Hybridization of genetic algorithms with local search approaches can enhance their performance in global optimization. Genetic algorithms, as most population based algorithms, require a considerable number of function evaluations. This may be an important drawback when the functions involved in the problem are computationally expensive as it occurs in most real world problems. Thus, in order to reduce the total number of function evaluations, local and global techniques may be combined. Moreover, the hybridization may provide a more effective trade-off between exploitation and exploration of the search space. In this study, we propose a new hybrid genetic algorithm based on a local pattern search that relies on an augmented Lagrangian funct...
This paper develops a framework for optimizing global-local hybrids of search or optimization proc...
Constrained optimization is one of the popular research areas since constraints are usually present...
Global optimization problems continue to be a challenge in computational mathematics. The field is p...
Hybridization of genetic algorithms with local search approaches can en-hance their performance in g...
An augmented Lagrangian algorithm is presented to solve a global optimization problem that arises w...
In the last few decades, genetic algorithms (GAs) demonstrated to be an effective approach for solvi...
One of the challenges in global optimization is to use heuristic techniques to improve the behaviour...
. Global Optimization has become an important branch of mathematical analysis and numerical analysis...
One important challenge of a hybrid genetic algorithm (HGA) (also called memetic algorithm) is the t...
Evolutionary Algorithms are robust and powerful global optimization techniques for solving large sc...
In this paper, we propose a novel hybrid global optimization method to solve constrained optimizatio...
This chapter aims to address the challenging and demanding issue of solving a continuous nonlinear c...
Genetic algorithms (GAs), a class of evolutionary algorithms, emerging to be a promising procedure f...
Evolutionary algorithms are robust and powerful global optimization techniques for solving large-sca...
AbstractThis paper presents an augmented Lagrangian methodology with a stochastic population based a...
This paper develops a framework for optimizing global-local hybrids of search or optimization proc...
Constrained optimization is one of the popular research areas since constraints are usually present...
Global optimization problems continue to be a challenge in computational mathematics. The field is p...
Hybridization of genetic algorithms with local search approaches can en-hance their performance in g...
An augmented Lagrangian algorithm is presented to solve a global optimization problem that arises w...
In the last few decades, genetic algorithms (GAs) demonstrated to be an effective approach for solvi...
One of the challenges in global optimization is to use heuristic techniques to improve the behaviour...
. Global Optimization has become an important branch of mathematical analysis and numerical analysis...
One important challenge of a hybrid genetic algorithm (HGA) (also called memetic algorithm) is the t...
Evolutionary Algorithms are robust and powerful global optimization techniques for solving large sc...
In this paper, we propose a novel hybrid global optimization method to solve constrained optimizatio...
This chapter aims to address the challenging and demanding issue of solving a continuous nonlinear c...
Genetic algorithms (GAs), a class of evolutionary algorithms, emerging to be a promising procedure f...
Evolutionary algorithms are robust and powerful global optimization techniques for solving large-sca...
AbstractThis paper presents an augmented Lagrangian methodology with a stochastic population based a...
This paper develops a framework for optimizing global-local hybrids of search or optimization proc...
Constrained optimization is one of the popular research areas since constraints are usually present...
Global optimization problems continue to be a challenge in computational mathematics. The field is p...