A new extended stochastic Rayleigh quotient estimation theory is developed for the identification of the unknown feedback matrix and nonlinear function parameters of a proposed multivariable plant. Systems tractable to this approach encompass a wide class of nonlinear closed-loop time-variant control models that are observed at two localities in a statistically-known white Gaussian noisy environment. Phases of the estimation problem via a partitioning frame technique are given that yield pragmatical computable solutions. An optimal modified-predictor—corrector maximum-likelihood scheme is delineated for solving the state estimation problem, and its invariance to a priori statistics is investigated. In addition, this article presents the ana...
This work presents novel techniques for state estimation of nonlinear stochastic systems, specifical...
The first part of the paper examines the asymptotic properties of linear prediction error method est...
In a major breakthrough, Guo and Chen [1] have recently shown how to establish the self--optimality ...
A new extended stochastic Rayleigh quotient estimation theory is developed for the identification of...
The paper outlines how improved estimates of time variable parameters in models of stochastic dynami...
In this paper a complete presentation is given of a new canonical representation of multi-input, mul...
Very preliminary draft: comments welcome, please do not quote without permission of authors. We prop...
This thesis examines the basic asymptotic properties of various stochastic adaptive systems for iden...
This thesis is about parameter estimation and control of time-varying stochastic systems. It can be ...
This dissertation consists of four parts that revolve around structured stochastic uncertainty and o...
The convergence properties of a very general class of adaptive recursive algorithms for the identifi...
AbstractThe nonlinear filtering problem of estimating the state of a linear stochastic system from n...
This thesis deals with estimation of states and parameters in nonlinear and non-Gaussian dynamic sys...
The general theory of stochastic optimal control is based on determining a control which minimizes a...
Graduation date: 1983The problem of optimization of stochastic dynamic systems with\ud random coeffi...
This work presents novel techniques for state estimation of nonlinear stochastic systems, specifical...
The first part of the paper examines the asymptotic properties of linear prediction error method est...
In a major breakthrough, Guo and Chen [1] have recently shown how to establish the self--optimality ...
A new extended stochastic Rayleigh quotient estimation theory is developed for the identification of...
The paper outlines how improved estimates of time variable parameters in models of stochastic dynami...
In this paper a complete presentation is given of a new canonical representation of multi-input, mul...
Very preliminary draft: comments welcome, please do not quote without permission of authors. We prop...
This thesis examines the basic asymptotic properties of various stochastic adaptive systems for iden...
This thesis is about parameter estimation and control of time-varying stochastic systems. It can be ...
This dissertation consists of four parts that revolve around structured stochastic uncertainty and o...
The convergence properties of a very general class of adaptive recursive algorithms for the identifi...
AbstractThe nonlinear filtering problem of estimating the state of a linear stochastic system from n...
This thesis deals with estimation of states and parameters in nonlinear and non-Gaussian dynamic sys...
The general theory of stochastic optimal control is based on determining a control which minimizes a...
Graduation date: 1983The problem of optimization of stochastic dynamic systems with\ud random coeffi...
This work presents novel techniques for state estimation of nonlinear stochastic systems, specifical...
The first part of the paper examines the asymptotic properties of linear prediction error method est...
In a major breakthrough, Guo and Chen [1] have recently shown how to establish the self--optimality ...