We present a fully automated method for the optimal state space reconstruction from univariate and multivariate time series. The proposed methodology generalizes the time delay embedding procedure by unifying two promising ideas in a symbiotic fashion. Using non-uniform delays allows the successful reconstruction of systems inheriting different time scales. In contrast to the established methods, the minimization of an appropriate cost function determines the embedding dimension without using a threshold parameter. Moreover, the method is capable of detecting stochastic time series and, thus, can handle noise contaminated input without adjusting parameters. The superiority of the proposed method is shown on some paradigmatic models and expe...
High-dimensional chaos displayed by multi-component systems with a single time-delayed feedback is ...
This paper explores the overlaps between the Control community’s work on System Identification (SysI...
The prediction of a single observable time series has been achieved with varying degrees of success....
We present a fully automated method for the optimal state space reconstruction from univariate and m...
A novel idea for an optimal time delay state space reconstruction from uni- and multivariate time se...
Topologically equivalent attractor reconstruction is one of the major issues in nonlinear analysis. ...
When studying a physical phenomenon experimentally following the evolution of time, we measured and ...
The analysis of chaotic time series requires proper reconstruction of the state space from the avail...
The analysis of chaotic time series requires proper reconstruction of the state space from the avail...
summary:A new method called C-C-1 method is suggested, which can improve some drawbacks of the origi...
Abstract: We consider the problem of quality evaluation for delay reconstruction of chaoti...
We study the reconstruction of continuous chaotic attractors from noisy time-series. A method of del...
Constructing a mathematical model of a nonlinear system involves developing methods for determining ...
State space reconstruction is usually the first step of nonlinear time series analysis. Among many s...
Data from instrumented rocket motors is subjected to dynamic reconstruction by time delay embedding,...
High-dimensional chaos displayed by multi-component systems with a single time-delayed feedback is ...
This paper explores the overlaps between the Control community’s work on System Identification (SysI...
The prediction of a single observable time series has been achieved with varying degrees of success....
We present a fully automated method for the optimal state space reconstruction from univariate and m...
A novel idea for an optimal time delay state space reconstruction from uni- and multivariate time se...
Topologically equivalent attractor reconstruction is one of the major issues in nonlinear analysis. ...
When studying a physical phenomenon experimentally following the evolution of time, we measured and ...
The analysis of chaotic time series requires proper reconstruction of the state space from the avail...
The analysis of chaotic time series requires proper reconstruction of the state space from the avail...
summary:A new method called C-C-1 method is suggested, which can improve some drawbacks of the origi...
Abstract: We consider the problem of quality evaluation for delay reconstruction of chaoti...
We study the reconstruction of continuous chaotic attractors from noisy time-series. A method of del...
Constructing a mathematical model of a nonlinear system involves developing methods for determining ...
State space reconstruction is usually the first step of nonlinear time series analysis. Among many s...
Data from instrumented rocket motors is subjected to dynamic reconstruction by time delay embedding,...
High-dimensional chaos displayed by multi-component systems with a single time-delayed feedback is ...
This paper explores the overlaps between the Control community’s work on System Identification (SysI...
The prediction of a single observable time series has been achieved with varying degrees of success....