In this paper, we propose a multi-cycled sequential memetic computing structure for constrained optimisation. The structure is composed of multiple evolutionary cycles. At each cycle, an evolutionary algorithm is considered as an operator, and connects with a local optimiser. This structure enables the learning of useful knowledge from previous cycles and the transfer of the knowledge to facilitate search in latter cycles. Specifically, we propose to apply an estimation of distribution algorithm (EDA) to explore the search space until convergence at each cycle. A local optimiser, called DONLP2, is then applied to improve the best solution found by the EDA. New cycle starts after the local improvement if the computation budget has not been e...
AbstractEvolutionary algorithms (EAs) are population-based global search methods. They have been suc...
In this paper we propose a specially designed memetic algorithm for multimodal optimisation problems...
Nature-inspired algorithms are seen as potential tools to solve large-scale global optimization prob...
In this paper, we propose a multi-cycled sequential memetic computing structure for constrained opti...
In this paper, we propose a multi-restart memetic algorithm framework for box constrained global con...
Abstract—Inspired by biological evolution, a plethora of algo-rithms with evolutionary features have...
The performance of evolutionary algorithms can be heavily undermined when constraints limit the feas...
AbstractThis paper deals with a concept of memetic search in agent-based evolutionary computation. I...
Memetic algorithms integrate local search into an evolutionary algorithm to combine the advantages o...
PPSN 2014, LNCS 8672, pp. 322-331Multimemetic algorithms (MMAs) are memetic algorithms in which meme...
The combination of evolutionary algorithms with local search was named "memetic algorithms" (MAs) (M...
In solving practically significant problems of global optimization, the objective function is often ...
Memetic algorithms are a class of well-studied metaheuristics which combine evolutionary algorithms ...
This paper proposes a novel and unconventional Memetic Computing approach for solving continuous opt...
Abstract: Premature Convergence and genetic drift are the inherent characteristics of genetic algori...
AbstractEvolutionary algorithms (EAs) are population-based global search methods. They have been suc...
In this paper we propose a specially designed memetic algorithm for multimodal optimisation problems...
Nature-inspired algorithms are seen as potential tools to solve large-scale global optimization prob...
In this paper, we propose a multi-cycled sequential memetic computing structure for constrained opti...
In this paper, we propose a multi-restart memetic algorithm framework for box constrained global con...
Abstract—Inspired by biological evolution, a plethora of algo-rithms with evolutionary features have...
The performance of evolutionary algorithms can be heavily undermined when constraints limit the feas...
AbstractThis paper deals with a concept of memetic search in agent-based evolutionary computation. I...
Memetic algorithms integrate local search into an evolutionary algorithm to combine the advantages o...
PPSN 2014, LNCS 8672, pp. 322-331Multimemetic algorithms (MMAs) are memetic algorithms in which meme...
The combination of evolutionary algorithms with local search was named "memetic algorithms" (MAs) (M...
In solving practically significant problems of global optimization, the objective function is often ...
Memetic algorithms are a class of well-studied metaheuristics which combine evolutionary algorithms ...
This paper proposes a novel and unconventional Memetic Computing approach for solving continuous opt...
Abstract: Premature Convergence and genetic drift are the inherent characteristics of genetic algori...
AbstractEvolutionary algorithms (EAs) are population-based global search methods. They have been suc...
In this paper we propose a specially designed memetic algorithm for multimodal optimisation problems...
Nature-inspired algorithms are seen as potential tools to solve large-scale global optimization prob...