This paper is concerned with the optimal Kalman filtering problem for a class of discrete stochastic systems with multiplicative noises and random two-step sensor delays. Three Bernoulli distributed random variables with known conditional probabilities are introduced to characterize the phenomena of the random two-step sensor delays which may happen during the data transmission. By using the state augmentation approach and innovation analysis technique, an optimal Kalman filter is constructed for the augmented system in the sense of the minimum mean square error (MMSE). Subsequently, the optimal Kalman filtering is derived for corresponding augmented system in initial instants. Finally, a simulation example is provided to demonstrate the fe...
This paper investigates the linear minimum mean square error estimation for discrete-time Markovian ...
This paper investigates the linear minimum mean square error estimation for discrete-time Markovian ...
This paper investigates the linear minimum mean square error estimation for discrete-time Markovian ...
This paper is concerned with the optimal Kalman filtering problem for a class of discrete stochastic...
The locally optimal filter is designed for a class of discrete-time systems subject to stochastic no...
This paper focuses on the problem of Kalman filtering for Itô stochastic continuous-time systems wit...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
Optimal filtering applied to stationary and non-stationary signals provides the most efficient means...
This technical note focuses on optimal filtering for Itô stochastic continuous-time systems with mul...
The objective of this paper is concerned with the estimation problem for linear discrete-time stocha...
This thesis is concerned with a comparative study of discrete time filters using the theories of Wie...
Abstract: The paper considers: 1) the determination problem of optimal filtering and interpolation e...
This paper studies the steady-state Kalman filtering over the random delay and packet drop channel, ...
This paper deals with a robust H∞ deconvolution filtering problem for discrete-time nonlinear stocha...
This paper is concerned with the H∞ filtering for a class of networked Markovian jump systems with m...
This paper investigates the linear minimum mean square error estimation for discrete-time Markovian ...
This paper investigates the linear minimum mean square error estimation for discrete-time Markovian ...
This paper investigates the linear minimum mean square error estimation for discrete-time Markovian ...
This paper is concerned with the optimal Kalman filtering problem for a class of discrete stochastic...
The locally optimal filter is designed for a class of discrete-time systems subject to stochastic no...
This paper focuses on the problem of Kalman filtering for Itô stochastic continuous-time systems wit...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
Optimal filtering applied to stationary and non-stationary signals provides the most efficient means...
This technical note focuses on optimal filtering for Itô stochastic continuous-time systems with mul...
The objective of this paper is concerned with the estimation problem for linear discrete-time stocha...
This thesis is concerned with a comparative study of discrete time filters using the theories of Wie...
Abstract: The paper considers: 1) the determination problem of optimal filtering and interpolation e...
This paper studies the steady-state Kalman filtering over the random delay and packet drop channel, ...
This paper deals with a robust H∞ deconvolution filtering problem for discrete-time nonlinear stocha...
This paper is concerned with the H∞ filtering for a class of networked Markovian jump systems with m...
This paper investigates the linear minimum mean square error estimation for discrete-time Markovian ...
This paper investigates the linear minimum mean square error estimation for discrete-time Markovian ...
This paper investigates the linear minimum mean square error estimation for discrete-time Markovian ...