Abstract: State filters can be used to produce online estimates of the state of a process. If an exact model for the true process is not known, but multiple candidate models are available to describe the current behavior of the true system, it is necessary to select that model that leads to the optimal state estimates. This paper describes a novel approach for model selection for state estimation by comparing the expected weighted prediction error using estimated states of different candidate models. The expected prediction error can not be computed exactly, but can be estimated using a newly derived generalized version of the FPE selection criterion. A simulation example of a time varying system is used to illustrate the performance of the...
This paper presents a mathematical framework for state estimation of dynamic systems for which only ...
International audienceA novel approach to the partial state estimation problem is proposed. Instrume...
In this paper, we apply a Bayesian model selection and parameter estimation scheme for a stochastic ...
This paper is concerned with the model selection and model averaging problems in system identificati...
Nonlinear filtering is of great importance in many applied areas. As a typical nonlinear filtering a...
In this paper we continue to explore identification of nonlinear systems using the previously propos...
variable selection State space models are a widely used tool in time series analysis to deal with pr...
In most solutions to state estimation problems like, for example target tracking, it is generally as...
This paper is concerned with the parameter estimation of a general class of nonlinear dynamic system...
This paper is concerned with the parameter estimation of a general class of nonlinear dynamic system...
A supervisory observer is a multiple-model architecture, which estimates the parameters and the stat...
The identification of non-linear systems using only observed finite datasets has become a mature res...
A State Estimation NLQDMC algorithm is presented for use with nonlinear input-output models. The pro...
In this paper, a comparison between two models for nonlinear systems is made. Both models have a sta...
In this paper, we propose an iterative algorithm to perform model selection. This algorithm is a seq...
This paper presents a mathematical framework for state estimation of dynamic systems for which only ...
International audienceA novel approach to the partial state estimation problem is proposed. Instrume...
In this paper, we apply a Bayesian model selection and parameter estimation scheme for a stochastic ...
This paper is concerned with the model selection and model averaging problems in system identificati...
Nonlinear filtering is of great importance in many applied areas. As a typical nonlinear filtering a...
In this paper we continue to explore identification of nonlinear systems using the previously propos...
variable selection State space models are a widely used tool in time series analysis to deal with pr...
In most solutions to state estimation problems like, for example target tracking, it is generally as...
This paper is concerned with the parameter estimation of a general class of nonlinear dynamic system...
This paper is concerned with the parameter estimation of a general class of nonlinear dynamic system...
A supervisory observer is a multiple-model architecture, which estimates the parameters and the stat...
The identification of non-linear systems using only observed finite datasets has become a mature res...
A State Estimation NLQDMC algorithm is presented for use with nonlinear input-output models. The pro...
In this paper, a comparison between two models for nonlinear systems is made. Both models have a sta...
In this paper, we propose an iterative algorithm to perform model selection. This algorithm is a seq...
This paper presents a mathematical framework for state estimation of dynamic systems for which only ...
International audienceA novel approach to the partial state estimation problem is proposed. Instrume...
In this paper, we apply a Bayesian model selection and parameter estimation scheme for a stochastic ...