The experimental results reported in many papers suggest that making an appropriate a priori choice of an evolutionary method for a nonlinear parameter optimization problem remains an open question. It seems that the most promising approach at this stage of research is experimental, involving the design of a scalable test suite of constrained optimization problems, in which many features could be tuned easily. It would then be possible to evaluate the merits and drawbacks of the available methods, as well as to test new methods efficiently. In this paper, we propose such a test-case generator for constrained parameter optimization techniques. This generator is capable of creating various test problems with different characteristics includin...
This paper presents a population-based evolutionary computation model for solving continuous constra...
Many real-world scientific and engineering problems are constrained optimization problems (COPs). To...
In this paper we propose, analyze, and test algorithms for constrained optimization when no use of d...
The experimental results reported in many papers suggest that making an appropriate a priori choice ...
Despite the existence of a number of procedures for constrained real-parameter optimization using ev...
Over the past few years, researchers have developed a number of multi-objective evolutionary algorit...
Evolutionary algorithms (EAs) are being routinely applied for a variety of optimization tasks, and r...
International audienceEvolutionary computation techniques have received a lot of attention regarding...
This book makes available a self-contained collection of modern research addressing the general cons...
This paper proposes an alternative approach to efficient solving of nonlinear constrained optimizati...
In this paper we present an evolutionary algorithm for constrained optimization. The algorithm is ba...
Most real world optimization problems, and their corresponding models, are complex. This complexity ...
Evolutionary algorithms have been frequently applied to constrained continuous optimisation problems...
Abstract—Many modern automated test generators are based on either meta-heuristic search techniques ...
In this paper we propose, analyze, and test algorithms for constrained optimization when no use of d...
This paper presents a population-based evolutionary computation model for solving continuous constra...
Many real-world scientific and engineering problems are constrained optimization problems (COPs). To...
In this paper we propose, analyze, and test algorithms for constrained optimization when no use of d...
The experimental results reported in many papers suggest that making an appropriate a priori choice ...
Despite the existence of a number of procedures for constrained real-parameter optimization using ev...
Over the past few years, researchers have developed a number of multi-objective evolutionary algorit...
Evolutionary algorithms (EAs) are being routinely applied for a variety of optimization tasks, and r...
International audienceEvolutionary computation techniques have received a lot of attention regarding...
This book makes available a self-contained collection of modern research addressing the general cons...
This paper proposes an alternative approach to efficient solving of nonlinear constrained optimizati...
In this paper we present an evolutionary algorithm for constrained optimization. The algorithm is ba...
Most real world optimization problems, and their corresponding models, are complex. This complexity ...
Evolutionary algorithms have been frequently applied to constrained continuous optimisation problems...
Abstract—Many modern automated test generators are based on either meta-heuristic search techniques ...
In this paper we propose, analyze, and test algorithms for constrained optimization when no use of d...
This paper presents a population-based evolutionary computation model for solving continuous constra...
Many real-world scientific and engineering problems are constrained optimization problems (COPs). To...
In this paper we propose, analyze, and test algorithms for constrained optimization when no use of d...