Linear least squares problems with box constraints are commonly solved to find model parameters within bounds based on physical considerations. Common algorithms include Bounded Variable Least Squares (BVLS) and the Matlab function lsqlin. Here, the goal is to find solutions to ill-posed inverse problems that lie within box constraints. To do this, we formulate the box constraints as quadratic constraints, and solve the corresponding unconstrained regularized least squares problem. Using box constraints as quadratic constraints is an efficient approach because the optimization problem has a closed form solution. The effectiveness of the proposed algorithm is investigated through solving three benchmark problems and one from a hydrological a...
The aim of this paper is to extend the applicability of the incomplete oblique projections method (I...
This paper addresses the problem of selecting the regularization parameter for linear least-squares ...
In this thesis a method for the partially norm constrained least squares problem is presented. The m...
AbstractLinear least squares problems with box constraints are commonly solved to find model paramet...
In [2] S.P. Han proposed a method for finding a least-squares solution for systems of linear inequal...
The main contribution of this paper is presenting a flexible solution to the box-constrained least s...
This paper analyzes linear least squares problems with absolute quadratic constraints. We develop a ...
This report describes the implementation of an algorithm of Stoer and Schittkowski for solving linea...
Many least-square problems involve affine equality and inequality constraints. Although there are a ...
This paper is concerned with the implementation and testing of an algorithm for solving constrained ...
This paper has two main purposes: To discuss general principles for a reliable and efficient numeric...
In this paper we propose an iterative algorithm to solve large size linear inverse ill posed problem...
Abstract In this article, we present a QR updating procedure as a solution approach for linear least...
AbstractIt is shown how a least squares problem subject to equality constraints can be replaced by a...
Abstract. We propose an iterative method that solves constrained linear least-squares problems by fo...
The aim of this paper is to extend the applicability of the incomplete oblique projections method (I...
This paper addresses the problem of selecting the regularization parameter for linear least-squares ...
In this thesis a method for the partially norm constrained least squares problem is presented. The m...
AbstractLinear least squares problems with box constraints are commonly solved to find model paramet...
In [2] S.P. Han proposed a method for finding a least-squares solution for systems of linear inequal...
The main contribution of this paper is presenting a flexible solution to the box-constrained least s...
This paper analyzes linear least squares problems with absolute quadratic constraints. We develop a ...
This report describes the implementation of an algorithm of Stoer and Schittkowski for solving linea...
Many least-square problems involve affine equality and inequality constraints. Although there are a ...
This paper is concerned with the implementation and testing of an algorithm for solving constrained ...
This paper has two main purposes: To discuss general principles for a reliable and efficient numeric...
In this paper we propose an iterative algorithm to solve large size linear inverse ill posed problem...
Abstract In this article, we present a QR updating procedure as a solution approach for linear least...
AbstractIt is shown how a least squares problem subject to equality constraints can be replaced by a...
Abstract. We propose an iterative method that solves constrained linear least-squares problems by fo...
The aim of this paper is to extend the applicability of the incomplete oblique projections method (I...
This paper addresses the problem of selecting the regularization parameter for linear least-squares ...
In this thesis a method for the partially norm constrained least squares problem is presented. The m...