This research extends the sub-population genetic algorithm and combines it with a global archive and an adaptive strategy to solve the multi-objective parallel scheduling problems. In this approach, the global archive is applied within each subpopulation and once a better Pareto solution is identified, other subpopulations are able to employ this Pareto solution to further guide the searching direction. In addition, the crossover and mutation rates are continuously adapted according to the performance of the current generation. As a result, the convergence and diversity of the evolutionary processes can be maintained in a very efficient manner. Intensive experimental results indicate that the sub-population genetic algorithm combing the glo...
International audienceObjective:The objective is to propose a resolution method to solve the identic...
The common problem of multiprocessor scheduling can be defined as allocating a task graph in a multi...
This paper deals with an unrelated parallel machine scheduling problem with the objective of minimiz...
This paper introduces a two‐phase sub population genetic algorithm to solve the parallel machine-sch...
Previous research has shown that sub-population genetic algorithm is effective in solving the multi-...
According to previous research of Chang et al. [Chang, P. C., Chen, S. H., & Lin, K. L. (2005b). Two...
Abstract—In this paper an improved adaptive parallel genetic algorithm is proposed to solve problems...
Evolutionary computation (EC) has been recently recognized as a research field, which studies a new ...
This paper proposes an adaptive genetic algorithm for distributed scheduling problems in multi-facto...
Evolutionary computation (EC) has been recently recognized as a research field, which studies a new ...
This paper investigates parallel machine scheduling problems where the objectives are to minimize to...
This paper presents a genetic algorithm solution for the parallel machine scheduling problems with a...
To exploit a heterogeneous computing (HC) environment (e.g., a suite of interconnected different hig...
The Grouping Genetic Algorithm (GGA) is an extension to the standard Genetic Algorithm that uses a g...
International audienceObjective:The objective is to propose a resolution method to solve the identic...
International audienceObjective:The objective is to propose a resolution method to solve the identic...
The common problem of multiprocessor scheduling can be defined as allocating a task graph in a multi...
This paper deals with an unrelated parallel machine scheduling problem with the objective of minimiz...
This paper introduces a two‐phase sub population genetic algorithm to solve the parallel machine-sch...
Previous research has shown that sub-population genetic algorithm is effective in solving the multi-...
According to previous research of Chang et al. [Chang, P. C., Chen, S. H., & Lin, K. L. (2005b). Two...
Abstract—In this paper an improved adaptive parallel genetic algorithm is proposed to solve problems...
Evolutionary computation (EC) has been recently recognized as a research field, which studies a new ...
This paper proposes an adaptive genetic algorithm for distributed scheduling problems in multi-facto...
Evolutionary computation (EC) has been recently recognized as a research field, which studies a new ...
This paper investigates parallel machine scheduling problems where the objectives are to minimize to...
This paper presents a genetic algorithm solution for the parallel machine scheduling problems with a...
To exploit a heterogeneous computing (HC) environment (e.g., a suite of interconnected different hig...
The Grouping Genetic Algorithm (GGA) is an extension to the standard Genetic Algorithm that uses a g...
International audienceObjective:The objective is to propose a resolution method to solve the identic...
International audienceObjective:The objective is to propose a resolution method to solve the identic...
The common problem of multiprocessor scheduling can be defined as allocating a task graph in a multi...
This paper deals with an unrelated parallel machine scheduling problem with the objective of minimiz...