This paper addresses the problem of how one can improve the performance of a non-optimal filter. First the theoretical question on dynamical representation for a given time correlated random process is studied. It will be demonstrated that for a wide class of random processes, having a canonical form, there exists a dynamical system equivalent in the sense that its output has the same covariance function. It is shown that the dynamical approach is more effective for simulating and estimating a Markov and non- Markovian random processes, computationally is less demanding, especially with increasing of the dimension of simulated processes. Numerical examples and estimation problems in low dimensional systems are given to illustrate the advant...
A discrete state and time Markov chain is observed through a finite state function which is subject ...
This work is devoted to analyzing adaptive filtering algorithms with the use of sign-regressor for r...
Introduction. Adaptive statistical prediction of a random process is relevant to a noise compensatio...
This paper addresses the problem of how one can improve the performance of a non-optimal filter. Fir...
In Chapter 2, we consider a limited-memory multiple shooting method for weakly constrained variation...
This thesis examines the basic asymptotic properties of various stochastic adaptive systems for iden...
Abstract. The problem of recursive estimation of a state of dynamic systems in the presence of time-...
In this paper, we develop finite-time horizon causal filters for general processes taking values in ...
In this contribution, the problem of data assimilation as state estimation for dynamical systems und...
Filtering and prediction is about observing moving objects when the observations are corrupted by ra...
The thesis focuses on filtering and prediction of discrete time processes. We begin by introducing t...
This work is devoted to analyzing adaptive filtering algorithms with the use of sign-regressor for ra...
This letter presents a new class of discrete-time linear stochastic systems with the statistically-c...
Problems of nonparametric filtering arises frequently in engineering and financial economics. Nonpar...
In this paper, the adaptive filtering theory, recently proposed and developed the authors of present...
A discrete state and time Markov chain is observed through a finite state function which is subject ...
This work is devoted to analyzing adaptive filtering algorithms with the use of sign-regressor for r...
Introduction. Adaptive statistical prediction of a random process is relevant to a noise compensatio...
This paper addresses the problem of how one can improve the performance of a non-optimal filter. Fir...
In Chapter 2, we consider a limited-memory multiple shooting method for weakly constrained variation...
This thesis examines the basic asymptotic properties of various stochastic adaptive systems for iden...
Abstract. The problem of recursive estimation of a state of dynamic systems in the presence of time-...
In this paper, we develop finite-time horizon causal filters for general processes taking values in ...
In this contribution, the problem of data assimilation as state estimation for dynamical systems und...
Filtering and prediction is about observing moving objects when the observations are corrupted by ra...
The thesis focuses on filtering and prediction of discrete time processes. We begin by introducing t...
This work is devoted to analyzing adaptive filtering algorithms with the use of sign-regressor for ra...
This letter presents a new class of discrete-time linear stochastic systems with the statistically-c...
Problems of nonparametric filtering arises frequently in engineering and financial economics. Nonpar...
In this paper, the adaptive filtering theory, recently proposed and developed the authors of present...
A discrete state and time Markov chain is observed through a finite state function which is subject ...
This work is devoted to analyzing adaptive filtering algorithms with the use of sign-regressor for r...
Introduction. Adaptive statistical prediction of a random process is relevant to a noise compensatio...