Interacting dynamical systems abound in nature, with examples ranging from biology and population dynamics, through physics and chemistry, to communications and climate. Often their states, parameters and functions are time-varying, because such systems interact with other systems and the environment, exchanging information and matter. A common problem when analysing time-series data from dynamical systems is how to determine the length of the time window for the analysis. When one needs to follow the time-variability of the dynamics, or the dynamical parameters and functions, the time window needs to be resolved first. We tackled this problem by introducing a method for adaptive determination of the time window for interacting oscillators,...
AbstractThe application of methods drawn from nonlinear and stochastic dynamics to the analysis of c...
We suggest a fresh approach to the modeling of the human cardiovascular system. Taking advantage of ...
We present a novel framework for the analysis of time series from dynamical systems which alternate ...
A new method is introduced for analysis of interactions between time-dependent coupled oscillators, ...
The usefulness of the information extracted from biomedical data relies heavily on the underlying th...
Markovian analysis is applied to derive nonlinear stochastic equations for the reconstruction of hea...
We discuss the advent of coupling functions as a new dimension in the analysis of cardiorespiratory ...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
We address the problem of interactions between the phase of cardiac and respiration oscillatory comp...
We describe an analysis of cardiac and respiratory time series recorded from 189 subjects of both ge...
Our study explored the cardiorespiratory interactions during three different ambient temperatures. W...
The recent introduction of chronotaxic systems provides the means to describe nonautonomous systems ...
This thesis investigates time series analysis tools for prediction, as well as detection and charact...
A Bayesian framework for parameter inference in non-stationary, nonlinear, stochastic, dynamical sys...
We present a novel framework for the analysis of time series from dynamical systems that alternate b...
AbstractThe application of methods drawn from nonlinear and stochastic dynamics to the analysis of c...
We suggest a fresh approach to the modeling of the human cardiovascular system. Taking advantage of ...
We present a novel framework for the analysis of time series from dynamical systems which alternate ...
A new method is introduced for analysis of interactions between time-dependent coupled oscillators, ...
The usefulness of the information extracted from biomedical data relies heavily on the underlying th...
Markovian analysis is applied to derive nonlinear stochastic equations for the reconstruction of hea...
We discuss the advent of coupling functions as a new dimension in the analysis of cardiorespiratory ...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
We address the problem of interactions between the phase of cardiac and respiration oscillatory comp...
We describe an analysis of cardiac and respiratory time series recorded from 189 subjects of both ge...
Our study explored the cardiorespiratory interactions during three different ambient temperatures. W...
The recent introduction of chronotaxic systems provides the means to describe nonautonomous systems ...
This thesis investigates time series analysis tools for prediction, as well as detection and charact...
A Bayesian framework for parameter inference in non-stationary, nonlinear, stochastic, dynamical sys...
We present a novel framework for the analysis of time series from dynamical systems that alternate b...
AbstractThe application of methods drawn from nonlinear and stochastic dynamics to the analysis of c...
We suggest a fresh approach to the modeling of the human cardiovascular system. Taking advantage of ...
We present a novel framework for the analysis of time series from dynamical systems which alternate ...