The ability to track the optimum of dynamic environments is important in many practical applications. In this paper, the capability of a hybrid genetic algorithm (HGA) to track the optimum in some dynamic environments is investigated for different functional dimensions, update frequencies, and displacement strengths in different types of dynamic environments. Experimental results are reported by using the HGA and some other existing evolutionary algorithms in the literature. The results show that the HGA has better capability to track the dynamic optimum than some other existing algorithms
We review different techniques for improving GA performance. By analysing the fitness landscape, a c...
If the optimization problem is dynamic, the goal is no longer to find the extrema, but to track thei...
Many optimization functions have complex landscapes with multiple global or local optima. In order t...
Dynamic optimization problems are a kind of optimization problems that involve changes over time. Th...
In a stationary optimization problem, the fitness landscape does not change during the optimization ...
Dissertação de Mestrado em Engenharia Informática apresentada à Faculdade de Ciências e Tecnologia d...
Abstract: Dynamic optimization problems are a kind of optimization problems that involve changes ove...
Genetic Algorithms have widely been used for solving optimization problems in stationary environment...
This article is posted here with permission from IEEE - Copyright @ 2004 IEEEIn recent years the stu...
Non-stationary, or dynamic, problems change over time. There exist a variety of forms of dynamism. T...
Optimization in dynamic environments is a challenging but important task since many real-world optim...
Genetic algorithms perform an adaptive search by maintaining a population of candidate solutions tha...
Optimization in dynamic environments is a challenging but important task since many real-world optim...
Chen M, Guo Y, Jin Y, Yang S, Gong D, Yu Z. An environment-driven hybrid evolutionary algorithm for ...
Copyright @ 2005 ACMInvestigating and enhancing the performance of genetic algorithms in dynamic env...
We review different techniques for improving GA performance. By analysing the fitness landscape, a c...
If the optimization problem is dynamic, the goal is no longer to find the extrema, but to track thei...
Many optimization functions have complex landscapes with multiple global or local optima. In order t...
Dynamic optimization problems are a kind of optimization problems that involve changes over time. Th...
In a stationary optimization problem, the fitness landscape does not change during the optimization ...
Dissertação de Mestrado em Engenharia Informática apresentada à Faculdade de Ciências e Tecnologia d...
Abstract: Dynamic optimization problems are a kind of optimization problems that involve changes ove...
Genetic Algorithms have widely been used for solving optimization problems in stationary environment...
This article is posted here with permission from IEEE - Copyright @ 2004 IEEEIn recent years the stu...
Non-stationary, or dynamic, problems change over time. There exist a variety of forms of dynamism. T...
Optimization in dynamic environments is a challenging but important task since many real-world optim...
Genetic algorithms perform an adaptive search by maintaining a population of candidate solutions tha...
Optimization in dynamic environments is a challenging but important task since many real-world optim...
Chen M, Guo Y, Jin Y, Yang S, Gong D, Yu Z. An environment-driven hybrid evolutionary algorithm for ...
Copyright @ 2005 ACMInvestigating and enhancing the performance of genetic algorithms in dynamic env...
We review different techniques for improving GA performance. By analysing the fitness landscape, a c...
If the optimization problem is dynamic, the goal is no longer to find the extrema, but to track thei...
Many optimization functions have complex landscapes with multiple global or local optima. In order t...