The focus of this paper is Bayesian state and parameter estimation using nonlinear models. A recently developed method, the particle filter, is studied that is based on stochastic simulation. Unlike the well-known extended Kalman filter, the particle filter is applicable to highly nonlinear models with non-Gaussian uncertainties. Recently developed techniques that improve the convergence of the particle filter simulations are introduced and discussed. Comparisons between the particle filter and the extended Kalman filter are made using several numerical examples of nonlinear systems. The results indicate that the particle filter provides consistent state and parameter estimates for highly nonlinear models, while the extended Kalman fil...
AbstractFor nonlinear state space models to resolve the state estimation problem is difficult or the...
This book discusses state estimation of stochastic dynamic systems from noisy measurements, specific...
In this paper we present a general description of state estimation problems within the Bayesian fram...
The focus of this report is real-time Bayesian state estimation using nonlinear models. A recently d...
This study presents a numerical comparison of three filtering techniques for a nonlinear state estim...
For the state estimation problem, Bayesian approach provides the most general formulation. However, ...
A recently proposed general Bayesian inference framework (Bisaillon, Sandhu, Khalil, Poirel,& Sarkar...
The PhD thesis deals with the general model based estimation problem, which is solved here using par...
This thesis deals with estimation of states and parameters in nonlinear and non-Gaussian dynamic sys...
ABSTRACT. Combined state and parameter estimation of dynamical systems plays a cru-cial role in extr...
Particle filters find important applications in the problems of state and parameter estimations of...
The focus of this paper is to demonstrate the application of a recently developed Bayesian state es...
In principle, general approaches to optimal nonlinear filtering can be described in a unified way fr...
Generally, in most applied fields, the dynamic state space models are of nonlinearity with non-Gauss...
This article discusses a partially adapted particle filter for estimating the likelihood of nonlinea...
AbstractFor nonlinear state space models to resolve the state estimation problem is difficult or the...
This book discusses state estimation of stochastic dynamic systems from noisy measurements, specific...
In this paper we present a general description of state estimation problems within the Bayesian fram...
The focus of this report is real-time Bayesian state estimation using nonlinear models. A recently d...
This study presents a numerical comparison of three filtering techniques for a nonlinear state estim...
For the state estimation problem, Bayesian approach provides the most general formulation. However, ...
A recently proposed general Bayesian inference framework (Bisaillon, Sandhu, Khalil, Poirel,& Sarkar...
The PhD thesis deals with the general model based estimation problem, which is solved here using par...
This thesis deals with estimation of states and parameters in nonlinear and non-Gaussian dynamic sys...
ABSTRACT. Combined state and parameter estimation of dynamical systems plays a cru-cial role in extr...
Particle filters find important applications in the problems of state and parameter estimations of...
The focus of this paper is to demonstrate the application of a recently developed Bayesian state es...
In principle, general approaches to optimal nonlinear filtering can be described in a unified way fr...
Generally, in most applied fields, the dynamic state space models are of nonlinearity with non-Gauss...
This article discusses a partially adapted particle filter for estimating the likelihood of nonlinea...
AbstractFor nonlinear state space models to resolve the state estimation problem is difficult or the...
This book discusses state estimation of stochastic dynamic systems from noisy measurements, specific...
In this paper we present a general description of state estimation problems within the Bayesian fram...