AbstractThe identification problems, i.e., the problems of finding unknown parameters in distributed systems from the observations are very important in modern control theory. The solutions of these identification problems can be obtained by solving the equations of the first kind. However, the solutions are often unstable. In other words, they are not continuously dependent on the data. The regularization or Tihonov's regularization is known as one of the stabilizing algorithms to solve these non well-posed problems. In this paper is studied the regularization method for identification of distributed systems. Several approximation theorems are proved to solve the equations of the first kind. Then, identification problems are reduced to the...
Knowledge about the input–output relations of a system can be very important in many practical situa...
This open access book provides a comprehensive treatment of recent developments in kernel-based iden...
The straightforward solution of discrete ill-posed linear systems of equations or least-squares prob...
AbstractThe identification problems, i.e., the problems of finding unknown parameters in distributed...
Identification of spatially varying parameters in distributed parameter systems from noisy data is a...
AbstractThe theory of identification of variable coefficients in parabolic distributed parameter sys...
This report deals with the problem of guaranteed estimation of the state of a distri-buted system on...
This thesis considers the parameter identification problem for systems governed by partial different...
The problem of identifying spatially-varying parameters in distributed parameter systems arises in t...
Regularization is a standard statistical technique to deal with ill-conditioned parameter estimation...
AbstractA class of nonlinear least squares identification algorithms for distributed parameter syste...
In subspace methods for system identification, the system matrices are usually estimated by least sq...
ABSTRACT 9 We present a theoretical framework that can be used to treat approximation techniques for...
Finite-sample system identification (FSID) methods infer properties of stochastic dynamical systems ...
This paper gives an introduction to the theory of parameter identification and state estimation for ...
Knowledge about the input–output relations of a system can be very important in many practical situa...
This open access book provides a comprehensive treatment of recent developments in kernel-based iden...
The straightforward solution of discrete ill-posed linear systems of equations or least-squares prob...
AbstractThe identification problems, i.e., the problems of finding unknown parameters in distributed...
Identification of spatially varying parameters in distributed parameter systems from noisy data is a...
AbstractThe theory of identification of variable coefficients in parabolic distributed parameter sys...
This report deals with the problem of guaranteed estimation of the state of a distri-buted system on...
This thesis considers the parameter identification problem for systems governed by partial different...
The problem of identifying spatially-varying parameters in distributed parameter systems arises in t...
Regularization is a standard statistical technique to deal with ill-conditioned parameter estimation...
AbstractA class of nonlinear least squares identification algorithms for distributed parameter syste...
In subspace methods for system identification, the system matrices are usually estimated by least sq...
ABSTRACT 9 We present a theoretical framework that can be used to treat approximation techniques for...
Finite-sample system identification (FSID) methods infer properties of stochastic dynamical systems ...
This paper gives an introduction to the theory of parameter identification and state estimation for ...
Knowledge about the input–output relations of a system can be very important in many practical situa...
This open access book provides a comprehensive treatment of recent developments in kernel-based iden...
The straightforward solution of discrete ill-posed linear systems of equations or least-squares prob...