Importance of multi-objective optimization problems has been rapidly increasing in the artificial intelligence community. This significant is due to the fact that there is high number of real-world applications having optimization problems that include more than one objective function. As has been evident in the last ten years, the evolutionary algorithms are one of the best choices to solve multi-objective optimization problems. In this paper a set of improved hybrid Memetic evolutionary algorithms are proposed to solve multi-objective optimization problems. The proposed algorithms enhance the performance of NSGA-II algorithm by using different search schemes. Merging a simple and efficient search technique to NSGA-II significantly enhance...
In this thesis, the basic principles and concepts of single and multi-objective Genetic Algorithms (...
Abstract: Premature Convergence and genetic drift are the inherent characteristics of genetic algori...
Although significant development of heuristics for various combinatorial optimization problems has b...
In this work, two methodologies to reduce the computation time of expensive multi-objective optimiza...
Handling multi-objective optimization problems using evolutionary computations represents a promisin...
Abstract—Inspired by biological evolution, a plethora of algo-rithms with evolutionary features have...
AbstractEvolutionary algorithms (EAs) are population-based global search methods. They have been suc...
In this work, a multi-objective hybrid optimizer is presented. The optimizer uses several multi-obje...
The term memetic algorithms (MAs) was introduced in the late 1980s to denote a family of metaheurist...
International audienceOver the last two decades, interest on hybrid metaheuristics has risen conside...
In recent years, hybridization of multi-objective evolutionary algorithms (MOEAs) with traditional m...
In solving practically significant problems of global optimization, the objective function is often ...
In this paper we propose a novel iterative search procedure for multi-objective optimization problem...
Abstract: Multi-objective optimization (MO) has been an active area of research in the last two deca...
© 2020, The Author(s). Optimization problems can be found in many aspects of our lives. An optimizat...
In this thesis, the basic principles and concepts of single and multi-objective Genetic Algorithms (...
Abstract: Premature Convergence and genetic drift are the inherent characteristics of genetic algori...
Although significant development of heuristics for various combinatorial optimization problems has b...
In this work, two methodologies to reduce the computation time of expensive multi-objective optimiza...
Handling multi-objective optimization problems using evolutionary computations represents a promisin...
Abstract—Inspired by biological evolution, a plethora of algo-rithms with evolutionary features have...
AbstractEvolutionary algorithms (EAs) are population-based global search methods. They have been suc...
In this work, a multi-objective hybrid optimizer is presented. The optimizer uses several multi-obje...
The term memetic algorithms (MAs) was introduced in the late 1980s to denote a family of metaheurist...
International audienceOver the last two decades, interest on hybrid metaheuristics has risen conside...
In recent years, hybridization of multi-objective evolutionary algorithms (MOEAs) with traditional m...
In solving practically significant problems of global optimization, the objective function is often ...
In this paper we propose a novel iterative search procedure for multi-objective optimization problem...
Abstract: Multi-objective optimization (MO) has been an active area of research in the last two deca...
© 2020, The Author(s). Optimization problems can be found in many aspects of our lives. An optimizat...
In this thesis, the basic principles and concepts of single and multi-objective Genetic Algorithms (...
Abstract: Premature Convergence and genetic drift are the inherent characteristics of genetic algori...
Although significant development of heuristics for various combinatorial optimization problems has b...