An attempt is made in this study to estimate the noise level present in a chaotic time series. This is achieved by employing a linear least-squares method that is based on the correlation integral form obtained by Diks in 1999. The effectiveness of the method is demonstrated using five artificial chaotic time series, the H́non map, the Lorenz equation, the Duffing equation, the Rossler equation and the Chua's circuit whose dynamical characteristics are known a priori. Different levels of noise are added to the artificial chaotic time series and the estimated results indicate good performance of the proposed method. Finally, the proposed method is applied to estimate the noise level present in some real world data sets. © 2008 American Insti...
This paper investigates the identification of global models from chaotic data corrupted by purely ad...
Many systems in the natural world exhibit chaos or non-linear behavior, the complexity of which is s...
We discuss abilities of quantifying low-dimensional chaotic oscillations at the input of two thresho...
In this study, the correlation sum and the correlation integral for chaotic time series using the Su...
The treatment of noise in chaotic time series remains a challenging subject in nonlinear time series...
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...
Short-term prediction of hydrological time series using chaotic dynamical systems approach is gainin...
We propose an algorithm for the reduction of observational noise in chaotic multivariate time series...
We present a noise-filtering scheme which works on a chaotic signal containing a certain level of no...
The aim of this study is to evaluate the filtering techniques which can remove the noise involved in...
Distinguishing low-dimensional chaos from noise is an important issue in time series analysis. Among...
We present an adaptation of the standard Grassberger-Proccacia (GP) algorithm for estimating the cor...
A method of estimating the Kolmogorov-Sinai (KS) entropy, herein referred to as the modified correla...
In this paper we consider the problem of estimating the parameters of a nonlinear dynamical system g...
This paper investigates the identification of global models from chaotic data corrupted by purely ad...
Many systems in the natural world exhibit chaos or non-linear behavior, the complexity of which is s...
We discuss abilities of quantifying low-dimensional chaotic oscillations at the input of two thresho...
In this study, the correlation sum and the correlation integral for chaotic time series using the Su...
The treatment of noise in chaotic time series remains a challenging subject in nonlinear time series...
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...
Short-term prediction of hydrological time series using chaotic dynamical systems approach is gainin...
We propose an algorithm for the reduction of observational noise in chaotic multivariate time series...
We present a noise-filtering scheme which works on a chaotic signal containing a certain level of no...
The aim of this study is to evaluate the filtering techniques which can remove the noise involved in...
Distinguishing low-dimensional chaos from noise is an important issue in time series analysis. Among...
We present an adaptation of the standard Grassberger-Proccacia (GP) algorithm for estimating the cor...
A method of estimating the Kolmogorov-Sinai (KS) entropy, herein referred to as the modified correla...
In this paper we consider the problem of estimating the parameters of a nonlinear dynamical system g...
This paper investigates the identification of global models from chaotic data corrupted by purely ad...
Many systems in the natural world exhibit chaos or non-linear behavior, the complexity of which is s...
We discuss abilities of quantifying low-dimensional chaotic oscillations at the input of two thresho...