In this thesis two probabilistic model-based estimators are introduced that allow the reconstruction and identification of space-time continuous physical systems. The Sliced Gaussian Mixture Filter (SGMF) exploits linear substructures in mixed linear/nonlinear systems, and thus is well-suited for identifying various model parameters. The Covariance Bounds Filter (CBF) allows the efficient estimation of widely distributed systems in a decentralized fashion
We present a novel algorithm for concurrent model state and parameter estimation in nonlinear dynami...
The Probability Hypothesis Density (PHD) filter is a multiple-target filter for recursively estimati...
This paper presents a framework for simultaneous estimation and modeling of nonlinear, non-Gaussian ...
In this thesis two probabilistic model-based estimators are introduced that allow the reconstruction...
This paper presents a method for the simultaneous state and parameter estimation of finite-dimension...
Many problems in science and engineering involve estimating a dynamic signal from indirect measureme...
A primary challenge for the reconstruction of continuous-time, continuous-amplitude distributed para...
Continuous-discrete state space models, Stochastic differential equations, Itô calculus, Sampling, K...
This work presents a novel constrained Bayesian state estimation approach for nonlinear dynamical sy...
An approximate nonlinear estimation method for continuous-time systems with discrete-time measuremen...
This thesis is concerned with estimation and control of linear distributed parameter systems. For t...
This paper addresses the efficient state estimation for mixed linear/nonlinear dynamic systems with ...
This thesis deals with estimation of states and parameters in nonlinear and non-Gaussian dynamic sys...
State estimation techniques for centralized, distributed, and decentralized systems are studied. An ...
UnrestrictedIn this dissertation, we first established a mathematical framework for approximation of...
We present a novel algorithm for concurrent model state and parameter estimation in nonlinear dynami...
The Probability Hypothesis Density (PHD) filter is a multiple-target filter for recursively estimati...
This paper presents a framework for simultaneous estimation and modeling of nonlinear, non-Gaussian ...
In this thesis two probabilistic model-based estimators are introduced that allow the reconstruction...
This paper presents a method for the simultaneous state and parameter estimation of finite-dimension...
Many problems in science and engineering involve estimating a dynamic signal from indirect measureme...
A primary challenge for the reconstruction of continuous-time, continuous-amplitude distributed para...
Continuous-discrete state space models, Stochastic differential equations, Itô calculus, Sampling, K...
This work presents a novel constrained Bayesian state estimation approach for nonlinear dynamical sy...
An approximate nonlinear estimation method for continuous-time systems with discrete-time measuremen...
This thesis is concerned with estimation and control of linear distributed parameter systems. For t...
This paper addresses the efficient state estimation for mixed linear/nonlinear dynamic systems with ...
This thesis deals with estimation of states and parameters in nonlinear and non-Gaussian dynamic sys...
State estimation techniques for centralized, distributed, and decentralized systems are studied. An ...
UnrestrictedIn this dissertation, we first established a mathematical framework for approximation of...
We present a novel algorithm for concurrent model state and parameter estimation in nonlinear dynami...
The Probability Hypothesis Density (PHD) filter is a multiple-target filter for recursively estimati...
This paper presents a framework for simultaneous estimation and modeling of nonlinear, non-Gaussian ...