Impoverishment of particles, i.e. the discretely simulated sample paths of the process dynamics, poses a major obstacle in employing the particle filters for large dimensional nonlinear system identification. A known route of alleviating this impoverishment, i.e. of using an exponentially increasing ensemble size vis-a-vis the system dimension, remains computationally infeasible in most cases of practical importance. In this work, we explore the possibility of unscented transformation on Gaussian random variables, as incorporated within a scaled Gaussian sum stochastic filter, as a means of applying the nonlinear stochastic filtering theory to higher dimensional structural system identification problems. As an additional strategy to reconci...
This work presents a novel constrained Bayesian state estimation approach for nonlinear dynamical sy...
A Monte Carlo filter, based on the idea of averaging over characteristics and fashioned after a part...
State or signal estimation of stochastic systems based on measurement data is an important problem i...
Impoverishment of particles, i.e. the discretely simulated sample paths of the process dynamics, pos...
Impoverishment of particles, i.e. the discretely simulated sample paths of the process dynamics, pos...
Impoverishment of particles, i.e. the discretely simulated sample paths of the process dynamics, pos...
A nonlinear stochastic filtering scheme based on a Gaussian sum representation of the filtering dens...
Using a Girsanov change of measures, we propose novel variations within a particle-filtering algorit...
In this work we consider the state estimation problem in nonlinear/non-Gaussian systems. We introduc...
In this work we consider the state estimation problem in nonlinear/non-Gaussian systems. We introduc...
This thesis essentially deals with the development and numerical explorations of a few improved Mont...
Development of dynamic state estimation techniques and their applications in problems of identificat...
This work studies the problem of stochastic dynamic filtering and state propagation with complex bel...
We propose a novel form of nonlinear stochastic filtering based on an iterative evaluation of a Kalm...
We propose a novel form of nonlinear stochastic filtering based on an iterative evaluation of a Kalm...
This work presents a novel constrained Bayesian state estimation approach for nonlinear dynamical sy...
A Monte Carlo filter, based on the idea of averaging over characteristics and fashioned after a part...
State or signal estimation of stochastic systems based on measurement data is an important problem i...
Impoverishment of particles, i.e. the discretely simulated sample paths of the process dynamics, pos...
Impoverishment of particles, i.e. the discretely simulated sample paths of the process dynamics, pos...
Impoverishment of particles, i.e. the discretely simulated sample paths of the process dynamics, pos...
A nonlinear stochastic filtering scheme based on a Gaussian sum representation of the filtering dens...
Using a Girsanov change of measures, we propose novel variations within a particle-filtering algorit...
In this work we consider the state estimation problem in nonlinear/non-Gaussian systems. We introduc...
In this work we consider the state estimation problem in nonlinear/non-Gaussian systems. We introduc...
This thesis essentially deals with the development and numerical explorations of a few improved Mont...
Development of dynamic state estimation techniques and their applications in problems of identificat...
This work studies the problem of stochastic dynamic filtering and state propagation with complex bel...
We propose a novel form of nonlinear stochastic filtering based on an iterative evaluation of a Kalm...
We propose a novel form of nonlinear stochastic filtering based on an iterative evaluation of a Kalm...
This work presents a novel constrained Bayesian state estimation approach for nonlinear dynamical sy...
A Monte Carlo filter, based on the idea of averaging over characteristics and fashioned after a part...
State or signal estimation of stochastic systems based on measurement data is an important problem i...