In this paper, the problem of event-triggered (ET) state estimation is studied for nonlinear non-Gaussian systems. Particle filtering (PF) state estimation approach is developed for systems with stochastic ET measurements to overcome the computational problem in minimum mean square error (MMSE) estimators in which the posterior probability function is non-Gaussian due to ET measurement information. The proposed event triggered particle filtering (ETPF) not only solves the problem of non-Gaussianity but also can handle any functional nonlinearity in the system. It is proved that particles are weighted by the predicted event-triggering (ET) probability density function in the estimator side. The application of the proposed methodology to an i...
This thesis deals with estimation of states and parameters in nonlinear and non-Gaussian dynamic sys...
In this project, first we propose a novel model-based algorithm for fault detection and isolation (F...
“Particle Filters for Random Set Models” presents coverage of state estimation of stochastic dynamic...
In this article, an event-triggered particle filtering method is presented to estimate the states of...
In this article the problem of event-triggered (ET) state estimation for autonomous navigation of an...
In this article the problem of event-triggered (ET) state estimation for autonomous navigation of an...
This paper presents a novel strategy of particle filtering for state estimation based on Generalized...
This book discusses state estimation of stochastic dynamic systems from noisy measurements, specific...
Abstract—Increasingly, for many application areas, it is becoming important to include elements of n...
The PhD thesis deals with the general model based estimation problem, which is solved here using par...
The focus of this paper is Bayesian state and parameter estimation using nonlinear models. A recentl...
In this paper, we propose a box particle filtering algorithm for state estimation in nonlinear syste...
Particle filters find important applications in the problems of state and parameter estimations of...
In a standard setup of conventional state estimation problems, the output signal of a dynamical syst...
In order to solve the tracking problem of radar maneuvering target in nonlinear system model and non...
This thesis deals with estimation of states and parameters in nonlinear and non-Gaussian dynamic sys...
In this project, first we propose a novel model-based algorithm for fault detection and isolation (F...
“Particle Filters for Random Set Models” presents coverage of state estimation of stochastic dynamic...
In this article, an event-triggered particle filtering method is presented to estimate the states of...
In this article the problem of event-triggered (ET) state estimation for autonomous navigation of an...
In this article the problem of event-triggered (ET) state estimation for autonomous navigation of an...
This paper presents a novel strategy of particle filtering for state estimation based on Generalized...
This book discusses state estimation of stochastic dynamic systems from noisy measurements, specific...
Abstract—Increasingly, for many application areas, it is becoming important to include elements of n...
The PhD thesis deals with the general model based estimation problem, which is solved here using par...
The focus of this paper is Bayesian state and parameter estimation using nonlinear models. A recentl...
In this paper, we propose a box particle filtering algorithm for state estimation in nonlinear syste...
Particle filters find important applications in the problems of state and parameter estimations of...
In a standard setup of conventional state estimation problems, the output signal of a dynamical syst...
In order to solve the tracking problem of radar maneuvering target in nonlinear system model and non...
This thesis deals with estimation of states and parameters in nonlinear and non-Gaussian dynamic sys...
In this project, first we propose a novel model-based algorithm for fault detection and isolation (F...
“Particle Filters for Random Set Models” presents coverage of state estimation of stochastic dynamic...