Transferring information from observations to models of complex systems may meet impediments when the number of observations at any observation time is not sufficient. This is especially so when chaotic behavior is expressed. We show how to use time-delay embedding, familiar from nonlinear dynamics, to provide the information required to obtain accurate state and parameter estimates. Good estimates of parameters and unobserved states are necessary for good predictions of the future state of a model system. This method may be critical in allowing the understanding of prediction in complex systems as varied as nervous systems and weather prediction where insufficient measurements are typical
This paper addresses the data-driven identification of latent representations of partially observed ...
Novel nonlinear predictors are studied for nonlinear systems with delayed measurements without assum...
We present a forecasting technique for chaotic data. After embedding a time series in a state space ...
Transferring information from observations to models of complex systems may meet impediments when th...
Limited literature regarding parameter estimation of dynamic systems has been identified as the cent...
Limited literature regarding parameter estimation of dynamic systems has been identified as the cent...
Limited literature regarding parameter estimation of dynamic systems has been identified as the cent...
Parameter estimation in nonlinear models is a common task, and one for which there is no general sol...
Parameter estimation in nonlinear models is a common task, and one for which there is no general sol...
Information in measurements of a nonlinear dynamical system can be transferred to a quantitative mod...
The problem of state estimation for nonlinear systems with unknown state delays is still an open pro...
In this paper, we consider the problem of state estimation for nonlinear systems when the ou...
We address the problem of constructing (globally) convergent, (reduced-order) observers for general ...
We address the problem of constructing (globally) convergent, (reduced-order) observers for general ...
This thesis is concerned with the problem of state and parameter estimation in nonlinear systems. Th...
This paper addresses the data-driven identification of latent representations of partially observed ...
Novel nonlinear predictors are studied for nonlinear systems with delayed measurements without assum...
We present a forecasting technique for chaotic data. After embedding a time series in a state space ...
Transferring information from observations to models of complex systems may meet impediments when th...
Limited literature regarding parameter estimation of dynamic systems has been identified as the cent...
Limited literature regarding parameter estimation of dynamic systems has been identified as the cent...
Limited literature regarding parameter estimation of dynamic systems has been identified as the cent...
Parameter estimation in nonlinear models is a common task, and one for which there is no general sol...
Parameter estimation in nonlinear models is a common task, and one for which there is no general sol...
Information in measurements of a nonlinear dynamical system can be transferred to a quantitative mod...
The problem of state estimation for nonlinear systems with unknown state delays is still an open pro...
In this paper, we consider the problem of state estimation for nonlinear systems when the ou...
We address the problem of constructing (globally) convergent, (reduced-order) observers for general ...
We address the problem of constructing (globally) convergent, (reduced-order) observers for general ...
This thesis is concerned with the problem of state and parameter estimation in nonlinear systems. Th...
This paper addresses the data-driven identification of latent representations of partially observed ...
Novel nonlinear predictors are studied for nonlinear systems with delayed measurements without assum...
We present a forecasting technique for chaotic data. After embedding a time series in a state space ...