Dynamic optimization problems challenge traditional evolutionary algorithms seriously since they, once converged, cannot adapt quickly to environmental changes. This paper investigates the application of memetic algorithms, a class of hybrid evolutionary algorithms, for dynamic optimization problems. An adaptive hill climbing method is proposed as the local search technique in the framework of memetic algorithms, which combines the features of greedy crossover-based hill climbing and steepest mutation-based hill climbing. In order to address the convergence problem, two diversity maintaining methods, called adaptive dual mapping and triggered random immigrants, respectively, are also introduced into the proposed memetic algorithm for dynami...
Okabe T, Jin Y, Sendhoff B. Combination of Genetic Algorithms and Evolution Strategies with Self-ada...
Dynamic optimisation problems are difficult to solve because they involve variables that change over...
Abstract. Memetic algorithms are population-based metaheuristics aimed to solve hard optimization pr...
Dynamic optimization problems challenge traditional evolutionary algorithms seriously since they, on...
Copyright @ Springer-Verlag 2008Dynamic optimization problems challenge traditional evolutionary alg...
Recently, there has been an increasing concern from the evolutionary computation community on dynami...
Abstract: Premature Convergence and genetic drift are the inherent characteristics of genetic algori...
Abstract — In this paper, we propose and investigate a new local search strategy for multiobjective ...
Abstract—Adaptation of parameters and operators represents one of the recent most important and prom...
Abstract—Adaptation of parameters and operators represents one of the recent most important and prom...
Adaptation of parameters and operators represents one of the recent most important and promising are...
Copyright @ Springer Science + Business Media B.V. 2010.Recently, there has been an increasing conce...
AbstractMemetic (evolutionary) algorithms integrate local search into the search process of evolutio...
The constrained optimization problem (COP) is converted into a biobjective optimization problem firs...
In a stationary optimization problem, the fitness landscape does not change during the optimization ...
Okabe T, Jin Y, Sendhoff B. Combination of Genetic Algorithms and Evolution Strategies with Self-ada...
Dynamic optimisation problems are difficult to solve because they involve variables that change over...
Abstract. Memetic algorithms are population-based metaheuristics aimed to solve hard optimization pr...
Dynamic optimization problems challenge traditional evolutionary algorithms seriously since they, on...
Copyright @ Springer-Verlag 2008Dynamic optimization problems challenge traditional evolutionary alg...
Recently, there has been an increasing concern from the evolutionary computation community on dynami...
Abstract: Premature Convergence and genetic drift are the inherent characteristics of genetic algori...
Abstract — In this paper, we propose and investigate a new local search strategy for multiobjective ...
Abstract—Adaptation of parameters and operators represents one of the recent most important and prom...
Abstract—Adaptation of parameters and operators represents one of the recent most important and prom...
Adaptation of parameters and operators represents one of the recent most important and promising are...
Copyright @ Springer Science + Business Media B.V. 2010.Recently, there has been an increasing conce...
AbstractMemetic (evolutionary) algorithms integrate local search into the search process of evolutio...
The constrained optimization problem (COP) is converted into a biobjective optimization problem firs...
In a stationary optimization problem, the fitness landscape does not change during the optimization ...
Okabe T, Jin Y, Sendhoff B. Combination of Genetic Algorithms and Evolution Strategies with Self-ada...
Dynamic optimisation problems are difficult to solve because they involve variables that change over...
Abstract. Memetic algorithms are population-based metaheuristics aimed to solve hard optimization pr...