Abstract—Dual Population Genetic Algorithm is an effective optimization algorithm that provides additional diversity to the main population. It addresses the premature convergence problem as well as the diversity problem associated with Genetic Algorithm. Thus it restricts their individuals to be trapped in the local optima. This paper proposes Dual Population Genetic Algorithm for solving Constrained Optimization Problems. A novel method based on maximum constrains satisfaction is applied as constrains handling technique and Dual Population Genetic Algorithm is used as meta-heuristic. This method is verified against 9 problems from Problem Definitions and Evaluation Criteria for the Congress on Evolutionary Computation 2006 Special Session...
This book makes available a self-contained collection of modern research addressing the general cons...
This paper describes a two-space genetic algorithm that finds solutions to minimax optimization prob...
A new constraint handling technique for multi-objective genetic algorithm is proposed in this paper....
Abstract—This paper presents a novel evolutionary algorithm for constrained optimization. During the...
The behavior of the two-point crossover operator, on candidate solutions to an optimization problem ...
Many real-world search and optimization problems involve inequality and/or equality constraints and ...
This paper introduces a method for constrained optimization using a modified multi-objective algorit...
This paper introduces a method for constrained optimization using a modified multi-objective algorit...
In this paper we present an evolutionary algorithm for constrained optimization. The algorithm is ba...
The paper provides an improved evolutionary strategy (ES) of genetic algorithm (GA) on the basis of ...
Most real world optimization problems, and their corresponding models, are complex. This complexity ...
Abstract:In order to overcome the limitation when using traditional genetic algorithm in solving con...
Solving Constrained Optimization Problems (COPs) has been an important research topic in the optimiz...
We explore data-driven methods for gaining insight into the dynamics of a two population genetic alg...
Many real-world scientific and engineering problems are constrained optimization problems (COPs). To...
This book makes available a self-contained collection of modern research addressing the general cons...
This paper describes a two-space genetic algorithm that finds solutions to minimax optimization prob...
A new constraint handling technique for multi-objective genetic algorithm is proposed in this paper....
Abstract—This paper presents a novel evolutionary algorithm for constrained optimization. During the...
The behavior of the two-point crossover operator, on candidate solutions to an optimization problem ...
Many real-world search and optimization problems involve inequality and/or equality constraints and ...
This paper introduces a method for constrained optimization using a modified multi-objective algorit...
This paper introduces a method for constrained optimization using a modified multi-objective algorit...
In this paper we present an evolutionary algorithm for constrained optimization. The algorithm is ba...
The paper provides an improved evolutionary strategy (ES) of genetic algorithm (GA) on the basis of ...
Most real world optimization problems, and their corresponding models, are complex. This complexity ...
Abstract:In order to overcome the limitation when using traditional genetic algorithm in solving con...
Solving Constrained Optimization Problems (COPs) has been an important research topic in the optimiz...
We explore data-driven methods for gaining insight into the dynamics of a two population genetic alg...
Many real-world scientific and engineering problems are constrained optimization problems (COPs). To...
This book makes available a self-contained collection of modern research addressing the general cons...
This paper describes a two-space genetic algorithm that finds solutions to minimax optimization prob...
A new constraint handling technique for multi-objective genetic algorithm is proposed in this paper....