publishing
View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart
Author: Juan C. Vallejo, Miguel A. F. Sanjuan ISBN: 9783319518930
Publisher: Springer International Publishing Publication: March 27, 2017
Imprint: Springer Language: English
Author: Juan C. Vallejo, Miguel A. F. Sanjuan
ISBN: 9783319518930
Publisher: Springer International Publishing
Publication: March 27, 2017
Imprint: Springer
Language: English

This book is primarily concerned with the computational aspects of predictability of dynamical systems – in particular those where observation, modeling and computation are strongly interdependent. Unlike with physical systems under control in laboratories, for instance in celestial mechanics, one is confronted with the observation and modeling of systems without the possibility of altering the key parameters of the objects studied. Therefore, the numerical simulations offer an essential tool for analyzing these systems.

With the widespread use of computer simulations to solve complex dynamical systems, the reliability of the numerical calculations is of ever-increasing interest and importance. This reliability is directly related to the regularity and instability properties of the modeled flow. In this interdisciplinary scenario, the underlying physics provide the simulated models, nonlinear dynamics provides their chaoticity and instability properties, and the computer sciences provide the actual numerical implementation.

This book introduces and explores precisely this link between the models and their predictability characterization based on concepts derived from the field of nonlinear dynamics, with a focus on the finite-time Lyapunov exponents approach. The method is illustrated using a number of well-known continuous dynamical systems, including the Contopoulos, Hénon-Heiles and Rössler systems. To help students and newcomers quickly learn to apply these techniques, the appendix provides descriptions of the algorithms used throughout the text and details how to implement them in order to solve a given continuous dynamical system.

View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart

This book is primarily concerned with the computational aspects of predictability of dynamical systems – in particular those where observation, modeling and computation are strongly interdependent. Unlike with physical systems under control in laboratories, for instance in celestial mechanics, one is confronted with the observation and modeling of systems without the possibility of altering the key parameters of the objects studied. Therefore, the numerical simulations offer an essential tool for analyzing these systems.

With the widespread use of computer simulations to solve complex dynamical systems, the reliability of the numerical calculations is of ever-increasing interest and importance. This reliability is directly related to the regularity and instability properties of the modeled flow. In this interdisciplinary scenario, the underlying physics provide the simulated models, nonlinear dynamics provides their chaoticity and instability properties, and the computer sciences provide the actual numerical implementation.

This book introduces and explores precisely this link between the models and their predictability characterization based on concepts derived from the field of nonlinear dynamics, with a focus on the finite-time Lyapunov exponents approach. The method is illustrated using a number of well-known continuous dynamical systems, including the Contopoulos, Hénon-Heiles and Rössler systems. To help students and newcomers quickly learn to apply these techniques, the appendix provides descriptions of the algorithms used throughout the text and details how to implement them in order to solve a given continuous dynamical system.

More books from Springer International Publishing

Cover of the book Input-to-State Stability for PDEs by Juan C. Vallejo, Miguel A. F. Sanjuan
Cover of the book Computer Supported Education by Juan C. Vallejo, Miguel A. F. Sanjuan
Cover of the book Monitoring the Nervous System for Anesthesiologists and Other Health Care Professionals by Juan C. Vallejo, Miguel A. F. Sanjuan
Cover of the book The Evolution of Agricultural Credit during China’s Republican Era, 1912–1949 by Juan C. Vallejo, Miguel A. F. Sanjuan
Cover of the book National Security, Surveillance and Terror by Juan C. Vallejo, Miguel A. F. Sanjuan
Cover of the book Selectivity in the Synthesis of Cyclic Sulfonamides by Juan C. Vallejo, Miguel A. F. Sanjuan
Cover of the book New Prospects in Direct, Inverse and Control Problems for Evolution Equations by Juan C. Vallejo, Miguel A. F. Sanjuan
Cover of the book Nuclear Geophysics by Juan C. Vallejo, Miguel A. F. Sanjuan
Cover of the book Secure IT Systems by Juan C. Vallejo, Miguel A. F. Sanjuan
Cover of the book Clinical Image-Based Procedures. Translational Research in Medical Imaging by Juan C. Vallejo, Miguel A. F. Sanjuan
Cover of the book Literary Translation and Cultural Mediators in 'Peripheral' Cultures by Juan C. Vallejo, Miguel A. F. Sanjuan
Cover of the book Competitiveness of CEE Economies and Businesses by Juan C. Vallejo, Miguel A. F. Sanjuan
Cover of the book New Advancements in Swarm Algorithms: Operators and Applications by Juan C. Vallejo, Miguel A. F. Sanjuan
Cover of the book Nutrigenomics by Juan C. Vallejo, Miguel A. F. Sanjuan
Cover of the book Renormalization Group Analysis of Equilibrium and Non-equilibrium Charged Systems by Juan C. Vallejo, Miguel A. F. Sanjuan
We use our own "cookies" and third party cookies to improve services and to see statistical information. By using this website, you agree to our Privacy Policy