Distinguishing low-dimensional chaos from noise is an important issue in time series analysis. Among the many methods proposed for this purpose is the noise titration technique, which quantifies the amount of noise that needs to be added to the signal to fully destroy its nonlinearity. Two groups of researchers recently have questioned the validity of the technique. In this paper, we report a broad range of situations where the noise titration technique fails, and offer solutions to fix the problems identified
This paper talk addresses a new signal processing method for detecting chaos in time series. This pr...
We present a noise-filtering scheme which works on a chaotic signal containing a certain level of no...
An attempt is made in this study to estimate the noise level present in a chaotic time series. This ...
We propose a new method for detecting low-dimensional chaotic time series when there is dynamical no...
Over the last decade a variety of new techniques for the treatment of chaotic time series has been d...
One of the truly novel issues in the physics of the last decade is that some time series considered ...
The treatment of noise in chaotic time series remains a challenging subject in nonlinear time series...
In this study, the correlation sum and the correlation integral for chaotic time series using the Su...
A reliable and efficient method to distinguish between chaotic and non-chaotic behaviour in noise-co...
The 0-1 test is a novel test that has been recently suggested to detect low-dimensional chaos in tim...
A new method for detecting low dimensional chaos in small sample sets is presented. The method is ap...
We present a direct and dynamical method to distinguish low-dimensional deterministic chaos from noi...
This letter reports on a new method of analysing experimentally gained time series with respect to d...
We introduce an algorithm for nonlinear noise reduction which is based on locally linear fits to the...
The aim of the papers is to study the effect of noise reduction, carried out using the nearest neigh...
This paper talk addresses a new signal processing method for detecting chaos in time series. This pr...
We present a noise-filtering scheme which works on a chaotic signal containing a certain level of no...
An attempt is made in this study to estimate the noise level present in a chaotic time series. This ...
We propose a new method for detecting low-dimensional chaotic time series when there is dynamical no...
Over the last decade a variety of new techniques for the treatment of chaotic time series has been d...
One of the truly novel issues in the physics of the last decade is that some time series considered ...
The treatment of noise in chaotic time series remains a challenging subject in nonlinear time series...
In this study, the correlation sum and the correlation integral for chaotic time series using the Su...
A reliable and efficient method to distinguish between chaotic and non-chaotic behaviour in noise-co...
The 0-1 test is a novel test that has been recently suggested to detect low-dimensional chaos in tim...
A new method for detecting low dimensional chaos in small sample sets is presented. The method is ap...
We present a direct and dynamical method to distinguish low-dimensional deterministic chaos from noi...
This letter reports on a new method of analysing experimentally gained time series with respect to d...
We introduce an algorithm for nonlinear noise reduction which is based on locally linear fits to the...
The aim of the papers is to study the effect of noise reduction, carried out using the nearest neigh...
This paper talk addresses a new signal processing method for detecting chaos in time series. This pr...
We present a noise-filtering scheme which works on a chaotic signal containing a certain level of no...
An attempt is made in this study to estimate the noise level present in a chaotic time series. This ...