A Multiobjective Optimization Approach to Solve a Parallel Machines Scheduling Problem

Xiaohui Li, L. Amodeo, F. Yalaoui, H. Chehade
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引用次数: 16

Abstract

A multiobjective optimization problem which focuses on parallel machines scheduling is considered. This problem consists of scheduling n independent jobs on m identical parallelmachines with release dates, due dates, and sequence-dependent setup times. The preemption of jobs is forbidden. The aim is to minimize two different objectives: makespan and total tardiness. The contribution of this paper is to propose first a new mathematical model for this specific problem. Then, since this problem is NP hard in the strong sense, two well-known approximated methods, NSGA-II and SPEA-II, are adopted to solve it. Experimental results show the advantages of NSGA-II for the studied problem. An exact method is then applied to be compared with NSGA-II algorithm in order to prove the efficiency of the former. Experimental results show the advantages of NSGA-II for the studied problem. Computational experiments show that on all the tested instances, our NSGA-II algorithm was able to get the optimal solutions.
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求解并行机器调度问题的多目标优化方法
研究了一个以并行机器调度为重点的多目标优化问题。这个问题包括在m个相同的并行机器上调度n个独立的作业,这些并行机器具有发布日期、到期日期和与序列相关的设置时间。禁止抢占工作。其目的是最小化两个不同的目标:完工时间和总延误时间。本文的贡献在于首先为这一具体问题提出了一个新的数学模型。然后,由于该问题在强意义上属于NP困难,我们采用了两种众所周知的近似方法NSGA-II和SPEA-II来求解。实验结果表明,NSGA-II对所研究的问题具有优势。然后用一种精确的方法与NSGA-II算法进行了比较,以证明前者的有效性。实验结果表明,NSGA-II对所研究的问题具有优势。计算实验表明,在所有测试实例上,我们的NSGA-II算法都能得到最优解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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