To cite this article: Ana Maria A.C. Rocha & Edite M.G.P. Fernandes (2011): Numerical study of augmented Lagrangian algorithms for constrained global optimization, Optimization, 60:10-11, 1359-1378This article presents a numerical study of two augmented Lagrangian algorithms to solve continuous constrained global optimization problems. The algorithms approximately solve a sequence of bound constrained subproblems whose objective function penalizes equality and inequality constraints violation and depends on the Lagrange multiplier vectors and a penalty parameter. Each subproblem is solved by a population-based method that uses an electromagnetism-like (EM) mechanism to move points towards optimality. Three local search procedures are tested...
Hybridization of genetic algorithms with local search approaches can enhance their performance in gl...
A well-known approach for solving constrained optimization problems is based on penalty functions. A...
This chapter aims to address the challenging and demanding issue of solving a continuous nonlinear c...
This paper presents a numerical study of two augmented Lagrangian algorithms to solve continuous con...
This paper presents an augmented Lagrangian algorithm to solve continuous constrained global optimi...
This paper presents a numerical study of a stochastic augmented Lagrangian algorithm to solve contin...
Abstract. The global and local convergence properties of a class of augmented Lagrangian methods for...
This paper presents the use of a constraint-handling technique, known as feasibility and dominance r...
AbstractThis paper presents an augmented Lagrangian methodology with a stochastic population based a...
The augmented Lagrangian (ALAG) Penalty Function Algorithm for optimizing nonlinear mathematical mod...
This paper presents an algorithm for solving global optimization problems with bounded variables. Th...
Augmented Lagrangian methods are effective tools for solving large-scale nonlinear programming probl...
Abstract: Electromagnetism-like Mechanism (EM) heuristic is a population-based stochastic global op-...
A novel global optimization method based on an Augmented Lagrangian framework is introduced for cont...
This paper aims to present a hyperbolic augmented Lagrangian (HAL) framework with guaranteed converg...
Hybridization of genetic algorithms with local search approaches can enhance their performance in gl...
A well-known approach for solving constrained optimization problems is based on penalty functions. A...
This chapter aims to address the challenging and demanding issue of solving a continuous nonlinear c...
This paper presents a numerical study of two augmented Lagrangian algorithms to solve continuous con...
This paper presents an augmented Lagrangian algorithm to solve continuous constrained global optimi...
This paper presents a numerical study of a stochastic augmented Lagrangian algorithm to solve contin...
Abstract. The global and local convergence properties of a class of augmented Lagrangian methods for...
This paper presents the use of a constraint-handling technique, known as feasibility and dominance r...
AbstractThis paper presents an augmented Lagrangian methodology with a stochastic population based a...
The augmented Lagrangian (ALAG) Penalty Function Algorithm for optimizing nonlinear mathematical mod...
This paper presents an algorithm for solving global optimization problems with bounded variables. Th...
Augmented Lagrangian methods are effective tools for solving large-scale nonlinear programming probl...
Abstract: Electromagnetism-like Mechanism (EM) heuristic is a population-based stochastic global op-...
A novel global optimization method based on an Augmented Lagrangian framework is introduced for cont...
This paper aims to present a hyperbolic augmented Lagrangian (HAL) framework with guaranteed converg...
Hybridization of genetic algorithms with local search approaches can enhance their performance in gl...
A well-known approach for solving constrained optimization problems is based on penalty functions. A...
This chapter aims to address the challenging and demanding issue of solving a continuous nonlinear c...