AbstractThis paper considers the nonlinearly constrained continuous global minimization problem. Based on the idea of the penalty function method, an auxiliary function, which has approximately the same global minimizers as the original problem, is constructed. An algorithm is developed to minimize the auxiliary function to find an approximate constrained global minimizer of the constrained global minimization problem. The algorithm can escape from the previously converged local minimizers, and can converge to an approximate global minimizer of the problem asymptotically with probability one. Numerical experiments show that it is better than some other well known recent methods for constrained global minimization problems
AbstractIn this paper, a new filled function which has better properties is proposed for identifying...
The aim of this paper is to show that the new continuously differentiable exact penalty functions re...
Nonlinear optimization problems introduce the possibility of multiple local optima. The task of glo...
AbstractThis paper considers the nonlinearly constrained continuous global minimization problem. Bas...
In this article, we first propose a method to obtain an approximate feasible point for general const...
In this paper, a filled function method for solving constrained global optimization problems is prop...
In this paper, we present a new global optimization method to solve nonlinear systems of equations. ...
AbstractA new method is proposed for solving box constrained global optimization problems. The basic...
A novel global optimization method based on an Augmented Lagrangian framework is introduced for cont...
A novel global optimization method based on an Augmented Lagrangian framework is introduced for cont...
This paper is concerned with an extension of the heuristic DIRECT method, presented in[8], to solve ...
A novel global optimization method based on an Augmented Lagrangian framework is introduced for cont...
A novel global optimization method based on an Augmented Lagrangian framework is introduced for cont...
A novel global optimization method based on an Augmented Lagrangian framework is introduced for cont...
AbstractA novel filled function with one parameter is suggested in this paper for finding a global m...
AbstractIn this paper, a new filled function which has better properties is proposed for identifying...
The aim of this paper is to show that the new continuously differentiable exact penalty functions re...
Nonlinear optimization problems introduce the possibility of multiple local optima. The task of glo...
AbstractThis paper considers the nonlinearly constrained continuous global minimization problem. Bas...
In this article, we first propose a method to obtain an approximate feasible point for general const...
In this paper, a filled function method for solving constrained global optimization problems is prop...
In this paper, we present a new global optimization method to solve nonlinear systems of equations. ...
AbstractA new method is proposed for solving box constrained global optimization problems. The basic...
A novel global optimization method based on an Augmented Lagrangian framework is introduced for cont...
A novel global optimization method based on an Augmented Lagrangian framework is introduced for cont...
This paper is concerned with an extension of the heuristic DIRECT method, presented in[8], to solve ...
A novel global optimization method based on an Augmented Lagrangian framework is introduced for cont...
A novel global optimization method based on an Augmented Lagrangian framework is introduced for cont...
A novel global optimization method based on an Augmented Lagrangian framework is introduced for cont...
AbstractA novel filled function with one parameter is suggested in this paper for finding a global m...
AbstractIn this paper, a new filled function which has better properties is proposed for identifying...
The aim of this paper is to show that the new continuously differentiable exact penalty functions re...
Nonlinear optimization problems introduce the possibility of multiple local optima. The task of glo...