In this paper two algorithms for the solution of nonlinear ill-posed problems with simple bounds on the variables are presented. The proposed algorithms are bound-constraint versions of the iteratively regularized Gauss-Newton method. The numerical performances of the algorithms are studied by means of simulations concerning the retrieval of molecular concentrations from limb sounding observations. For these examples, the unconstrained algorithm leads to unreasonable solutions
Nonlinear least-squares problems appear in many real-world applications. When a nonlinear model is u...
The paper presents a solution for efficiently and accurately solving separable least squares problem...
Abstract. The iteratively regularized Gauss-Newton method is applied to compute the stable solutions...
In this paper we present a retrieval algorithm for atmospheric remote sensing. The algorithm combine...
In this paper we present an inversion algorithm for nonlinear ill--posed problems arising in atmosph...
The iteratively regularized Gauss-Newton algorithm with simple bounds on the variables is extended t...
In this paper we present different inversion algorithms for nonlinear ill-posed problems arising in ...
In this chapter we present the basic concepts of numerical regularization theory. We analyze direct ...
In this paper we present a retrieval algorithm for atmospheric remote sensing. The algorithm combine...
In this paper we deal with regularization procedures for the nonlinear inverse problem of atmospheri...
In this study, we present an error analysis for Tikhonov regularization in a semi-stochastic setting...
The subject of this book is a hot topic with currently no monographic support. It is more advanced, ...
A retrieval algorithm using B-spline approximation for solving ill-posed inverse problems arising in...
In this paper we consider the iteratively regularized Gauss-Newton method for solving nonlinear ill-...
Inverse problems arise whenever one searches for unknown causes based on observation of their effect...
Nonlinear least-squares problems appear in many real-world applications. When a nonlinear model is u...
The paper presents a solution for efficiently and accurately solving separable least squares problem...
Abstract. The iteratively regularized Gauss-Newton method is applied to compute the stable solutions...
In this paper we present a retrieval algorithm for atmospheric remote sensing. The algorithm combine...
In this paper we present an inversion algorithm for nonlinear ill--posed problems arising in atmosph...
The iteratively regularized Gauss-Newton algorithm with simple bounds on the variables is extended t...
In this paper we present different inversion algorithms for nonlinear ill-posed problems arising in ...
In this chapter we present the basic concepts of numerical regularization theory. We analyze direct ...
In this paper we present a retrieval algorithm for atmospheric remote sensing. The algorithm combine...
In this paper we deal with regularization procedures for the nonlinear inverse problem of atmospheri...
In this study, we present an error analysis for Tikhonov regularization in a semi-stochastic setting...
The subject of this book is a hot topic with currently no monographic support. It is more advanced, ...
A retrieval algorithm using B-spline approximation for solving ill-posed inverse problems arising in...
In this paper we consider the iteratively regularized Gauss-Newton method for solving nonlinear ill-...
Inverse problems arise whenever one searches for unknown causes based on observation of their effect...
Nonlinear least-squares problems appear in many real-world applications. When a nonlinear model is u...
The paper presents a solution for efficiently and accurately solving separable least squares problem...
Abstract. The iteratively regularized Gauss-Newton method is applied to compute the stable solutions...