A Comparison Between Memetic Algorithm And Seeded Genetic Algorithm For Multi-Objective Independent Task Scheduling On Heterogeneous Machines

DESIGN OF INTELLIGENT SYSTEMS BASED ON FUZZY LOGIC, NEURAL NETWORKS AND NATURE-INSPIRED OPTIMIZATION(2015)

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摘要
This chapter is focused on the problem of scheduling independent tasks on heterogeneous machines. The main contributions of our work are the following: a linear programming model to compute energy consumption for the execution of independent tasks on heterogeneous clusters, a constructive heuristic based on local search, and a new benchmark set. To assess our approach we compare the performance of two solution methods: a memetic algorithm, based on population search and local search, and a seeded genetic algorithm, based on NSGA-II. A Wilcoxon rank-sum test shows significant differences in the diversity of solutions found but not in hypervolume. The memetic algorithm gets the best diversity for a bigger instance set from the state of the art.
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关键词
task scheduling,heterogeneous machines,genetic algorithm,memetic algorithm,seeded genetic algorithm,multi-objective
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