In this paper we propose a specially designed memetic algorithm for multimodal optimisation problems. The proposal uses a niching strategy, called region-based niching strategy, that divides the search space in predefined and indexable hypercubes with decreasing size, called regions. This niching technique allows our proposal to keep high diversity in the population, and to keep the most promising regions in an external archive. The most promising solutions are improved with a local search method and also stored in the archive. The archive is used as an index to effiently prevent further exploration of these areas with the evolutionary algorithm. The resulting algorithm, called Region-based Memetic Algorithm with Archive, is tested on the b...
The combination of evolutionary algorithms with local search was named "memetic algorithms" (MAs) (M...
In this paper, we propose a multi-restart memetic algorithm framework for box constrained global con...
Abstract. We propose a new niching method for Evolutionary Algo-rithms which is able to identify and...
Multimodal optimization, which aims at locating multiple optimal solutions within the search space, ...
Memetic algorithms integrate local search into an evolutionary algorithm to combine the advantages o...
Heuristic methodologies appears for solving optimisation problems. Hyper-heuristics focus on search ...
In solving practically significant problems of global optimization, the objective function is often ...
Although significant development of heuristics for various combinatorial optimization problems has b...
Local search techniques have been applied in optimization methods. The effect of local search to the...
In this paper, we propose a multi-cycled sequential memetic computing structure for constrained opti...
AbstractThis paper deals with a concept of memetic search in agent-based evolutionary computation. I...
Highly multimodal landscapes with multiple local/global optima represent common characteristics in r...
Practical optimization problems are often too complex to be formulated exactly. Knowing multiple goo...
Prototype selection problem consists of reducing the size of databases by removing samples that are ...
Copyright © 2003 IEEE. Personal use of this material is permitted. Permission from IEEE must be obta...
The combination of evolutionary algorithms with local search was named "memetic algorithms" (MAs) (M...
In this paper, we propose a multi-restart memetic algorithm framework for box constrained global con...
Abstract. We propose a new niching method for Evolutionary Algo-rithms which is able to identify and...
Multimodal optimization, which aims at locating multiple optimal solutions within the search space, ...
Memetic algorithms integrate local search into an evolutionary algorithm to combine the advantages o...
Heuristic methodologies appears for solving optimisation problems. Hyper-heuristics focus on search ...
In solving practically significant problems of global optimization, the objective function is often ...
Although significant development of heuristics for various combinatorial optimization problems has b...
Local search techniques have been applied in optimization methods. The effect of local search to the...
In this paper, we propose a multi-cycled sequential memetic computing structure for constrained opti...
AbstractThis paper deals with a concept of memetic search in agent-based evolutionary computation. I...
Highly multimodal landscapes with multiple local/global optima represent common characteristics in r...
Practical optimization problems are often too complex to be formulated exactly. Knowing multiple goo...
Prototype selection problem consists of reducing the size of databases by removing samples that are ...
Copyright © 2003 IEEE. Personal use of this material is permitted. Permission from IEEE must be obta...
The combination of evolutionary algorithms with local search was named "memetic algorithms" (MAs) (M...
In this paper, we propose a multi-restart memetic algorithm framework for box constrained global con...
Abstract. We propose a new niching method for Evolutionary Algo-rithms which is able to identify and...