The estimation problem for stochastic parametric nonlinear dynamical models is recognized to be challenging. The main difficulty is the intractability of the likelihood function and the optimal one-step ahead predictor. In this paper, we present relatively simple prediction error methods based on non-stationary predictors that are linear in the outputs. They can be seen as extensions of the linear identification methods for the case where the hypothesized model is stochastic and nonlinear. The resulting estimators are defined by analytically tractable objective functions in several common cases. It is shown that, under certain identifiability and standard regularity conditions, the estimators are consistent and asymptotically normal. We dis...
The issues of identification and estimation of nonlinear errors-in-variables models are explored. Th...
The paper outlines how improved estimates of time variable parameters in models of stochastic dynami...
Stochastic nonlinear systems are a specific class of nonlinear systems where unknown disturbances af...
The estimation problem for stochastic parametric nonlinear dynamical models is recognized to be chal...
The first part of the paper examines the asymptotic properties of linear prediction error method est...
The estimation problem of stochastic nonlinear parametric models is recognized to be very challengin...
Identifcation of dynamic networks has attracted considerable interest recently. So far the main focu...
Abstract Parametric identification of linear time-invariant (LTI) systems with output-error (OE) typ...
Nonlinear stochastic parametric models are widely used in various fields. However, for these models,...
SIGLEAvailable from British Library Document Supply Centre- DSC:6015.42F(N--87-17471)(microfiche) / ...
Solution of stochastic nonlinear identification problem is proposed. An algorithm of discrete observ...
When both input and output data are contaminated by non-skewed and~or correlated (perhaps colored) G...
A novel Bayesian paradigm to identification of output error models has been recently proposed where,...
The estimation problem of stochastic Wiener-Hammerstein models is recognized to be challenging, main...
The recent Predictive Linear Gaussian model (or PLG) improves upon traditional linear dynamical syst...
The issues of identification and estimation of nonlinear errors-in-variables models are explored. Th...
The paper outlines how improved estimates of time variable parameters in models of stochastic dynami...
Stochastic nonlinear systems are a specific class of nonlinear systems where unknown disturbances af...
The estimation problem for stochastic parametric nonlinear dynamical models is recognized to be chal...
The first part of the paper examines the asymptotic properties of linear prediction error method est...
The estimation problem of stochastic nonlinear parametric models is recognized to be very challengin...
Identifcation of dynamic networks has attracted considerable interest recently. So far the main focu...
Abstract Parametric identification of linear time-invariant (LTI) systems with output-error (OE) typ...
Nonlinear stochastic parametric models are widely used in various fields. However, for these models,...
SIGLEAvailable from British Library Document Supply Centre- DSC:6015.42F(N--87-17471)(microfiche) / ...
Solution of stochastic nonlinear identification problem is proposed. An algorithm of discrete observ...
When both input and output data are contaminated by non-skewed and~or correlated (perhaps colored) G...
A novel Bayesian paradigm to identification of output error models has been recently proposed where,...
The estimation problem of stochastic Wiener-Hammerstein models is recognized to be challenging, main...
The recent Predictive Linear Gaussian model (or PLG) improves upon traditional linear dynamical syst...
The issues of identification and estimation of nonlinear errors-in-variables models are explored. Th...
The paper outlines how improved estimates of time variable parameters in models of stochastic dynami...
Stochastic nonlinear systems are a specific class of nonlinear systems where unknown disturbances af...