In nonlinear dynamical systems the determination of stable and unstable periodic orbits as part of phase space prediction is problematic in particular if perturbed by noise. Fourier spectra of the time series or its autocorrelation function have shown to be of little use if the dynamic process is not strictly wide-sense stationary or if it is nonlinear. To locate unstable periodic orbits of a chaotic attractor in phase space the least stable eigenvalue can be determined by approximating locally the trajectory via linearisation. This approximation can be achieved by employing a Gaussian kernel estimator and minimising the summed up distances of the measured time series i.e. its estimated trajectory (e.g. via Levenberg-Marquardt). Noise poses...
For low-dimensional chaotic systems, we find that time correlation functions can be accurately appro...
International audienceA numerical method for detection of unstable periodic orbits on attractors of ...
A very general definition of nonlinearity in data sets can be obtained from their representation in ...
In nonlinear dynamical systems the determination of stable and unstable periodic orbits as part of p...
The treatment of noise in chaotic time series remains a challenging subject in nonlinear time series...
Time-frequency analysis is performed for chaotic flow with a power spectrum estimator based on the p...
We present methods to detect the transitions from quasiperiodic to chaotic motion via strange noncha...
THE MAIN GOAL OF THIS THESIS IS TO DEVELOP AND USE ANALYTICAL AS WELL AS NUMERICAL METHODS STUDYI...
This paper talk addresses a new signal processing method for detecting chaos in time series. This pr...
We use concepts from chaos theory in order to model nonlinear dynamical systems that exhibit determi...
This paper describes a procedure for making short term predictions by examining trajectories on a re...
We present a new method for generating robust guesses for unstable periodic orbits (UPOs) by post-pr...
Distinguishing chaoticity from regularity in deterministic dynamical systems and specifying the subs...
Over the last decade a variety of new techniques for the treatment of chaotic time series has been d...
: This paper reports on the application to field measurements of time series methods developed on th...
For low-dimensional chaotic systems, we find that time correlation functions can be accurately appro...
International audienceA numerical method for detection of unstable periodic orbits on attractors of ...
A very general definition of nonlinearity in data sets can be obtained from their representation in ...
In nonlinear dynamical systems the determination of stable and unstable periodic orbits as part of p...
The treatment of noise in chaotic time series remains a challenging subject in nonlinear time series...
Time-frequency analysis is performed for chaotic flow with a power spectrum estimator based on the p...
We present methods to detect the transitions from quasiperiodic to chaotic motion via strange noncha...
THE MAIN GOAL OF THIS THESIS IS TO DEVELOP AND USE ANALYTICAL AS WELL AS NUMERICAL METHODS STUDYI...
This paper talk addresses a new signal processing method for detecting chaos in time series. This pr...
We use concepts from chaos theory in order to model nonlinear dynamical systems that exhibit determi...
This paper describes a procedure for making short term predictions by examining trajectories on a re...
We present a new method for generating robust guesses for unstable periodic orbits (UPOs) by post-pr...
Distinguishing chaoticity from regularity in deterministic dynamical systems and specifying the subs...
Over the last decade a variety of new techniques for the treatment of chaotic time series has been d...
: This paper reports on the application to field measurements of time series methods developed on th...
For low-dimensional chaotic systems, we find that time correlation functions can be accurately appro...
International audienceA numerical method for detection of unstable periodic orbits on attractors of ...
A very general definition of nonlinearity in data sets can be obtained from their representation in ...