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A multi-population genetic algorithm to solve multi-objective scheduling problems for parallel machines

机译:解决并行机多目标调度问题的多种群遗传算法

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摘要

In this paper we propose a two-stage multi-population genetic algorithm (MPGA) to solve parallel machine scheduling problems with multiple objectives. In the first stage, multiple objectives are combined via the multiplication of the relative measure of each objective. Solutions of the first stage are arranged into several sub-populations, which become the initial populations of the second stage. Each sub-population then evolves separately while an elitist strategy preserves the best individuals of each objective and the best individual of the combined objective. This approach is applied in parallel machine scheduling problems with two objectives: makespan and total weighted tardiness (TWT). The MPGA is compared with a benchmark method, the multi-objective genetic algorithm (MOGA), and shows better results for all of the objectives over a wide range of problems. The MPGA is extended to scheduling problems with three objectives: makespan, TWT, and total weighted completion times (TWC), and also performs better than MOGA.
机译:在本文中,我们提出了一种两阶段的多种群遗传算法(MPGA)来解决具有多个目标的并行机器调度问题。在第一阶段,通过将每个目标的相对度量值相乘来组合多个目标。第一阶段的解决方案分为几个子种群,这些子种群成为第二阶段的初始种群。然后,每个子群体分别演化,而精英策略则保留每个目标的最佳个体和组合目标的最佳个体。该方法应用于具有两个目标的并行机器调度问题:制造期和总加权拖延时间(TWT)。 MPGA与基准方法(多目标遗传算法(MOGA))进行了比较,并针对各种问题显示了针对所有目标的更好结果。 MPGA扩展到具有三个目标的调度问题:制造时间,TWT和总加权完成时间(TWC),并且性能也比MOGA更好。

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