AbstractThe nonlinear filtering problem of estimating the state of a linear stochastic system from noisy observations is solved for a broad class of probability distributions of the initial state. It is shown that the conditional density of the present state, given the past observations, is a mixture of Gaussian distributions, and is parametrically determined by two sets of sufficient statistics which satisfy stochastic DEs; this result leads to a generalization of the Kalman–Bucy filter to a structure with a conditional mean vector, and additional sufficient statistics that obey nonlinear equations, and determine a generalized (random) Kalman gain. The theory is used to solve explicitly a control problem with quadratic running and terminal...
This thesis is on filtering in state space models. First, we examine approximate Kalman filters for ...
This paper studies the problem of recursive state estimation of stochastic linear systems with nonli...
This paper studies the problem of recursive state estimation of stochastic linear systems with nonli...
rA I c~t A new approximation technique to a certain class of nonlinear filtering problems is conside...
An application of the theory of conditionally Gaussian random processes to filtering and stochastic ...
We consider a discrete-time linear system with correlated Gaussian plant and observation noises and ...
In this paper we develop and analyze real-time and accurate filters for nonlinear filtering problems...
Graduation date: 1983A new approximation technique to a certain class of nonlinear\ud filtering prob...
Graduation date: 1981An application of the theory of conditionally Gaussian random\ud processes to f...
We deal with nonlinear dynamical systems, consisting of a linear nominal part plus model uncertainti...
AbstractLet dx = g(x, u, t) dt + dz be a general dynamical system with control u and where z is Brow...
This paper deals with the optimal filtering and optimal output-feedback control of discrete-time, li...
AbstractLet dx = g(x, u, t) dt + dz be a general dynamical system with control u and where z is Brow...
The conditional probability density function of the state of a stochastic dynamic system represents ...
The problem of linear dynamic estimation, its solution as developed by Kalman and Bucy, and interpre...
This thesis is on filtering in state space models. First, we examine approximate Kalman filters for ...
This paper studies the problem of recursive state estimation of stochastic linear systems with nonli...
This paper studies the problem of recursive state estimation of stochastic linear systems with nonli...
rA I c~t A new approximation technique to a certain class of nonlinear filtering problems is conside...
An application of the theory of conditionally Gaussian random processes to filtering and stochastic ...
We consider a discrete-time linear system with correlated Gaussian plant and observation noises and ...
In this paper we develop and analyze real-time and accurate filters for nonlinear filtering problems...
Graduation date: 1983A new approximation technique to a certain class of nonlinear\ud filtering prob...
Graduation date: 1981An application of the theory of conditionally Gaussian random\ud processes to f...
We deal with nonlinear dynamical systems, consisting of a linear nominal part plus model uncertainti...
AbstractLet dx = g(x, u, t) dt + dz be a general dynamical system with control u and where z is Brow...
This paper deals with the optimal filtering and optimal output-feedback control of discrete-time, li...
AbstractLet dx = g(x, u, t) dt + dz be a general dynamical system with control u and where z is Brow...
The conditional probability density function of the state of a stochastic dynamic system represents ...
The problem of linear dynamic estimation, its solution as developed by Kalman and Bucy, and interpre...
This thesis is on filtering in state space models. First, we examine approximate Kalman filters for ...
This paper studies the problem of recursive state estimation of stochastic linear systems with nonli...
This paper studies the problem of recursive state estimation of stochastic linear systems with nonli...